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  <front>
    <journal-meta>
      <journal-id journal-id-type="publisher-id">JMIR</journal-id>
      <journal-id journal-id-type="nlm-ta">J Med Internet Res</journal-id>
      <journal-title>Journal of Medical Internet Research</journal-title>
      <issn pub-type="epub">1438-8871</issn>
      <publisher>
        <publisher-name>JMIR Publications</publisher-name>
        <publisher-loc>Toronto, Canada</publisher-loc>
      </publisher>
    </journal-meta>
    <article-meta>
      <article-id pub-id-type="publisher-id">v27i1e68720</article-id>
      <article-id pub-id-type="pmid">40053738</article-id>
      <article-id pub-id-type="doi">10.2196/68720</article-id>
      <article-categories>
        <subj-group subj-group-type="heading">
          <subject>Review</subject>
        </subj-group>
        <subj-group subj-group-type="article-type">
          <subject>Review</subject>
        </subj-group>
      </article-categories>
      <title-group>
        <article-title>Natural Language Processing Technologies for Public Health in Africa: Scoping Review</article-title>
      </title-group>
      <contrib-group>
        <contrib contrib-type="editor">
          <name>
            <surname>Mavragani</surname>
            <given-names>Amaryllis</given-names>
          </name>
        </contrib>
      </contrib-group>
      <contrib-group>
        <contrib contrib-type="reviewer">
          <name>
            <surname>Hidki</surname>
            <given-names>Asmaa</given-names>
          </name>
        </contrib>
        <contrib contrib-type="reviewer">
          <name>
            <surname>Xiao</surname>
            <given-names>Grace</given-names>
          </name>
        </contrib>
      </contrib-group>
      <contrib-group>
        <contrib id="contrib1" contrib-type="author" corresp="yes" equal-contrib="yes">
          <name name-style="western">
            <surname>Hu</surname>
            <given-names>Songbo</given-names>
          </name>
          <degrees>MPhil</degrees>
          <xref rid="aff1" ref-type="aff">1</xref>
          <address>
            <institution/>
            <institution>Language Technology Lab</institution>
            <institution>University of Cambridge</institution>
            <addr-line>English Faculty Building</addr-line>
            <addr-line>9 West Road</addr-line>
            <addr-line>Cambridge, CB3 9DA</addr-line>
            <country>United Kingdom</country>
            <phone>44 1223 335010</phone>
            <email>sh2091@cam.ac.uk</email>
          </address>
          <ext-link ext-link-type="orcid">https://orcid.org/0000-0003-1695-459X</ext-link>
        </contrib>
        <contrib id="contrib2" contrib-type="author" equal-contrib="yes">
          <name name-style="western">
            <surname>Oppong</surname>
            <given-names>Abigail</given-names>
          </name>
          <degrees>BSc</degrees>
          <xref rid="aff1" ref-type="aff">1</xref>
          <ext-link ext-link-type="orcid">https://orcid.org/0000-0002-6468-1787</ext-link>
        </contrib>
        <contrib id="contrib3" contrib-type="author">
          <name name-style="western">
            <surname>Mogo</surname>
            <given-names>Ebele</given-names>
          </name>
          <degrees>DrPH</degrees>
          <xref rid="aff2" ref-type="aff">2</xref>
          <ext-link ext-link-type="orcid">https://orcid.org/0000-0003-0880-0750</ext-link>
        </contrib>
        <contrib id="contrib4" contrib-type="author">
          <name name-style="western">
            <surname>Collins</surname>
            <given-names>Charlotte</given-names>
          </name>
          <degrees>PhD</degrees>
          <xref rid="aff1" ref-type="aff">1</xref>
          <ext-link ext-link-type="orcid">https://orcid.org/0000-0002-8715-9035</ext-link>
        </contrib>
        <contrib id="contrib5" contrib-type="author">
          <name name-style="western">
            <surname>Occhini</surname>
            <given-names>Giulia</given-names>
          </name>
          <degrees>PhD</degrees>
          <xref rid="aff1" ref-type="aff">1</xref>
          <ext-link ext-link-type="orcid">https://orcid.org/0009-0006-9885-6414</ext-link>
        </contrib>
        <contrib id="contrib6" contrib-type="author">
          <name name-style="western">
            <surname>Barford</surname>
            <given-names>Anna</given-names>
          </name>
          <degrees>PhD</degrees>
          <xref rid="aff1" ref-type="aff">1</xref>
          <ext-link ext-link-type="orcid">https://orcid.org/0000-0002-4250-7171</ext-link>
        </contrib>
        <contrib id="contrib7" contrib-type="author">
          <name name-style="western">
            <surname>Korhonen</surname>
            <given-names>Anna</given-names>
          </name>
          <degrees>PhD</degrees>
          <xref rid="aff1" ref-type="aff">1</xref>
          <ext-link ext-link-type="orcid">https://orcid.org/0000-0002-3692-3144</ext-link>
        </contrib>
      </contrib-group>
      <aff id="aff1">
        <label>1</label>
        <institution>Language Technology Lab</institution>
        <institution>University of Cambridge</institution>
        <addr-line>Cambridge</addr-line>
        <country>United Kingdom</country>
      </aff>
      <aff id="aff2">
        <label>2</label>
        <institution>Cambridge Centre for Human Inspired Artificial Intelligence</institution>
        <institution>University of Cambridge</institution>
        <addr-line>Cambridge</addr-line>
        <country>United Kingdom</country>
      </aff>
      <author-notes>
        <corresp>Corresponding Author: Songbo Hu <email>sh2091@cam.ac.uk</email></corresp>
      </author-notes>
      <pub-date pub-type="collection">
        <year>2025</year>
      </pub-date>
      <pub-date pub-type="epub">
        <day>5</day>
        <month>3</month>
        <year>2025</year>
      </pub-date>
      <volume>27</volume>
      <elocation-id>e68720</elocation-id>
      <history>
        <date date-type="received">
          <day>12</day>
          <month>11</month>
          <year>2024</year>
        </date>
        <date date-type="rev-request">
          <day>20</day>
          <month>12</month>
          <year>2024</year>
        </date>
        <date date-type="rev-recd">
          <day>9</day>
          <month>1</month>
          <year>2025</year>
        </date>
        <date date-type="accepted">
          <day>24</day>
          <month>1</month>
          <year>2025</year>
        </date>
      </history>
      <copyright-statement>©Songbo Hu, Abigail Oppong, Ebele Mogo, Charlotte Collins, Giulia Occhini, Anna Barford, Anna Korhonen. Originally published in the Journal of Medical Internet Research (https://www.jmir.org), 05.03.2025.</copyright-statement>
      <copyright-year>2025</copyright-year>
      <license license-type="open-access" xlink:href="https://creativecommons.org/licenses/by/4.0/">
        <p>This is an open-access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work, first published in the Journal of Medical Internet Research (ISSN 1438-8871), is properly cited. The complete bibliographic information, a link to the original publication on https://www.jmir.org/, as well as this copyright and license information must be included.</p>
      </license>
      <self-uri xlink:href="https://www.jmir.org/2025/1/e68720" xlink:type="simple"/>
      <abstract>
        <sec sec-type="background">
          <title>Background</title>
          <p>Natural language processing (NLP) has the potential to promote public health. However, applying these technologies in African health systems faces challenges, including limited digital and computational resources to support the continent’s diverse languages and needs.</p>
        </sec>
        <sec sec-type="objective">
          <title>Objective</title>
          <p>This scoping review maps the evidence on NLP technologies for public health in Africa, addressing the following research questions: (1) What public health needs are being addressed by NLP technologies in Africa, and what unmet needs remain? (2) What factors influence the availability of public health NLP technologies across African countries and languages? (3) What stages of deployment have these technologies reached, and to what extent have they been integrated into health systems? (4) What measurable impact has these technologies had on public health outcomes, where such data are available? (5) What recommendations have been proposed to enhance the quality, cost, and accessibility of health-related NLP technologies in Africa?</p>
        </sec>
        <sec sec-type="methods">
          <title>Methods</title>
          <p>This scoping review includes academic studies published between January 1, 2013, and October 3, 2024. A systematic search was conducted across databases, including MEDLINE via PubMed, ACL Anthology, Scopus, IEEE Xplore, and ACM Digital Library, supplemented by gray literature searches. Data were extracted and the NLP technology functions were mapped to the World Health Organization’s list of essential public health functions and the United Nations’ sustainable development goals (SDGs). The extracted data were analyzed to identify trends, gaps, and areas for future research. This scoping review follows the PRISMA-ScR (Preferred Reporting Items for Systematic Reviews and Meta-Analyses Extension for Scoping Reviews) reporting guidelines, and its protocol is publicly available.</p>
        </sec>
        <sec sec-type="results">
          <title>Results</title>
          <p>Of 2186 citations screened, 54 studies were included. While existing NLP technologies support a subset of essential public health functions and SDGs, language coverage remains uneven, with limited support for widely spoken African languages, such as Kiswahili, Yoruba, Igbo, and Zulu, and no support for most of Africa’s &gt;2000 languages. Most technologies are in prototyping phases, with only one fully deployed chatbot addressing vaccine hesitancy. Evidence of measurable impact is limited, with 15% (8/54) studies attempting health-related evaluations and 4% (2/54) demonstrating positive public health outcomes, including improved participants’ mood and increased vaccine intentions. Recommendations include expanding language coverage, targeting local health needs, enhancing trust, integrating solutions into health systems, and adopting participatory design approaches. The gray literature reveals industry- and nongovernmental organizations–led projects focused on deployable NLP applications. However, these projects tend to support only a few major languages and specific use cases, indicating a narrower scope than academic research.</p>
        </sec>
        <sec sec-type="conclusions">
          <title>Conclusions</title>
          <p>Despite growth in NLP research for public health, major gaps remain in deployment, linguistic inclusivity, and health outcome evaluation. Future research should prioritize cross-sectoral and needs-based approaches that engage local communities, align with African health systems, and incorporate rigorous evaluations to enhance public health outcomes.</p>
        </sec>
        <sec sec-type="registered-report">
          <title>International Registered Report Identifier (IRRID)</title>
          <p>RR2-doi:10.1101/2024.07.02.24309815</p>
        </sec>
      </abstract>
      <kwd-group>
        <kwd>public health</kwd>
        <kwd>global health</kwd>
        <kwd>health promotion</kwd>
        <kwd>essential public health functions</kwd>
        <kwd>Africa</kwd>
        <kwd>natural language processing</kwd>
        <kwd>artificial intelligence</kwd>
        <kwd>machine learning</kwd>
        <kwd>technology</kwd>
        <kwd>mobile phone</kwd>
      </kwd-group>
    </article-meta>
  </front>
  <body>
    <sec sec-type="introduction">
      <title>Introduction</title>
      <sec>
        <title>Public Health Needs in Africa</title>
        <p>Most African countries face major challenges in meeting the sustainable development goal (SDG) 3 targets for good health and well-being [<xref ref-type="bibr" rid="ref1">1</xref>-<xref ref-type="bibr" rid="ref3">3</xref>]. Key public health challenges include high rates of infectious diseases, maternal and child health inequities, and a growing burden of noncommunicable diseases, alongside the critical need for resilient emergency response systems [<xref ref-type="bibr" rid="ref4">4</xref>,<xref ref-type="bibr" rid="ref5">5</xref>].</p>
        <p>Some of these challenges stem from acute shortages in the health workforce and weak public health surveillance systems, among other weaknesses in public health systems [<xref ref-type="bibr" rid="ref6">6</xref>,<xref ref-type="bibr" rid="ref7">7</xref>]. For instance, Africa has only 1400 epidemiologists, despite an estimated need for 6000 [<xref ref-type="bibr" rid="ref4">4</xref>]. These issues are further amplified by structural weaknesses in health systems and insufficient multisectoral coordination for health [<xref ref-type="bibr" rid="ref5">5</xref>,<xref ref-type="bibr" rid="ref8">8</xref>], which are particularly exposed by public health emergencies [<xref ref-type="bibr" rid="ref9">9</xref>], such as the COVID-19 pandemic and the mpox outbreaks. During the COVID-19 pandemic, while several African countries were able to rapidly leverage their past experiences with outbreaks to respond to COVID-19, they also faced challenges, such as inadequate adherence to infection control, insufficient personal protective equipment, poor contact tracing, supply chain shortages, and a lack of training for key personnel [<xref ref-type="bibr" rid="ref10">10</xref>].</p>
        <p>To systematically strengthen public health capacities, the World Health Organization (WHO) has outlined 12 essential public health functions (EPHFs) [<xref ref-type="bibr" rid="ref11">11</xref>]. These functions include a broad range of activities, from disease surveillance and health promotion to emergency preparedness and equitable access to health care services. However, many countries across the region, especially those with lower income levels (note that in 2024, Africa comprises upper-middle–income, lower-middle–income, and low-income countries [<xref ref-type="bibr" rid="ref12">12</xref>]), face substantial challenges in fully implementing these functions, mainly because of limited financial, infrastructural, and health care workforce resources [<xref ref-type="bibr" rid="ref5">5</xref>]. In resource-constrained settings, innovative technologies, such as artificial intelligence (AI) technologies, could play a crucial role in supporting the implementation of EPHFs [<xref ref-type="bibr" rid="ref5">5</xref>,<xref ref-type="bibr" rid="ref13">13</xref>], thereby improving public health outcomes and advancing progress toward achieving health-related SDGs.</p>
      </sec>
      <sec>
        <title>Natural Language Processing Technologies for Public Health</title>
        <p>Natural language processing (NLP) is a vibrant interdisciplinary field within AI research, known by various terms in different disciplines, such as NLP in computer science, computational linguistics in linguistics, speech recognition in engineering, computational psycholinguistics in psychology, and language technologies in public discourse [<xref ref-type="bibr" rid="ref14">14</xref>]. Despite the diversity in terminologies and research focuses within these disciplines, they share the common goal of enabling computers to interpret, understand, and generate human language [<xref ref-type="bibr" rid="ref14">14</xref>,<xref ref-type="bibr" rid="ref15">15</xref>]. NLP allows computers to perform a wide range of language-based tasks, including facilitating human-machine communication; improving human-to-human interactions; and processing text and speech data for practical NLP applications across different sectors, including public health.</p>
        <p>NLP holds significant potential for advancing public health in Africa by addressing the ongoing challenges faced by many countries. By appropriately leveraging NLP, countries can improve health communication, enhance disease surveillance, support workforce training, and optimize limited resources [<xref ref-type="bibr" rid="ref2">2</xref>,<xref ref-type="bibr" rid="ref16">16</xref>,<xref ref-type="bibr" rid="ref17">17</xref>], all of which are crucial for achieving SDG 3 targets. NLP technologies can be used to process and analyze large volumes of health data from diverse sources, including social media, medical records, and public health reports, to identify emerging health threats and track disease patterns in real time. This capability is especially valuable in regions with limited health workforce and surveillance infrastructure, as it enables faster, data-driven responses to public health emergencies.</p>
        <p>In practice, NLP-driven tools have already shown promise in Africa. For instance, during the COVID-19 pandemic, WhatsApp chatbots in South Africa, Rwanda, and Senegal were used to disseminate reliable information and facilitate rapid COVID-19 testing, while a Telegram-based chatbot in Ghana was developed to combat misinformation and provide accurate data to the public [<xref ref-type="bibr" rid="ref18">18</xref>]. Such tools can bridge communication gaps by delivering health information in local languages, empowering communities to recognize symptoms, prevent disease transmission, and respond more effectively. These innovations could play a transformative role in strengthening health systems across the continent, making them more resilient and responsive to both everyday health needs and unexpected crises.</p>
        <p>Africa has made progress toward achieving some of its innovation and technology targets [<xref ref-type="bibr" rid="ref19">19</xref>]. Specifically, the continent is making strides in mobile network coverage, with approximately 89% of the total African population now having access to mobile networks. Countries like Mali, Namibia, and Guinea-Bissau have achieved 100% 2G mobile network coverage [<xref ref-type="bibr" rid="ref20">20</xref>]. This expanding network coverage creates new opportunities for cloud-based NLP applications in public health. Cloud computing, which uses remote servers to store, manage, and process data, allows African countries to access computing power that was previously unattainable [<xref ref-type="bibr" rid="ref13">13</xref>]. This scalability is crucial for deploying NLP-based health solutions in resource-constrained settings where local infrastructure may be insufficient or absent. The synergy of cloud technology and increasing network accessibility opens the door to the expansion of NLP technologies in Africa, providing promising opportunities to improve public health outcomes across the continent.</p>
        <p>However, a primary obstacle to the development of NLP applications is a lack of essential digital datasets for the &gt;2000 languages spoken on the continent [<xref ref-type="bibr" rid="ref21">21</xref>,<xref ref-type="bibr" rid="ref22">22</xref>]. The development of modern NLP-based health applications for African language communities requires large-scale datasets to fully unlock the capabilities of deep learning models; however, there is a scarcity of digitized, in-language (ie, datasets collected in the specific languages spoken by the target user of the NLP technology), and in-domain (ie, datasets tailored to a specific use case or application, such as health education or disease surveillance, rather than general-purpose language) data. This scarcity is particularly profound in the health sector, where data tailored to specific African languages and contexts are often completely absent. This conjunction of linguistic diversity and data scarcity creates significant obstacles to developing effective NLP technologies tailored to Africa’s specific public health needs. Moreover, even when NLP technologies are developed, their successful deployment, validation, and integration into existing health systems are critical for achieving a meaningful positive impact. In resource-constrained environments, lessons learned from previous experience suggest that NLP technologies should be integrated into existing systems and institutions, rather than aiming to replace them [<xref ref-type="bibr" rid="ref23">23</xref>]. This requires overcoming various obstacles, including the development of a nuanced understanding of local public health needs, the creation of sustainable and scalable solutions, and ensuring equitable access for all users [<xref ref-type="bibr" rid="ref13">13</xref>,<xref ref-type="bibr" rid="ref23">23</xref>-<xref ref-type="bibr" rid="ref25">25</xref>].</p>
      </sec>
      <sec>
        <title>Research Gaps</title>
        <p>Most previous reviews related to NLP technologies in public health have focused on global health [<xref ref-type="bibr" rid="ref2">2</xref>,<xref ref-type="bibr" rid="ref16">16</xref>,<xref ref-type="bibr" rid="ref26">26</xref>] or low- and middle-income countries [<xref ref-type="bibr" rid="ref13">13</xref>] as a whole, examined AI applications without focusing specifically on NLP [<xref ref-type="bibr" rid="ref2">2</xref>,<xref ref-type="bibr" rid="ref13">13</xref>,<xref ref-type="bibr" rid="ref16">16</xref>,<xref ref-type="bibr" rid="ref27">27</xref>], or focused on a single type of NLP application, such as chatbots [<xref ref-type="bibr" rid="ref18">18</xref>]. Unlike other AI technologies, NLP applications are heavily influenced by the languages and cultures they are designed to serve [<xref ref-type="bibr" rid="ref28">28</xref>,<xref ref-type="bibr" rid="ref29">29</xref>]. Given Africa’s vast linguistic diversity and the complex spectrum of public health challenges faced by countries in the region, an Africa-focused review is critical for a more nuanced understanding of how NLP can be tailored to meet the diverse health needs across the continent. This approach aligns with pan-African initiatives, such as the African Union’s Agenda 2063 [<xref ref-type="bibr" rid="ref30">30</xref>], which seeks to address health challenges and promote collaboration across borders. At the same time, modern NLP technologies often share similar development paradigms, meaning that advancements in one type of application can provide valuable insights and sometimes resources to others. These benefits extend beyond the experience gained during application development and include the shared use of digital resources across applications, often improving performance through NLP’s <italic>transfer learning</italic> techniques [<xref ref-type="bibr" rid="ref31">31</xref>]. Therefore, a broader review of NLP technologies, compared to one focused on a specific application, provides researchers and developers with a more comprehensive set of evidence to guide future development.</p>
        <p>To the best of our knowledge, this is the first scoping review to comprehensively examine the application of NLP technologies to public health in Africa. By mapping the current evidence, this review aims to provide insights into the key barriers and opportunities for the development and deployment of these technologies. Specifically, the review aims to answer five main research questions: (1) <italic>Needs and availability:</italic> What public health needs are being addressed by NLP technologies in Africa, and what unmet needs remain? (2) <italic>Prevalence and distribution:</italic> What factors influence the availability of public health NLP technologies across African countries and languages? (3) <italic>Deployment and integration:</italic> What stages of deployment have these technologies reached, and to what extent have they been integrated into health systems? (4) <italic>Public health impact:</italic> What measurable impact has these technologies had on public health outcomes, where such data are available? (5) <italic>Outlook:</italic> What recommendations have been proposed to enhance the quality, cost, and accessibility of health-related NLP technologies in Africa? By answering these questions, the review aims to provide actionable recommendations for future research and development.</p>
      </sec>
    </sec>
    <sec sec-type="methods">
      <title>Methods</title>
      <sec>
        <title>Overview</title>
        <p>The paradigms of developing NLP technologies have evolved significantly since the origin of NLP in the 1940s. The early rule-based systems, such as ELIZA [<xref ref-type="bibr" rid="ref32">32</xref>], were followed by a shift toward machine learning–based methods in the 1990s. This new approach leveraged large datasets, reducing reliance on manually crafted rules. In 2013, the introduction of Word2Vec marked a major milestone for NLP [<xref ref-type="bibr" rid="ref33">33</xref>], by representing words as vectors. This approach formed the foundation for neural language models. Subsequently, pretrained language models, such as BERT (Bidirectional Encoder Representations from Transformers) [<xref ref-type="bibr" rid="ref34">34</xref>] and GPT-2 (Generative Pre-trained Transformer 2) [<xref ref-type="bibr" rid="ref31">31</xref>], have become the backbone for NLP development, allowing systems to be fine-tuned and developed using datasets of thousands of examples.</p>
        <p>Recent advances in large language models [<xref ref-type="bibr" rid="ref35">35</xref>,<xref ref-type="bibr" rid="ref36">36</xref>] have further simplified NLP development, allowing systems to achieve optimal performance after learning on just a handful of task-specific examples.</p>
        <p>In the context of public health in Africa, the development of NLP technologies will likely use a mixture of paradigms, depending on the availability of task-specific datasets and computational resources. For the purposes of this scoping review, we define <italic>NLP technologies</italic> broadly to include <italic>any computational systems that process natural language, either as input or output</italic>. This inclusive definition ensures that the review captures a wide range of applications in public health across Africa. In <xref ref-type="supplementary-material" rid="app1">Multimedia Appendix 1</xref> [<xref ref-type="bibr" rid="ref18">18</xref>,<xref ref-type="bibr" rid="ref37">37</xref>-<xref ref-type="bibr" rid="ref108">108</xref>], we provide examples of technologies that fall within or outside the scope of this review. The scoping review maps the current evidence on NLP technologies within the framework of EPHFs. The review follows the PRISMA-ScR (Preferred Reporting Items for Systematic Reviews and Meta-Analyses extension for Scoping Reviews) reporting guidelines [<xref ref-type="bibr" rid="ref109">109</xref>] (see the PRISMA-ScR checklist in <xref ref-type="supplementary-material" rid="app2">Multimedia Appendix 2</xref>), and its review protocol is available on <italic>medRxiv</italic> [<xref ref-type="bibr" rid="ref110">110</xref>].</p>
      </sec>
      <sec>
        <title>Search Strategy</title>
        <p>A systematic search of <italic>academic literature</italic> was conducted on May 13, 2024, and updated on October 3, 2024, using the following five electronic bibliographic databases:</p>
        <list list-type="order">
          <list-item>
            <p><italic>MEDLINE via PubMed:</italic> Medical and public health literature</p>
          </list-item>
          <list-item>
            <p><italic>ACL Anthology:</italic> NLP and language science literature</p>
          </list-item>
          <list-item>
            <p><italic>Scopus:</italic> Broad interdisciplinary scope, including medical research</p>
          </list-item>
          <list-item>
            <p><italic>IEEE Xplore:</italic> Engineering literature, particularly in NLP and health informatics</p>
          </list-item>
          <list-item>
            <p><italic>ACM Digital Library:</italic> Computing literature, including NLP and health informatics</p>
          </list-item>
        </list>
        <p>The search included studies published from January 1, 2013, to October 3, 2024, with the aim being to capture recent developments in NLP, particularly after the introduction of neural language models in 2013 [<xref ref-type="bibr" rid="ref33">33</xref>]. No language restrictions were applied, although the search terms were in English.</p>
        <p>Search terms were developed around three key areas:</p>
        <list list-type="order">
          <list-item>
            <p><italic>Africa:</italic> The names of all 55 African Union member countries and African languages with &gt;1 million native speakers</p>
          </list-item>
          <list-item>
            <p><italic>Public health:</italic> On the basis of the 12 EPHFs outlined by the WHO</p>
          </list-item>
          <list-item>
            <p><italic>NLP:</italic> As suggested by a team of experts in the field</p>
          </list-item>
        </list>
        <p>These terms were combined with general phrases and Medical Subject Headings. The search strategy for each database was tailored with database-specific features to enhance the retrieval of relevant studies. The complete search strategy for MEDLINE (PubMed) and the full list of search terms are detailed in <xref ref-type="supplementary-material" rid="app1">Multimedia Appendix 1</xref>. Reference chaining of relevant articles was also conducted.</p>
        <p>Discussion of NLP technologies for public health in Africa occurs beyond the academic literature, spanning a diverse array of contributors, formats, and outlets. As such, sparse academic literature on this topic does not necessarily indicate a lack of progress [<xref ref-type="bibr" rid="ref13">13</xref>]. Many promising technologies addressing public health challenges in Africa are introduced through media outlets, as well as by the individuals, companies, governments, and nongovernmental organizations (NGOs) that develop and use them. These contributions are often presented on the web or shared at events, such as conferences. Therefore, this scoping review also mapped evidence from a broad gray literature. In addition to structured academic databases, the following gray literature sources were included: (1) preprints, non–peer-reviewed studies, and reports; (2) media articles and blog posts; (3) commercial products from startups and established companies; (4) initiatives led by NGOs; and (5) proceedings and presentations from events and conferences. The complete search strategy for gray literature is available in <xref ref-type="supplementary-material" rid="app1">Multimedia Appendix 1</xref>.</p>
      </sec>
      <sec>
        <title>Screening and NLP Technology Selection Criteria</title>
        <p>This review includes NLP technologies designed to support public health in Africa. In addition, we consider digital and computational resources essential for the development and deployment of these technologies, such as digital datasets, hardware, and software toolkits.</p>
        <p>The selection of sources for this scoping review followed a systematic 2-step screening process. Initially, titles and abstracts were reviewed by one reviewer (AO) to exclude studies meeting any of the predefined exclusion criteria (<xref ref-type="boxed-text" rid="box1">Textbox 1</xref>), such as those not involving NLP technologies, unrelated to public health, or lacking a focus on Africa. Studies that passed this initial screening were then subjected to full-text screening, where studies meeting all the inclusion criteria (<xref ref-type="boxed-text" rid="box1">Textbox 1</xref>) were included. The full-text screening was conducted by the same reviewer (AO), and the reasons for exclusion at this stage were documented.</p>
        <p>Before the formal screening process, pilot screenings were conducted to refine our screening guidelines (<xref ref-type="supplementary-material" rid="app1">Multimedia Appendix 1</xref>) and to ensure consistency and accuracy in study selection. In these pilots, 10% (179/1791 for title and abstract screening and 36/361 for full-text screening) of candidate papers were randomly selected and independently reviewed by 2 trained reviewers (AO and CC) following the predefined screening guidelines. Interreviewer agreement was assessed using exact match rate and Cohen κ to ensure reliability. The screening process and guidelines were iteratively refined by a review coordinator (SH), and the pilot screening was repeated until both an exact match rate of 0.9 and a Cohen κ score of 0.8, indicating almost perfect agreement, were achieved. Following the pilot, formal screening was conducted by a single reviewer (AO), with any concerns resolved by a review coordinator (SH), a subject matter expert in NLP.</p>
        <boxed-text id="box1" position="float">
          <title>Inclusion and exclusion criteria.</title>
          <p>
            <bold>Inclusion criteria</bold>
          </p>
          <list list-type="bullet">
            <list-item>
              <p>All types of scientific publications aimed at an academic audience (eg, peer-reviewed articles, conference proceedings, and book chapters); for gray literature search, other web-based publications (eg, blog posts and media outlets)</p>
            </list-item>
            <list-item>
              <p>Studies focusing on the development, evaluation, or adaptation of natural language processing (NLP) technologies specifically promoting public health</p>
            </list-item>
            <list-item>
              <p>Studies demonstrating direct or indirect relevance to the population in the continent of Africa</p>
            </list-item>
            <list-item>
              <p>Studies published between January 1, 2013, and October 3, 2024</p>
            </list-item>
            <list-item>
              <p>Studies published in any language</p>
            </list-item>
          </list>
          <p>
            <bold>Exclusion criteria</bold>
          </p>
          <list list-type="bullet">
            <list-item>
              <p>Articles without full-text availability; for articles not available through Cambridge University libraries, full text was requested by emailing the authors</p>
            </list-item>
            <list-item>
              <p>Studies unrelated to NLP technologies or their application to public health; for example, non-NLP applications, where no language technologies were involved, and the technology was used to perform tasks, such as predicting outcomes solely from structured datasets or images</p>
            </list-item>
            <list-item>
              <p>Studies focused on non-African contexts, except where such studies offer comparative insights relevant to African NLP technologies</p>
            </list-item>
            <list-item>
              <p>Studies published before January 1, 2013, or after October 3, 2024</p>
            </list-item>
            <list-item>
              <p>No language requirement specified</p>
            </list-item>
          </list>
        </boxed-text>
      </sec>
      <sec>
        <title>Data Extraction and Synthesis</title>
        <p>Data were extracted for each included study based on a predefined data extraction template (<xref ref-type="supplementary-material" rid="app1">Multimedia Appendix 1</xref>), capturing key information on study descriptions, the characterization of NLP technologies (<xref ref-type="boxed-text" rid="box2">Textbox 2</xref>), and their contributions to EPHFs, SDGs, and SDG 3 targets specifically. In addition, where such data were available, any public health outcomes measured and recommendations for future development were documented. One reviewer (AO) completed the data extraction for all included studies, with any concerns resolved through team discussions. Due to the heterogeneity of study goals, methodologies, evaluation methods, and outcomes, a formal meta-analysis was not attempted. Instead, a narrative synthesis of the results was conducted, with introduced NLP technologies characterized according to the categories outlined in the data extraction template. The extracted data were analyzed to identify trends, gaps, and areas for future research. In addition, the authors’ recommendations for future development were documented and summarized to provide guidance for advancing NLP technologies in public health.</p>
        <p>A similar pipelined approach of screening, data extraction, and synthesis was applied to the gray literature. Given that our gray literature search covered sources beyond academic publications, we omitted undisclosed data extraction items, as commercial products often lack full disclosure of their design and implementation. A detailed description of our approach to identifying and synthesizing the gray literature is available in <xref ref-type="supplementary-material" rid="app1">Multimedia Appendix 1</xref>.</p>
        <boxed-text id="box2" position="float">
          <title>Selected characterization of natural language processing technologies in public health.</title>
          <list list-type="bullet">
            <list-item>
              <p>Natural language processing (NLP) applications: The NLP application each system performs, such as conversational assistant, language translation, or automated diagnosis</p>
            </list-item>
            <list-item>
              <p>Modality: Type of data processed by the NLP application (eg, text, audio, and image)</p>
            </list-item>
            <list-item>
              <p>Supported languages: The set of languages supported by the NLP technology; languages are documented using ISO (International Organization for Standardization) 639-2 codes</p>
            </list-item>
            <list-item>
              <p>Target countries: Countries or regions where the introduced NLP technology is applied or intended to be used; countries are documented using the Alpha-3 code from the ISO 3166 standard</p>
            </list-item>
            <list-item>
              <p>Evaluation method (Adapted from Laranjo et al [<xref ref-type="bibr" rid="ref111">111</xref>])</p>
              <list>
                <list-item>
                  <p>Technical performance: Intrinsic evaluation measures such as accuracy, precision, recall, and F1 score</p>
                </list-item>
                <list-item>
                  <p>User experience: Results on usability testing, user satisfaction surveys, and qualitative feedback from health care providers</p>
                </list-item>
                <list-item>
                  <p>Health-related measure: Extrinsic evaluation measures such as patient engagement rates, reduction in diagnostic errors, or improvements in treatment outcomes</p>
                </list-item>
              </list>
            </list-item>
            <list-item>
              <p>Domain coverage</p>
              <list>
                <list-item>
                  <p>General domain: Data concerning general language processing outside specialized contexts</p>
                </list-item>
                <list-item>
                  <p>Research domain: Research articles and professional materials for expert audiences</p>
                </list-item>
                <list-item>
                  <p>Clinical domain: Clinical notes, patient interactions, and other health care–specific communications</p>
                </list-item>
              </list>
            </list-item>
            <list-item>
              <p>Target users</p>
              <list>
                <list-item>
                  <p>Health care providers: Direct care providers including physicians, nurses, practitioners, community health workers, and other health care professionals</p>
                </list-item>
                <list-item>
                  <p>Public health officials and policy makers: Individuals involved in public health policy, administration, and epidemiology</p>
                </list-item>
                <list-item>
                  <p>Researchers and data scientists: Academics and professionals focused on public health research and data analysis</p>
                </list-item>
                <list-item>
                  <p>Specific equity-seeking groups: Populations grouped by protected demographic characteristics, such as people with disabilities, children, LGBTQ+ (lesbian, gay, bisexual, trans, queer) individuals, and older adults, who advocate for health equity within and beyond their group</p>
                </list-item>
                <list-item>
                  <p>General public: The broader community, especially those at higher risk or in need of specific health interventions</p>
                </list-item>
                <list-item>
                  <p>Others: Any target users that do not fit into the above categories</p>
                </list-item>
              </list>
            </list-item>
            <list-item>
              <p>Deployment stage</p>
              <list>
                <list-item>
                  <p>Conceptualization: This initial stage is when the need for an NLP application is identified, and its feasibility is considered</p>
                </list-item>
                <list-item>
                  <p>Design and prototyping: Development of initial prototypes; these prototypes are usually evaluated based on their technical performance</p>
                </list-item>
                <list-item>
                  <p>Validation: Rigorous testing of the system with public health outcomes to validate its effectiveness and efficiency in real-world settings</p>
                </list-item>
                <list-item>
                  <p>Deployment and operational: Deployment of the NLP technology in actual public health settings, where it is actively used</p>
                </list-item>
                <list-item>
                  <p>Not applicable: The study does not introduce or use any new NLP technologies</p>
                </list-item>
              </list>
            </list-item>
            <list-item>
              <p>Level of accessibility</p>
              <list>
                <list-item>
                  <p>Open-source: Publicly accessible datasets and tools that are open-source for future research and analysis</p>
                </list-item>
                <list-item>
                  <p>Publicly available: Datasets and NLP applications that are accessible to the general public via web or mobile but not necessarily open-source</p>
                </list-item>
                <list-item>
                  <p>Limited access: Datasets and NLP applications available only to certain users or under specific conditions</p>
                </list-item>
                <list-item>
                  <p>Closed access: Datasets and applications that are not openly accessible outside the group of authors but may be available upon request or through collaboration</p>
                </list-item>
              </list>
            </list-item>
            <list-item>
              <p>Available platform</p>
              <list>
                <list-item>
                  <p>Mobile apps: Technologies accessible via mobile apps</p>
                </list-item>
                <list-item>
                  <p>Web-based applications: Technologies accessible via web applications or web-based platforms</p>
                </list-item>
                <list-item>
                  <p>Web service: Technologies accessible via web-based application programming interfaces without user interfaces</p>
                </list-item>
                <list-item>
                  <p>Dataset: Specific datasets published in the study</p>
                </list-item>
                <list-item>
                  <p>NLP tool and library: Specific NLP tools and libraries; these tools usually require installations on each deployed computer, which require expertise in computer science</p>
                </list-item>
              </list>
            </list-item>
          </list>
        </boxed-text>
      </sec>
    </sec>
    <sec sec-type="results">
      <title>Results</title>
      <sec>
        <title>Overview</title>
        <p>The initial database search on May 13, 2024, retrieved 1791 citations, and the final updated search on October 3, 2024, retrieved an additional 404 citations (<xref rid="figure1" ref-type="fig">Figure 1</xref>). The updated search retrieved 289 additional articles from PubMed, 70 from ACL Anthology, 2 from Scopus, 36 from IEEE Xplore, and 7 from ACM Digital Library, resulting in 6 additional papers being identified for full-text eligibility assessment. After removing 9 duplicate citations, 2186 unique records were screened. During the title and abstract screening, 1825 articles were excluded. Full-text reviews were conducted for the remaining 361 articles, which included 6 articles identified through the final updated search. Following the full-text screening, 311 articles were excluded, resulting in the inclusion of 2.29% (50/2186) studies. An additional 4 studies were identified through reference chaining of the included studies. Before the formal screening process, 3 rounds of pilot screenings, covering 10% (179/1791 for title and abstract screening and 36/361 for full-text screening) of the citations, were conducted to ensure consistency and reliability. The final round achieved interreviewer agreement scores of 0.97 for accuracy and 0.89 for Cohen κ in title and abstract screening, and perfect agreement (ie, 1.0 for both measures) in full-text screening.</p>
        <fig id="figure1" position="float">
          <label>Figure 1</label>
          <caption>
            <p>PRISMA (Preferred Reporting Items for Systematic Reviews and Meta-Analyses) flow diagram showing the search and study selection process for 54 included studies. NLP: natural language processing.</p>
          </caption>
          <graphic xlink:href="jmir_v27i1e68720_fig1.png" alt-version="no" mimetype="image" position="float" xlink:type="simple"/>
        </fig>
        <p>In this section, we provide an overview of the academic literature on NLP technologies for public health in Africa and present our findings in response to the 5 aforementioned research questions. In addition, we separately summarize relevant gray literature, which provides complementary perspectives to the academic literature. By combining these 2 sources of evidence, we aim to provide a comprehensive and up-to-date analysis of the landscape, while adhering to the rigorous methodological standards of this scoping review.</p>
      </sec>
      <sec>
        <title>Description of Academic Literature</title>
        <p>Over the past decade, there has been a rapid increase in the number of publications on NLP for public health in Africa, with a notable spike in 2022, where 6 (43%) out of the 14 papers published that year were in response to the COVID-19 pandemic (<xref ref-type="boxed-text" rid="box3">Textbox 3</xref>). The number of academic papers from authors affiliated with African and non-African institutions has been similar (<xref ref-type="boxed-text" rid="box3">Textbox 3</xref>). Of the 54 included citations, 38 (70%) papers were contributed by authors affiliated with African institutions [<xref ref-type="bibr" rid="ref18">18</xref>,<xref ref-type="bibr" rid="ref37">37</xref>-<xref ref-type="bibr" rid="ref73">73</xref>], while 35 (65%) papers [<xref ref-type="bibr" rid="ref38">38</xref>,<xref ref-type="bibr" rid="ref40">40</xref>-<xref ref-type="bibr" rid="ref44">44</xref>,<xref ref-type="bibr" rid="ref46">46</xref>,<xref ref-type="bibr" rid="ref48">48</xref>,<xref ref-type="bibr" rid="ref50">50</xref>-<xref ref-type="bibr" rid="ref52">52</xref>,<xref ref-type="bibr" rid="ref59">59</xref>,<xref ref-type="bibr" rid="ref61">61</xref>,<xref ref-type="bibr" rid="ref62">62</xref>,<xref ref-type="bibr" rid="ref64">64</xref>,<xref ref-type="bibr" rid="ref66">66</xref>,<xref ref-type="bibr" rid="ref69">69</xref>,<xref ref-type="bibr" rid="ref71">71</xref>,<xref ref-type="bibr" rid="ref73">73</xref>-<xref ref-type="bibr" rid="ref89">89</xref>] were authored by researchers affiliated with institutions outside Africa. For readability, we do not provide a full list of in-text citations for all our categorizations throughout this review, instead highlighting specific papers where necessary. A complete table with all the categorizations and their corresponding references is available in <xref ref-type="supplementary-material" rid="app1">Multimedia Appendix 1</xref>. Notably, 19 (35%) papers [<xref ref-type="bibr" rid="ref38">38</xref>,<xref ref-type="bibr" rid="ref40">40</xref>-<xref ref-type="bibr" rid="ref44">44</xref>,<xref ref-type="bibr" rid="ref46">46</xref>,<xref ref-type="bibr" rid="ref48">48</xref>,<xref ref-type="bibr" rid="ref50">50</xref>-<xref ref-type="bibr" rid="ref52">52</xref>,<xref ref-type="bibr" rid="ref59">59</xref>,<xref ref-type="bibr" rid="ref61">61</xref>,<xref ref-type="bibr" rid="ref62">62</xref>,<xref ref-type="bibr" rid="ref64">64</xref>,<xref ref-type="bibr" rid="ref66">66</xref>,<xref ref-type="bibr" rid="ref69">69</xref>,<xref ref-type="bibr" rid="ref71">71</xref>,<xref ref-type="bibr" rid="ref73">73</xref>] stem from collaborations between African and non-African institutions, highlighting the prevalence and importance of cross-border and cross-continental collaborations at the intersection of NLP and public health research. Among these 19 papers, 16 (84%) involved coauthorship between researchers from North America and Africa, 6 (32%) involved coauthorship between Asia and Africa, 4 (21%) involved coauthorship between Europe and Africa, and 1 (5%) involved coauthorship between Oceania and Africa. Researchers affiliated with institutions in the United States and South Africa (18/54, 33% papers each) emerged as the leading contributors to NLP research for public health in Africa.</p>
        <boxed-text id="box3" position="float">
          <title> Number of papers by publication years, author institutional affiliations by country, languages supported, and African countries and regions supported in the 54 included studies.</title>
          <p>
            <bold>Publication years</bold>
          </p>
          <list list-type="bullet">
            <list-item>
              <p>2015: n=1; 2016: n=2; 2017: n=2; 2018; n=1; 2019: n=5; 2020: n=9; 2021: n=8; 2022: n=14; 2023: n=9; 2024: n=3</p>
            </list-item>
            <list-item>
              <p>Note that data gathering ended on October 3, 2024, providing only 9 months of data for 2024, which means the 2024 data are not directly comparable to the other years.</p>
            </list-item>
          </list>
          <p>
            <bold>Author institutional affiliations by country</bold>
          </p>
          <list list-type="bullet">
            <list-item>
              <p>South Africa: n=18; the United States: n=18; Kenya: n=8; Canada: n=6; India: n=5; Germany: n=3; Iran: n=3; Rwanda: n=3; Saudi Arabia: n=3; the United Kingdom: n=3; others: n=23</p>
            </list-item>
            <list-item>
              <p>Countries with fewer than 2 papers are grouped under others, including Belgium, Brazil, Cameroon, Egypt, Eswatini, Ethiopia, France, Hungary, Indonesia, Italy, Lebanon, Lesotho, Morocco, Netherlands, New Zealand, Nigeria, Qatar, Senegal, Sierra Leone, Spain, Switzerland, Tanzania, and Uganda.</p>
            </list-item>
            <list-item>
              <p>Note that a single paper can have authors from multiple countries, so the total number of country affiliations exceeds the total number of papers reviewed.</p>
            </list-item>
          </list>
          <p>
            <bold>Language supported</bold>
          </p>
          <list list-type="bullet">
            <list-item>
              <p>English: n=40; Arabic: n=8; Kiswahili: n=7; French: n=4; Zulu: n=4; Amharic: n=3; Hausa: n=3; Hindi: n=3; Northern Sotho: n=3; Xhosa: n=3; others: n=64</p>
            </list-item>
            <list-item>
              <p>Languages supported by &lt;3 technologies are grouped under others, which includes Afrikaans (n=2), Bengali (n=2), Chinese (n=2), Gujarati (n=2), Igbo (n=2), Indonesian (n=2), Japanese (n=2), Korean (n=2), Marathi (n=2), North Ndebele (n=2), Portuguese (n=2), Sinhala (n=2), Sotho (n=2), Spanish (n=2), Urdu (n=2), Assamese (n=1), Central Atlas Tamazight (n=1), Czech (n=1), Dutch (n=1), German (n=1), Iloko (n=1), Italian (n=1), Kannada (n=1), Kikuyu (n=1), Kinyarwanda (n=1), Luo (n=1), Malay (n=1), Malayalam (n=1), Nepali (n=1), Nyankole (n=1), Panjabi (n=1), Persian (n=1), Polish (n=1), Pushto (n=1), Russian (n=1), Shona (n=1), Somali (n=1), Swati (n=1), Tagalog (n=1), Tamil (n=1), Telugu (n=1), Thai (n=1), Tigrinya (n=1), Tsonga (n=1), Tswana (n=1), Turkish (n=1), Uighur (n=1), Venda (n=1), and Yoruba (n=1).</p>
            </list-item>
            <list-item>
              <p>Languages are identified using the ISO 639-2 code, and different dialectal variants of a language (eg, Arabic) are not distinguished.</p>
            </list-item>
            <list-item>
              <p>A single technology may support multiple languages.</p>
            </list-item>
          </list>
          <p>
            <bold>African countries and regions supported</bold>
          </p>
          <list list-type="bullet">
            <list-item>
              <p>South Africa: n=25; Kenya: n=14; Nigeria: n=9; Rwanda: n=7; Egypt: n=5; Ethiopia: n=5; Uganda: n=5; Zimbabwe: n=4; Cameroon: n=3; Eritrea: n=3; Morocco: n=3; Somalia: n=3; Tunisia: n=3; others: n=55</p>
            </list-item>
            <list-item>
              <p>Countries and regions supported by &lt;3 technologies are grouped under others, which includes Algeria (n=2), Botswana (n=2), Democratic Republic of the Congo (n=2), Eswatini (n=2), Lesotho (n=2), Malawi (n=2), Mozambique (n=2), Namibia (n=2), Niger (n=2), Senegal (n=2), South Sudan (n=2), Sudan (n=2), Tanzania (n=2), Angola (n=1), Benin (n=1), Burkina Faso (n=1), Burundi (n=1), Cabo Verde (n=1), Central African Republic (n=1), Chad (n=1), Comoros (n=1), Congo (n=1), Côte d’Ivoire (n=1), Djibouti (n=1), Equatorial Guinea (n=1), Gabon (n=1), Gambia (n=1), Ghana (n=1), Guinea (n=1), Guinea-Bissau (n=1), Liberia (n=1), Libya (n=1), Madagascar (n=1), Mali (n=1), Mauritania (n=1), Mauritius (n=1), Sao Tome and Principe (n=1), Seychelles (n=1), Sierra Leone (n=1), Togo (n=1), Western Sahara (n=1), and Zambia (n=1).</p>
            </list-item>
            <list-item>
              <p>Countries and regions are identified using the ISO 3166 code.</p>
            </list-item>
          </list>
        </boxed-text>
        <p>Approximately 48% (26/54) of the papers included in this review did not disclose their source of funding. Of the 28 (52%) papers that did report funding, some of them received funding from more than one source, with the vast majority of papers (26/28, 93%) supported by public entities. This included government grants, NGOs, and research councils. Only 2 (4%) papers were funded by industry actors [<xref ref-type="bibr" rid="ref38">38</xref>,<xref ref-type="bibr" rid="ref88">88</xref>]. Geographically, with international funding sources determined by their headquarters’ location, most of the papers that disclosed funding were financially supported by institutions in North America (14/54, 26%) and Europe (9/54, 17%). Reflecting the global nature of these research contributions, funding was also sourced from other continents, including Africa and Asia, demonstrating the wide range of financial support for these studies. Notably, no funding was recorded from Oceania and South America.</p>
        <p>The data used to develop NLP technologies for public health in Africa is generally up-to-date. Among the 36 (67%) papers that reported the year of data collection, most studies (30/54, 56%) used data collected either in the same year or within 1 year before publication. Specifically, 13 (24%) papers used data collected in the same year, while 17 (31%) used data with a 1-year delay. In this review, for papers introducing a dataset, unless otherwise specified, assume the year of data collection is the same as the year of publication. For papers that introduce NLP applications or perform an analysis using a data set from other sources, the year of data collection is the year when the data was originally published.</p>
        <p>Most of the data (36/54, 67% papers) fall within the general domain, primarily produced and consumed by the general public, such as social media data. In addition, 15 (28%) studies covered clinical domains, including clinical notes, patient interactions, and other health care–specific communications, while 8 (15%) papers focused on the research domain, covering research articles and professional materials aimed at expert audiences. It should be noted that one study can cover multiple domains simultaneously, as seen in 5 (9%) studies. Regarding data modality, most of the data (53/54, 98% studies) used to develop these technologies were text-based, with minimal use of other modalities. Only 4 (7%) papers used audio [<xref ref-type="bibr" rid="ref47">47</xref>,<xref ref-type="bibr" rid="ref63">63</xref>] or image [<xref ref-type="bibr" rid="ref44">44</xref>,<xref ref-type="bibr" rid="ref48">48</xref>] data, highlighting a limited exploration of non–text-based data in NLP applications for public health in Africa.</p>
      </sec>
      <sec>
        <title>Needs and Availability</title>
        <p>Most of the reviewed papers focused on conversational assistants (17/54, 31%) and sentiment analysis (15/54, 28%). Additional applications included machine translation (3/54, 6%), thematic analysis (3/54, 6%), information extraction (3/54, 6%), and outbreak detection (2/54, 4%). Fewer papers addressed tasks, such as infection detection, misinformation detection, disease prediction, optical character recognition, question-answering, hate speech detection, medical report generation, and speech recognition, with each of these applications covered by only 1 study. A smaller subset of studies focused on fundamental NLP challenges in the context of public health, such as syntax parsing (1/54, 2%), word embedding (1/54, 2%), and lexical processing (1/54, 2%), rather than user-facing applications.</p>
        <p>Most available NLP technologies for public health in Africa were designed to serve expert users, such as researchers (45/54, 83%), policy makers (38/54, 70%), and health care providers (30/54, 56%). Fewer than half of the systems were public-facing (25/54, 46%) and targeted toward equity-seeking groups (8/54, 15%). This focus on expert-driven systems suggests an opportunity to develop more public-facing NLP technologies that engage and empower communities to proactively manage their health. After mapping the currently available NLP technologies into the WHO’s EPHF framework, <xref rid="figure2" ref-type="fig">Figure 2</xref> shows that 9 (75%) out of 12 EPHFs were addressed by existing NLP technologies in Africa, with EPHF 3 (ie, public health stewardship), EPHF 8 (ie, community engagement and social participation), and EPHF 12 (ie, access to and utilization of health products, supplies, equipment, and technologies) remaining unaddressed. Most studies predominantly focused on 4 EPHFs: EPHF 7 (ie, health promotion; 31/54, 57%), EPHF 11 (ie, public health research, evaluation, and knowledge; 25/54, 46%), EPHF 10 (ie, health service quality and equity; 24/54, 44%), and EPHF 1 (ie, public health surveillance and monitoring; 23/54, 43%). Work on other EPHFs remains relatively sparse, with only a handful of papers addressing them. When each paper was assigned one primary EPHF, only 6 EPHFs were the main focus of these studies, leaving 6 EPHFs unaddressed, including EPHF 2 (ie, public health emergency management), EPHF 3, EPHF 4 (ie, multisectoral planning, financing, and management for public health), EPHF 5 (ie, health protection), EPHF 8, and EPHF 12.</p>
        <p>When mapping the included NLP technologies to the United Nations’ SDGs, all the reviewed NLP technologies contributed to SDG 3 (good health and well-being). The interconnected nature of the SDGs means that contributing to one SDG often supports progress in others. For example, 15/54 (28%) studies contributed to SDG 10 (reduced inequality), 10/54 (19%) studies to SDG 9 (industry, innovation, and infrastructure), 6/54 (11%) studies to SDG 8 (decent work and economic growth), 5/54 (9%) studies to SDG 4 (quality education), 4/54 (7%) studies to SDG 5 (gender equality), 1 (2%) study to SDG 15 (life on land), and 1 (2%)  study to SDG 16 (peace, justice, and strong institutions). Thus, even with a primary focus on health, these projects may have a far-reaching impact on other SDGs [<xref ref-type="bibr" rid="ref112">112</xref>]. When zooming in on the targets of SDG 3, currently available NLP technologies in Africa only cover 6 of the 13 specific targets (<xref rid="figure3" ref-type="fig">Figure 3</xref>). Of the 4 means of implementation listed for SDG 3, available technologies engage 3 (ie, tobacco control, access to vaccines and medicines, and health financing).</p>
        <fig id="figure2" position="float">
          <label>Figure 2</label>
          <caption>
            <p>Distribution of all the essential public health functions (EPHFs) to which the 54 included papers contribute. The blue line represents EPHF coverage, where each paper may contribute to multiple EPHFs. The orange line indicates the primary EPHF, where each paper is assigned a single, most relevant EPHF focus.</p>
          </caption>
          <graphic xlink:href="jmir_v27i1e68720_fig2.png" alt-version="no" mimetype="image" position="float" xlink:type="simple"/>
        </fig>
        <fig id="figure3" position="float">
          <label>Figure 3</label>
          <caption>
            <p>Distribution of specific targets (3.1-3.9) and means of implementation (3.a-3.d) under Sustainable Development Goal 3 (good health and well-being) to which the 54 included papers contribute. NCD: noncommunicable disease; WHO: World Health Organization.</p>
          </caption>
          <graphic xlink:href="jmir_v27i1e68720_fig3.png" alt-version="no" mimetype="image" position="float" xlink:type="simple"/>
        </fig>
      </sec>
      <sec>
        <title>Prevalence and Distribution</title>
        <p>The availability of NLP technologies for public health in Africa is strongly influenced by the languages these technologies support. Most NLP technologies predominantly serve widely spoken high-resource languages (<xref ref-type="boxed-text" rid="box3">Textbox 3</xref>), such as English (40/54, 74%), Arabic (8/54, 15%), and French (4/54, 7%), reflecting their status as official languages in academic, governmental, and professional sectors across the continent. In contrast, support for indigenous African languages is significantly limited. While some widely spoken African languages, such as Kiswahili (7/54, 13%) and Zulu (4/54, 7%), are represented, many other indigenous languages remain underrepresented or entirely absent from these technologies. Overall, 59 languages were supported by the 54 studies included in this review, a number that falls far short of covering Africa’s linguistic diversity.</p>
        <p>The availability of NLP technologies for public health in Africa varies significantly across countries and regions. As shown in <xref ref-type="boxed-text" rid="box3">Textbox 3</xref>, South Africa is the primary target country for these technologies, with 25 (46%) out of 54 studies targeting this country, followed by Kenya (14/54, 26%) and Nigeria (9/54, 17%). In contrast, 29 African countries and regions, including Angola, Benin, and Burkina Faso, are supported by only 1 technology each, highlighting uneven distributions of NLP technologies across the continent.</p>
        <p>Our review reveals a geographic concentration of available NLP technologies in certain countries, especially South Africa, Kenya, and Nigeria, suggesting a need for future efforts to expand NLP technology development to underserved regions (<xref rid="figure4" ref-type="fig">Figure 4</xref>). The results further highlight a major gap in linguistic inclusivity within the existing NLP technologies across the continent, where languages spoken in these better-supported regions receive more attention compared to those in other areas (<xref rid="figure5" ref-type="fig">Figure 5</xref>).</p>
        <fig id="figure4" position="float">
          <label>Figure 4</label>
          <caption>
            <p>A map illustrating the distribution of target countries across Africa based on the 54 studies included in this review. Darker shades indicate a higher number of studies per country, as outlined in Textbox 3. Note that small African island states are missing from this map.</p>
          </caption>
          <graphic xlink:href="jmir_v27i1e68720_fig4.png" alt-version="no" mimetype="image" position="float" xlink:type="simple"/>
        </fig>
        <fig id="figure5" position="float">
          <label>Figure 5</label>
          <caption>
            <p>A map illustrating the distribution of supported languages across Africa based on the 54 studies included in this review. Each name is positioned near the geographic center of its primary speaking population, with a larger font size indicating a greater number of studies available. The data on supported languages is based on Textbox 3. Note that our study used English language search terms and small African island states are missing from this map.</p>
          </caption>
          <graphic xlink:href="jmir_v27i1e68720_fig5.png" alt-version="no" mimetype="image" position="float" xlink:type="simple"/>
        </fig>
      </sec>
      <sec>
        <title>Deployment and Integration</title>
        <p>Among the 54 included studies, 4 (7%) were reviews of existing NLP technologies related to health chatbots [<xref ref-type="bibr" rid="ref18">18</xref>], HIV prevention in Africa [<xref ref-type="bibr" rid="ref84">84</xref>], HIV prevention in Malawi specifically [<xref ref-type="bibr" rid="ref85">85</xref>], and chatbots for HIV prevention [<xref ref-type="bibr" rid="ref59">59</xref>]. These reviews do not introduce new NLP technologies but rather summarize findings from other research that has introduced new technologies and reported primary results. As such, the concept of deployment is less relevant to these review studies. Therefore, this subsection focuses on the 50 studies that directly introduce new NLP applications.</p>
        <p>Most NLP applications for public health in Africa are still in the early stages of development, with only 1 (2%) out of the 50 studies fully deployed and operational. This deployed system is a Facebook messenger chatbot designed to address vaccine hesitancy in Kenya and Nigeria, collecting real-time data on vaccine hesitancy trends from user interactions [<xref ref-type="bibr" rid="ref89">89</xref>]. Most studies (44/50, 88%) are in the <italic>design and prototyping</italic> phase, where they are evaluated only based on their technical performance in controlled, lab-based environments. Meanwhile, 5 (10%) studies have reached the <italic>validation</italic> stage, where their effectiveness has been tested in real-world settings through methods, such as expert reviews [<xref ref-type="bibr" rid="ref37">37</xref>,<xref ref-type="bibr" rid="ref74">74</xref>] and user testing [<xref ref-type="bibr" rid="ref39">39</xref>,<xref ref-type="bibr" rid="ref44">44</xref>,<xref ref-type="bibr" rid="ref45">45</xref>]. Specifically, 2 (4%) studies [<xref ref-type="bibr" rid="ref37">37</xref>,<xref ref-type="bibr" rid="ref74">74</xref>] involved health care professionals who reviewed system performance in practical scenarios. The remaining 3 (6%) studies [<xref ref-type="bibr" rid="ref39">39</xref>,<xref ref-type="bibr" rid="ref44">44</xref>,<xref ref-type="bibr" rid="ref45">45</xref>] conducted evaluations with small samples of target users to test the developed NLP technologies. However, these systems were accessible only to a limited number of users and have not yet achieved full deployment.</p>
        <p>Regarding accessibility (as defined in <xref ref-type="boxed-text" rid="box2">Textbox 2</xref>), &gt;half (29/50, 58%) of the NLP applications are publicly accessible, allowing general use without significant restrictions. Of these, 12 (24%) are <italic>open-source</italic>, enabling researchers and developers to build new NLP applications based on their published systems. By contrast, a significant number of systems are categorized as having <italic>limited access</italic> (18/50, 36%) or are <italic>closed access</italic> (3), likely due to the sensitive nature of health-related data, raising concerns around privacy and data security.</p>
        <p>In terms of platform support, most NLP technologies for public health in Africa are offered as tools and libraries (29/50, 58%), datasets (5/50, 10%), or web services (4/50, 8%), all of which require a certain level of technical expertise in computer science to exploit effectively. A smaller proportion of technologies are provided as mobile apps (11/50, 22%) and web-based applications (9/50, 18%), offering more user-friendly interfaces that can be accessed by a broader range of users, including public health practitioners and the general public. This distribution suggests an opportunity to develop NLP technologies with more accessible interfaces to promote wider adoption and usability of these technologies for public health across Africa.</p>
        <p>Of the 50 reviewed NLP technologies, 40 (80%) indicated an intent to integrate their solutions into existing public health systems, and 41 (82%) were designed to be interoperable with various health infrastructures. This reflects a clear recognition among researchers and developers of the importance of ensuring that these technologies function seamlessly within current health frameworks. However, despite this intent, only 1 (2%) study has reached the stage of deployment, highlighting the need to move these technologies from development into operational use.</p>
      </sec>
      <sec>
        <title>Scope and Public Health Impact</title>
        <p>Out of the 54 studies reviewed, 30 (56%) aimed to develop NLP applications or inform public policies to improve public health outcomes in Africa. Of these, 22 (41%) specifically focused on addressing public health challenges within African countries, directly targeting the health issues faced by local communities. The remaining 8 (15%) studies adopted a broader global health perspective. While they do not exclusively tailor their approaches to Africa, these studies aim to promote public health on a global scale, with intended outcomes that also benefit Africa. The other 24 (44%) studies were divided into 18 (33%) studies that advance NLP technologies for public health using African data (eg, social media, health records, or public health data) without directly targeting specific health challenges, and 6 (11%) studies that contribute to global health discussions, with Africa serving as a case study or example.</p>
        <p>In terms of evaluation, nearly all studies (51/54, 94%) reported technical performance using a variety of automatic evaluation metrics. Classification metrics were the most commonly used, such as accuracy (used in 22/54, 41% studies), precision (13/54, 24%), <italic>F</italic><sub>1</sub>-score (15/54, 28%), and recall (11/54, 20%), making these the 4 most frequently applied automatic metrics. However, because of the wide variation in evaluation approaches, direct comparisons between the studies were impractical and not attempted. In contrast, only 11 (20%) studies reported evaluation results based on user experiences, such as usability testing, user satisfaction surveys, or qualitative feedback from health care providers. Furthermore, only 8 (15%) studies attempted to evaluate these technologies using health-related measures. Among these, 2 (4%) studies confirmed a positive impact on public health outcomes, with NLP-based interventions shown to improve participants’ mood [<xref ref-type="bibr" rid="ref71">71</xref>] and increase vaccine intentions and willingness [<xref ref-type="bibr" rid="ref89">89</xref>].</p>
      </sec>
      <sec>
        <title>Outlook and Ethical Consideration</title>
        <p>Among the 54 included papers, 20 (37%) provided recommendations for the future development of NLP technologies for public health in Africa. A thematic analysis of these recommendations identified 6 key areas for future research: addressing specific public health challenges with NLP (11/54, 20%), expanding data coverage for underrepresented languages (8/54, 15% studies), contextualizing solutions to local health needs (6/54, 11% studies), enhancing trust and ethical standards (5/54, 9% studies), integrating NLP technologies with existing health systems (5/54, 9% studies), and incorporating participatory design with domain expert input (3/54, 6% studies).</p>
        <p>In terms of ethical considerations, 46 (85%) out of 54 studies attempted to engage stakeholders during the study design and implementation, while 38 (70%) studies explicitly addressed data privacy compliance. Approximately half of the studies (26/54, 48%) involved the local community in their research. However, only 16 (30%) studies reported receiving explicit ethics approval from an independent review board, and 10 (19%) studies mentioned obtaining informed consent from human participants. It is important to note that not all types of studies involved human participants or required explicit ethics approval in advance. In addition to these considerations, 45 (83%) papers highlighted other ethical concerns, including bias and fairness (11/54, 20%), cultural relevance and appropriateness (11/54, 20%), avoiding miscommunication by NLP technologies (9/54, 17%), preventing misuse of NLP technologies (9/54, 17%), data sharing and accessibility (7/54, 13%), adherence to regulatory standards (2/54, 4%), data representativeness (1/54, 2%), and fair compensation for participants (1/54, 2%).</p>
      </sec>
      <sec>
        <title>Description of Gray Literature</title>
        <p>Our gray literature review covered two types of sources: (1) academic literature, including unpublished preprints and peer-reviewed articles not indexed in the 5 structured databases, and (2) nonacademic sources, such as online articles, blog posts, products from startups and established companies, initiatives from NGOs, and proceedings from events and conferences. Full results of the gray literature search are detailed in <xref ref-type="supplementary-material" rid="app1">Multimedia Appendix 1</xref>, with key findings highlighted below.</p>
        <p>Within the academic gray literature, we identified 11 relevant articles from the first 100 Google Scholar results, with 9 (9%) peer-reviewed articles and 2 (2%) preprints. These studies generally aligned with the patterns observed in the aforementioned structured database search. Each study involved researchers affiliated with at least one African institution, with contributions from South Africa (6/11, 55% studies) [<xref ref-type="bibr" rid="ref90">90</xref>-<xref ref-type="bibr" rid="ref95">95</xref>], Nigeria (4/11, 36%) [<xref ref-type="bibr" rid="ref95">95</xref>-<xref ref-type="bibr" rid="ref98">98</xref>], Guinea (1/11, 9%) [<xref ref-type="bibr" rid="ref99">99</xref>], and Rwanda (1/11, 9%) [<xref ref-type="bibr" rid="ref100">100</xref>]. In addition, 4 (36%) studies involved collaborations with international researchers from institutions based in the United States (3/11, 27% studies), Canada (3/11, 27%), Germany (1/11, 9%), and Mexico (1/11, 9%). Funding was disclosed in 6 (55%) of the 11 studies, all supported by public entities.</p>
        <p>The primary NLP applications developed in these studies were conversational assistants (4/11, 36% studies) and sentiment analysis tools (3/11, 27% studies). These studies primarily supported EPHF 7 (ie, health promotion, 8/11, 73% studies). Regarding language coverage, nearly all studies (11/11, 100%) reported support for English. A smaller number addressed African languages, including Ndebele (2/11, 18% studies), Sotho (2/11, 18%), Kiswahili (2/11, 18%), Swati (2/11, 18%), Venda (2/11, 18%), Xhosa (2/11, 18%), Zulu (2/11 18%), with one study each for Afrikaans, Hausa, Kinyarwanda, Northern Sotho, Shona, Tsonga, and Tswana. For target countries, Nigeria and South Africa were the primary focus, each covered in 5 (45%) studies. Notably, none of the studies provided performance evaluations based on health-related measures or reported reaching the stage of actual deployment.</p>
        <p>Outside academia, commercial products and NGO-led initiatives have focused on creating practical NLP solutions aimed at real-world public health impact. On the basis of our search results, 4 NLP technologies were developed as commercial products by companies [<xref ref-type="bibr" rid="ref101">101</xref>-<xref ref-type="bibr" rid="ref104">104</xref>], and another 4 were created as part of initiatives led by NGOs [<xref ref-type="bibr" rid="ref105">105</xref>-<xref ref-type="bibr" rid="ref108">108</xref>]. These projects were often in partnership with charitable organizations like the Bill and Melinda Gates Foundation, international bodies, such as the WHO, and industry partners like Google or Meta, frequently collaborating with telecom providers to reach populations with lower literacy levels and limited access to public health resources. The primary focus of these NLP technologies was on disseminating public health information through conversational assistants, with applications supporting EPHF 7 (ie, health promotion) and SDG 3 (good health and well-being). Most tools were designed in English with the limited inclusion of widely spoken African languages like Hausa, Kiswahili, and Zulu. In contrast to academic literature, NLP technologies from these nonacademic sources typically disclosed only limited details about their design and implementation.</p>
        <p>Furthermore, our review of events and conferences did not introduce additional evidence of NLP technologies tailored to African public health challenges. A lack of standardized protocols for reporting NLP technologies, such as established reporting standards or controlled vocabularies for indexing, may explain why no relevant NLP technologies were retrieved during our search, likely due to limited keyword overlap.</p>
      </sec>
    </sec>
    <sec sec-type="discussion">
      <title>Discussion</title>
      <sec>
        <title>Principal Findings</title>
        <p>Research into NLP technologies for public health in Africa is an emerging field, with significant growth since 2019. Current studies primarily focus on 2 applications: conversational agents for public health information dissemination and sentiment analysis tools that track public health attitudes on social media. Most studies target high-resource languages like English, Arabic, and French, with limited support for widely spoken African languages, such as Kiswahili and Zulu, and no support for most of Africa’s &gt;2000 languages.</p>
        <p>Most NLP applications remain in the prototype stage, with evaluations often limited to technical performance metrics in controlled settings. Only a handful of studies have validated their systems in real-world contexts, and just 1 has reached full deployment. Until now, most systems have been developed as technical NLP tools rather than targeted health interventions, with limited evaluation of their impact on public health outcomes through rigorous study designs and implementation research approaches.</p>
        <p>While current research highlights the potential of NLP to address public health needs in Africa, this potential remains largely unrealized in terms of measurable public health outcomes. The following discussion explores pathways for public health and NLP researchers to contribute to the development and deployment of NLP technologies toward achieving positive health impacts in Africa. In addition, we reviewed the strengths and limitations of our review approach, providing context for readers to critically evaluate the subsequent discussion.</p>
      </sec>
      <sec>
        <title>Bridging Technical NLP Performance With Health-Related Outcomes</title>
        <p>The review of 54 studies highlights the growing effort to leverage NLP technology for health improvement in Africa. However, it identifies a significant gap in evaluating real-world health outcomes or the behavioral antecedents of these outcomes. Most studies (51/54, 94%) emphasized technical performance, using metrics, such as accuracy, precision, <italic>F</italic><sub>1</sub>-score, and recall. In comparison, only 11 (20%) studies incorporated user-centered evaluations, such as usability testing or health care provider feedback. While some studies [<xref ref-type="bibr" rid="ref45">45</xref>,<xref ref-type="bibr" rid="ref47">47</xref>,<xref ref-type="bibr" rid="ref54">54</xref>] assessed user outcomes like the accuracy of health communications and improvements in health care interactions, only 2 (4%) studies [<xref ref-type="bibr" rid="ref71">71</xref>,<xref ref-type="bibr" rid="ref89">89</xref>] measured explicit health-related impacts. Specifically, 1 (2%) paper [<xref ref-type="bibr" rid="ref71">71</xref>] demonstrated improvements in participants’ mood through an automated intervention targeting maternal mental health in Kenya, while another paper [<xref ref-type="bibr" rid="ref89">89</xref>] showed increased vaccine willingness via a chatbot addressing individual concerns. These examples illustrate the potential of NLP interventions to influence public health, while their rarity highlights the need for more research focused on evaluating health impacts.</p>
        <p>An overreliance on technical NLP metrics limits our understanding of whether these technologies effectively address real-world health challenges. To ensure NLP solutions meet their intended public health goals, future research should incorporate tools to evaluate health-related measures and behavioral outcomes of NLP solutions alongside technical performance. Tools and frameworks already exist to guide the evaluation of health interventions, such as the WHO’s “Monitoring and Evaluating Digital Health Interventions” framework [<xref ref-type="bibr" rid="ref113">113</xref>], which provides standardized guidelines for assessing the impact of digital health technologies on health outcomes and behaviors. Despite the availability of such resources, they remain underutilized in the evaluation of NLP technologies. To fully realize the potential of NLP for public health, it is essential that future studies adopt these established frameworks to rigorously measure both health outcomes and behavioral changes. Integrating these tools will strengthen evidence on the real-world effectiveness of NLP interventions and support more impactful, data-driven public health strategies.</p>
      </sec>
      <sec>
        <title>Deployment, Integration, and Cross-Sectoral Development</title>
        <p>For NLP technologies to be deployed in an impactful way, they must be integrated into African health systems and broader public health infrastructure, ensuring accessibility to diverse groups of users. The results of our review of the academic literature have shown the nascent nature of NLP deployment in Africa, with only 1 technology, a Facebook messenger chatbot collecting data on vaccine hesitancy [<xref ref-type="bibr" rid="ref89">89</xref>], having reached full deployment. Other described technologies (40/50, 80%) were designed with the potential for integration into public health systems, and most apps under development are available without significant restrictions (ie, either open-source or publicly available). However, many of these apps require substantial expertise in computer science for installation and use, limiting their accessibility. For effective integration, these technologies need to be accessible to their intended users, such as health care workers, patients, and nonspecialists. Approximately 20 apps in this review were designed to be delivered via mobile- or web-based interfaces, increasing their potential usability.</p>
        <p>In contrast, industry-led commercial products and NGO-driven initiatives have generally progressed further, often yielding immediate, tangible impacts for African communities. These initiatives commonly partner with organizations [<xref ref-type="bibr" rid="ref114">114</xref>] like the Bill and Melinda Gates Foundation [<xref ref-type="bibr" rid="ref115">115</xref>], the WHO, and companies [<xref ref-type="bibr" rid="ref116">116</xref>], such as Google or Meta, and frequently collaborate with telecom providers to enhance accessibility for populations with limited resources and lower literacy levels. Unlike academic studies, which typically prioritize proof-of-concept and feasibility testing, these projects aim for direct public health impact, real-world validation, and, at times, profitability. However, as highlighted in this review, nonacademic projects tend to focus on narrower applications, primarily conversational assistants, offer limited language support, serve smaller populations, and address a more focused range of public health challenges compared to the diverse objectives often seen in academic research.</p>
        <p>Moving forward, bridging the gap between NLP research and accessible, real-world applications will be essential for delivering positive public health impacts. The narrower focus of nonacademic projects highlights a need for extended collaboration between academic and nonacademic researchers, combining priorities, expertise, and resources to enhance NLP’s potential in addressing Africa’s public health needs. Cross-sectoral partnerships offer a promising model for advancing academic NLP technologies from proof-of-concept to impactful public health solutions across the continent.</p>
      </sec>
      <sec>
        <title>Toward Needs-Based Approaches</title>
        <p>As we move toward the SDGs’ 2030 deadline, it is sobering to note that “current progress falls far short of what is required to meet the SDGs” [<xref ref-type="bibr" rid="ref117">117</xref>]. Within this, the world is off track to achieve SDG 3 [<xref ref-type="bibr" rid="ref117">117</xref>]. The SDG dashboard map offers a country-by-country breakdown of each of the SDG 3 indicators [<xref ref-type="bibr" rid="ref118">118</xref>]. Progress toward SDG 3 in all but one mainland African country (ie, Tunisia) is described as “major challenges remain” (ie, the most concerning category), while Tunisia and the island nations of Cabo Verde, Mauritius, and the Seychelles are in the less severe category of “significant challenges remain.” In terms of progress, no African countries are currently considered to be “on track” or “decreasing” their progress; instead, they are all described as having major challenges in their progress toward the SDG 3 (ie, good health and well-being) targets [<xref ref-type="bibr" rid="ref3">3</xref>].</p>
        <p>In response to this somewhat bleak outlook, the United Nations prescribes that “changing course requires prioritizing the achievement of universal health coverage, strengthening health systems, investing in disease prevention and treatment, and addressing disparities in access to care and services, especially for vulnerable populations” [<xref ref-type="bibr" rid="ref117">117</xref>]. Furthermore, it should be recognized that poverty and inequality constrain the possibilities for health gains [<xref ref-type="bibr" rid="ref119">119</xref>], highlighting the need for a paradigm focused not only on treatment but on prevention, equity, and intersectional, multisectoral approaches to health promotion.</p>
        <p>There is also a need to address technological and infrastructural limitations which still exist. Globally, a third of people remain offline—that is 30% of men and 35% of women [<xref ref-type="bibr" rid="ref117">117</xref>]. In 2015, 15.6% of people in sub-Saharan Africa had internet access, rising to 37% by 2023 (<italic>ibid</italic>). Furthermore, a study of 15 countries (of which 7 were African countries) demonstrated how access to this technology often varies, with lower phone ownership in rural compared to urban areas, and varied ownership levels between poorer and wealthier income groups [<xref ref-type="bibr" rid="ref120">120</xref>].</p>
        <p>A review of the successes and limitations of telemedicine deployment in Africa during the COVID-19 pandemic [<xref ref-type="bibr" rid="ref121">121</xref>] demonstrates what this means in practice. The study found the following technologies were used “videos, telephones, smart wearable digital devices, messaging mobile apps, virtual programs, online health education modules, SMSs, live audio–visual communication, and other digital platforms.” Among these, phones were the most widely used. Some of the difficulties faced included an array of digital challenges ranging from low connectivity and high data costs to the inaccessibility of smartphones, nondelivery of messages, and insufficient digital skills. This was in a broader context characterized by a lack of telemedicine frameworks and policies to support a roll out; some patients and health care personnel preferred not to use these technologies, and there was an underlying shortage of health care personnel [<xref ref-type="bibr" rid="ref121">121</xref>].</p>
        <p>For NLP technologies to address real-world health challenges, they should be viewed not just as technical solutions but as tools shaped by and responsive to the local context. Developing effective NLP applications will require a community-centered approach [<xref ref-type="bibr" rid="ref122">122</xref>,<xref ref-type="bibr" rid="ref123">123</xref>], grounded in local needs, ethical principles, infrastructures, and capacities to ensure these tools are truly accessible and impactful. Engaging people in research, including coresearchers, can facilitate a closer understanding of local needs and suitable ways to address these [<xref ref-type="bibr" rid="ref124">124</xref>].</p>
      </sec>
      <sec>
        <title>The Need for Culturally and Linguistically Inclusive NLP Applications in Africa</title>
        <p>Africa has exceptional linguistic diversity, with &gt;2000 languages spoken across the continent [<xref ref-type="bibr" rid="ref21">21</xref>,<xref ref-type="bibr" rid="ref22">22</xref>]. This includes widely used official languages, such as Arabic, English, and French, alongside popular indigenous languages, such as Zulu, as well as a large majority of underrepresented languages spoken by smaller communities. Kiswahili spans several African countries, uniting East Africa as the shared language of politics, trade, music, literary tradition, and religion (both Islam and Christianity) [<xref ref-type="bibr" rid="ref125">125</xref>]. Nigeria is the most linguistically diverse, with &gt;500 indigenous languages [<xref ref-type="bibr" rid="ref126">126</xref>]. While official languages tend to have relatively sufficient digital data to support NLP development, most indigenous African languages fall into the category of being low-resource, extremely low-resource, or even no-resource, often lacking any digital data essential for NLP technologies. The scarcity of digital language resources forms significant performance disparities in NLP systems [<xref ref-type="bibr" rid="ref127">127</xref>]. These disparities, including higher error rates for underrepresented languages (ie, error rate disparities [<xref ref-type="bibr" rid="ref128">128</xref>]), contribute to broader inequities, limiting access to advancements in NLP technology and impeding speakers of underrepresented languages from fully benefiting from progress in NLP technology.</p>
        <p>To develop inclusive NLP applications that equitably serve African populations, strategically expanding digital datasets for underserved languages is essential. This is particularly the case for languages with limited online representation [<xref ref-type="bibr" rid="ref129">129</xref>]. Concurrently, advancements in multilingual NLP and cross-lingual transfer learning provide promising opportunities [<xref ref-type="bibr" rid="ref130">130</xref>-<xref ref-type="bibr" rid="ref132">132</xref>]. These approaches allow neural language models, the backbones of most modern NLP applications, to leverage knowledge from high-resource languages to perform well in low-resource contexts, even with minimal in-language data. By combining efforts in data collection with advancements in NLP research, these technologies can better support Africa’s linguistic diversity, contributing to public health solutions that promote, rather than hinder, health equity.</p>
        <p>In addition to linguistic inclusivity, cultural relevance is essential for NLP technologies [<xref ref-type="bibr" rid="ref29">29</xref>,<xref ref-type="bibr" rid="ref133">133</xref>] to meet the diverse needs of African communities effectively. Distinct cultural practices, health beliefs, and communication styles influence how groups perceive and interact with technology.</p>
        <p>Embedding cultural practices into the design and implementation of NLP technologies is essential for ensuring their relevance and successful integration into Africa’s health systems and institutions. For example, a health education dialogue system advising users to visit a <italic>general practitioner</italic>, a term commonly associated with primary care doctors in the United Kingdom’s National Health Service, may be irrelevant or confusing to many users in Africa. Furthermore, Loveys et al [<xref ref-type="bibr" rid="ref134">134</xref>] highlighted how expressions of depression in text, such as the ratio of positive to negative emotions, vary across cultures. Similarly, the extensive use of traditional medicine in many African countries [<xref ref-type="bibr" rid="ref135">135</xref>] highlights the need for NLP technologies to incorporate culturally recognized terms and references to these practices. Another good example is the recent work by Olatunji et al [<xref ref-type="bibr" rid="ref136">136</xref>], which introduces a geo-culturally diverse dataset of clinically diverse questions and answers annotated by health experts. This dataset enables the development of question-answering systems serving African patients.</p>
        <p>Respecting and integrating these cultural nuances into NLP design and implementation can enhance trust, ensure alignment with the expectations and needs of each community, and ultimately promote equitable public health outcomes.</p>
      </sec>
      <sec>
        <title>Integrative Development for NLP in Public Health</title>
        <p>Our analysis shows that NLP technologies focusing on health in Africa intersect most frequently with SDG 10 (ie, reduced inequality) and SDG 9 (ie, industry, innovation, and infrastructure). This study did not identify any intersections with other SDGs, even those that are particularly relevant to public health, such as SDG 1 (ie, end poverty), SDG 2 (ie, zero hunger), SDG 6 (ie, clean water and sanitation), SDG 7 (ie, affordable and clean energy), SDG 11 (ie, sustainable cities and communities), SDG 12 (ie, responsible consumption and production), SDG 13 (ie, climate action), and SDG 17 (ie, partnership for the goals) are absent. This highlights an opportunity for more cross-cutting intersections between NLP applications for health and broader sustainable economic development efforts, as well as the importance of a more integrated approach to achieving the SDGs [<xref ref-type="bibr" rid="ref112">112</xref>,<xref ref-type="bibr" rid="ref137">137</xref>].</p>
        <p>The current coverage of the SDG 3 targets and means of implementation by existing NLP technologies (<xref rid="figure3" ref-type="fig">Figure 3</xref>) highlights the need for more investment in the WHO framework convention on tobacco control (SDG 3.a), substance abuse (SDG 3.5), road traffic (SDG 3.6), and environmental health (SDG 3.9) for sustained and long-term health impacts. While the goals of ending epidemics (SDG 3.3), reducing maternal mortality (SDG 3.1), and achieving universal health coverage (SDG 3.8) are strongly represented in the literature, there remains significant potential to invest more in cross-cutting activities that have long-term impacts on health systems.</p>
        <p>The limited attention given to 6 key EPHFs (ie, highlighted by the orange line in <xref rid="figure2" ref-type="fig">Figure 2</xref>) also highlights a significant gap in the research landscape, with critical public health functions, such as emergency management, stewardship, and multisectoral planning being overlooked. These underaddressed EPHFs and SDG 3 targets play a fundamental role in building resilient health systems, especially in low-resource settings. Therefore, there is a need for more balanced research efforts to ensure all aspects of public health are adequately supported.</p>
        <p>Developing NLP technologies to address these underresearched EPHFs and SDG 3 targets requires a deep understanding of local contexts and the integration of NLP technologies within them. For instance, addressing EPHF 12 (ie, access to health products) requires integrating NLP technologies into existing logistics and supply chain systems, which often vary significantly between countries. Such highly specialized and localized contexts introduce additional challenges and requirements for system development.</p>
        <p>Future studies should aim to bridge these gaps by aligning NLP development with more integrative, cross-disciplinary collaborative approaches that promote system-wide impact. By embedding NLP technologies within broader health system goals and leveraging collaborative input across fields, these solutions can become more effective, resilient, and responsive to public health challenges. Such an approach will help guide interventions and inform policy development, ensuring that public health improvements are enduring and responsive to Africa’s evolving health needs.</p>
      </sec>
      <sec>
        <title>Strengths and Limitations of the Review</title>
        <p>This review has several strengths. We developed and followed a protocol guided by the PRISMA-P (Preferred Reporting Items for Systematic Review and Meta-Analyses—Protocols) guidelines [<xref ref-type="bibr" rid="ref138">138</xref>], ensuring a transparent and systematic approach throughout the study. Our literature search was comprehensive and multidisciplinary, integrating both academic and gray literature sources to capture a broad range of perspectives and to provide a current reflection of the scope of research. The inclusion of gray literature, such as reports from industry and NGOs, enabled a wider view of NLP applications in public health that extends beyond the academic literature. Screening and data extraction were conducted following predefined guidelines created by a team of domain experts, enhancing both the consistency and relevance of the data collected. The extracted data is publicly available in a machine-readable format to facilitate future research (<xref ref-type="supplementary-material" rid="app3">Multimedia Appendix 3</xref>).</p>
        <p>However, there are some limitations to consider. Our review relied primarily on English search terms, which may have inadvertently excluded studies published in other languages without English annotations. Although we included 5 representative databases spanning public health, NLP, computing, and engineering, some relevant studies may have been missed because of the highly interdisciplinary nature of the field. In addition, NLP research is frequently disseminated as preprints, blog posts (eg, OpenAI’s introduction of ChatGPT), and in peer-reviewed machine learning conference proceedings (such as International Conference on Learning Representations and Conference on Neural Information Processing Systems) not indexed by our selected databases. Consequently, certain emerging studies may not have been captured, especially given the rapid development of NLP applications in public health. However, the results of our gray literature search indicate that most academic papers, including preprints and conference proceedings, have been covered in this review.</p>
        <p>Although this review included a broad range of gray literature, the search for nonacademic sources was far from exhaustive, and some relevant NLP technologies may have been overlooked. The primary focus of this review was on peer-reviewed academic literature, with gray literature providing supplementary insights. This work could be further expanded through a series of expert interviews, such as with representatives from the WHO or the SDG by 2030 committees, to interrogate the factors shaping the development, or lack thereof, of NLP applications for public health in Africa [<xref ref-type="bibr" rid="ref139">139</xref>,<xref ref-type="bibr" rid="ref140">140</xref>]. In addition, the heterogeneity of NLP methodologies, applications, and evaluation metrics hindered our ability to conduct a formal meta-analysis, resulting in a reliance on narrative synthesis. Despite efforts to maintain consistency during data extraction, inconsistencies in reporting approaches for included studies presented challenges, particularly in evaluating public health focus and outcomes, which impacts comparability across different technologies.</p>
        <p>These challenges reveal a broader misalignment between the rigorous methodological standards of systematic reviews and the agile, fast-evolving, and highly interdisciplinary nature of NLP research. Future research should explore methodological adaptations that better align with the field of NLP, especially for applications in health contexts.</p>
      </sec>
      <sec>
        <title>Conclusions</title>
        <p>The application of NLP technologies to public health in Africa is a promising and rapidly evolving field, with the potential to enhance health care accessibility, equity, and efficiency across the continent. However, significant gaps persist in real-world deployment, language inclusivity, and the rigorous evaluation of health outcomes. The identification of, and responses to, such gaps would be greatly enabled by the establishment of reporting standards for NLP technologies.</p>
        <p>Future research should adopt a needs-based and cross-sectoral approach, engaging expertise from diverse fields, including the expertise of local communities on their own needs and possible solutions, and using existing frameworks for evaluating their public health impacts and outcomes. This approach will help build a deeper understanding of needs and support the tailored design of NLP technologies to effectively address public health challenges where this technology can be useful and is wanted. Furthermore, qualitative research, such as expert interviews, can contribute to better understand the dynamics and demand for progress in this area. By bridging existing gaps in meaningful local engagement, NLP research can better support resilient, culturally relevant, and equitable public health systems in Africa.</p>
      </sec>
    </sec>
  </body>
  <back>
    <app-group>
      <supplementary-material id="app1">
        <label>Multimedia Appendix 1</label>
        <p>Definition of natural language processing, search strategy, screening guidelines, data extraction template, results, and supplementary materials.</p>
        <media xlink:href="jmir_v27i1e68720_app1.pdf" xlink:title="PDF File  (Adobe PDF File), 1524 KB"/>
      </supplementary-material>
      <supplementary-material id="app2">
        <label>Multimedia Appendix 2</label>
        <p>The PRISMA-ScR (Preferred Reporting Items for Systematic Reviews and Meta-Analyses Extension for Scoping Reviews) checklist for the scoping review.</p>
        <media xlink:href="jmir_v27i1e68720_app2.docx" xlink:title="DOCX File , 109 KB"/>
      </supplementary-material>
      <supplementary-material id="app3">
        <label>Multimedia Appendix 3</label>
        <p>Extracted data from included studies in JSON format.</p>
        <media xlink:href="jmir_v27i1e68720_app3.zip" xlink:title="ZIP File  (Zip Archive), 23 KB"/>
      </supplementary-material>
    </app-group>
    <glossary>
      <title>Abbreviations</title>
      <def-list>
        <def-item>
          <term id="abb1">AI</term>
          <def>
            <p>artificial intelligence</p>
          </def>
        </def-item>
        <def-item>
          <term id="abb2">BERT</term>
          <def>
            <p>Bidirectional Encoder Representations</p>
          </def>
        </def-item>
        <def-item>
          <term id="abb3">EPHF</term>
          <def>
            <p>essential public health function</p>
          </def>
        </def-item>
        <def-item>
          <term id="abb4">GPT-2</term>
          <def>
            <p>Generative Pre-trained Transformer 2</p>
          </def>
        </def-item>
        <def-item>
          <term id="abb5">NGO</term>
          <def>
            <p>nongovernmental organization</p>
          </def>
        </def-item>
        <def-item>
          <term id="abb6">NLP</term>
          <def>
            <p>natural language processing</p>
          </def>
        </def-item>
        <def-item>
          <term id="abb7">PRISMA-P</term>
          <def>
            <p>Preferred Reporting Items for Systematic Review and Meta-Analyses—Protocols</p>
          </def>
        </def-item>
        <def-item>
          <term id="abb8">PRISMA-ScR</term>
          <def>
            <p>Preferred Reporting Items for Systematic Reviews and Meta-Analyses Extension for Scoping Reviews</p>
          </def>
        </def-item>
        <def-item>
          <term id="abb9">SDG</term>
          <def>
            <p>sustainable development goal</p>
          </def>
        </def-item>
        <def-item>
          <term id="abb10">WHO</term>
          <def>
            <p>World Health Organization</p>
          </def>
        </def-item>
      </def-list>
    </glossary>
    <ack>
      <p>This work has been supported by the UK Research and Innovation Frontier Research Grant EP/Y031350/1 under the UK government’s funding guarantee for European Research Council Advanced Grants. SH has been supported by the Cambridge International Scholarship.</p>
    </ack>
    <fn-group>
      <fn fn-type="con">
        <p>EM and AK conceived the idea for this scoping review and provided project supervision. SH developed the research protocol and conducted the academic literature search. AO, CC, and SH participated in the screening of papers, with AO as the primary reviewer, CC as the secondary reviewer, and SH as the coordinator. SH designed the data extraction template, while AO carried out the data extraction. Data analysis and visualization were conducted by SH, AO, and GO. SH led the drafting of the manuscript, with substantial contributions from SH, AO, EM, CC, GO, AB, and AK in writing and refining the paper. All authors engaged in discussions throughout the project. SH and AO contributed equally as shared first authors. ChatGPT was used exclusively for editorial assistance, such as improving language clarity and identifying grammatical errors, alongside editing by the authors. The authors have reviewed all content carefully and assume full responsibility for the manuscript’s final form.</p>
      </fn>
      <fn fn-type="conflict">
        <p>None declared.</p>
      </fn>
    </fn-group>
    <ref-list>
      <ref id="ref1">
        <label>1</label>
        <nlm-citation citation-type="web">
          <article-title>Goal 3: ensure healthy lives and promote well-being for all at all ages</article-title>
          <source>United Nations</source>
          <access-date>2024-11-10</access-date>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://sdgs.un.org/goals/goal3">https://sdgs.un.org/goals/goal3</ext-link>
          </comment>
        </nlm-citation>
      </ref>
      <ref id="ref2">
        <label>2</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <collab>The Lancet</collab>
          </person-group>
          <article-title>Artificial intelligence in global health: a brave new world</article-title>
          <source>Lancet</source>
          <year>2019</year>
          <month>04</month>
          <day>13</day>
          <volume>393</volume>
          <issue>10180</issue>
          <fpage>1478</fpage>
          <pub-id pub-id-type="doi">10.1016/S0140-6736(19)30814-1</pub-id>
          <pub-id pub-id-type="medline">30983572</pub-id>
          <pub-id pub-id-type="pii">S0140-6736(19)30814-1</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref3">
        <label>3</label>
        <nlm-citation citation-type="web">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Sachs</surname>
              <given-names>JD</given-names>
            </name>
            <name name-style="western">
              <surname>Lafortune</surname>
              <given-names>G</given-names>
            </name>
            <name name-style="western">
              <surname>Fuller</surname>
              <given-names>G</given-names>
            </name>
          </person-group>
          <article-title>The SDGs and the UN summit of the future: sustainable development report 2024</article-title>
          <source>Dublin University Press</source>
          <access-date>2024-11-10</access-date>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://dashboards.sdgindex.org/chapters">https://dashboards.sdgindex.org/chapters</ext-link>
          </comment>
        </nlm-citation>
      </ref>
      <ref id="ref4">
        <label>4</label>
        <nlm-citation citation-type="web">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Feldscher</surname>
              <given-names>K</given-names>
            </name>
          </person-group>
          <article-title>Africa CDC head is driving a new public health agenda on the continent</article-title>
          <source>Harvard T. H. Chan School of Public Health</source>
          <access-date>2024-11-10</access-date>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://www.hsph.harvard.edu/news/features/africa-cdc-head-is-driving-a-new-public-health-agenda-on-the-continent/">https://www.hsph.harvard.edu/news/features/africa-cdc-head-is-driving-a-new-public-health-agenda-on-the-continent/</ext-link>
          </comment>
        </nlm-citation>
      </ref>
      <ref id="ref5">
        <label>5</label>
        <nlm-citation citation-type="web">
          <article-title>Health in Africa over the next 50 years</article-title>
          <source>African Development Bank</source>
          <year>2013</year>
          <access-date>2024-11-10</access-date>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://www.afdb.org/fileadmin/uploads/afdb/Documents/Publications/Economic_Brief_-_Health_in_Africa_Over_the_Next_50_Years.pdf">https://www.afdb.org/fileadmin/uploads/afdb/Documents/Publications/Economic_Brief_-_Health_in_Africa_Over_the_Next_50_Years.pdf</ext-link>
          </comment>
        </nlm-citation>
      </ref>
      <ref id="ref6">
        <label>6</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <collab>GBD 2017 SDG Collaborators</collab>
          </person-group>
          <article-title>Measuring progress from 1990 to 2017 and projecting attainment to 2030 of the health-related Sustainable Development Goals for 195 countries and territories: a systematic analysis for the Global Burden of Disease Study 2017</article-title>
          <source>Lancet</source>
          <year>2018</year>
          <month>11</month>
          <day>10</day>
          <volume>392</volume>
          <issue>10159</issue>
          <fpage>2091</fpage>
          <lpage>2138</lpage>
          <pub-id pub-id-type="doi">10.1016/S0140-6736(18)32281-5</pub-id>
          <pub-id pub-id-type="medline">30496107</pub-id>
          <pub-id pub-id-type="pii">S0140-6736(18)32281-5</pub-id>
          <pub-id pub-id-type="pmcid">PMC6227911</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref7">
        <label>7</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Bartolomeos</surname>
              <given-names>KK</given-names>
            </name>
          </person-group>
          <article-title>The case for investing in public health surveillance in low- and middle-income countries</article-title>
          <source>Afr J Emerg Med</source>
          <year>2018</year>
          <month>12</month>
          <volume>8</volume>
          <issue>4</issue>
          <fpage>127</fpage>
          <lpage>8</lpage>
          <pub-id pub-id-type="doi">10.1016/j.afjem.2018.07.005</pub-id>
          <pub-id pub-id-type="medline">30534514</pub-id>
          <pub-id pub-id-type="pii">S2211-419X(18)30051-X</pub-id>
          <pub-id pub-id-type="pmcid">PMC6277530</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref8">
        <label>8</label>
        <nlm-citation citation-type="book">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Dorling</surname>
              <given-names>D</given-names>
            </name>
            <name name-style="western">
              <surname>Newman</surname>
              <given-names>M</given-names>
            </name>
            <name name-style="western">
              <surname>Barford</surname>
              <given-names>A</given-names>
            </name>
          </person-group>
          <source>The Atlas of the Real World: Mapping The Way We Live</source>
          <year>2008</year>
          <publisher-loc>London, UK</publisher-loc>
          <publisher-name>Thames &amp; Hudson</publisher-name>
        </nlm-citation>
      </ref>
      <ref id="ref9">
        <label>9</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Gebremeskel</surname>
              <given-names>AT</given-names>
            </name>
            <name name-style="western">
              <surname>Otu</surname>
              <given-names>A</given-names>
            </name>
            <name name-style="western">
              <surname>Abimbola</surname>
              <given-names>S</given-names>
            </name>
            <name name-style="western">
              <surname>Yaya</surname>
              <given-names>S</given-names>
            </name>
          </person-group>
          <article-title>Building resilient health systems in Africa beyond the COVID-19 pandemic response</article-title>
          <source>BMJ Glob Health</source>
          <year>2021</year>
          <month>06</month>
          <day>28</day>
          <volume>6</volume>
          <issue>6</issue>
          <fpage>e006108</fpage>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://gh.bmj.com/lookup/pmidlookup?view=long&amp;pmid=34183330"/>
          </comment>
          <pub-id pub-id-type="doi">10.1136/bmjgh-2021-006108</pub-id>
          <pub-id pub-id-type="medline">34183330</pub-id>
          <pub-id pub-id-type="pii">bmjgh-2021-006108</pub-id>
          <pub-id pub-id-type="pmcid">PMC8245280</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref10">
        <label>10</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Talisuna</surname>
              <given-names>A</given-names>
            </name>
            <name name-style="western">
              <surname>Iwu</surname>
              <given-names>C</given-names>
            </name>
            <name name-style="western">
              <surname>Okeibunor</surname>
              <given-names>J</given-names>
            </name>
            <name name-style="western">
              <surname>Stephen</surname>
              <given-names>M</given-names>
            </name>
            <name name-style="western">
              <surname>Musa</surname>
              <given-names>EO</given-names>
            </name>
            <name name-style="western">
              <surname>Herring</surname>
              <given-names>BL</given-names>
            </name>
            <name name-style="western">
              <surname>Ramadan</surname>
              <given-names>OP</given-names>
            </name>
            <name name-style="western">
              <surname>Yota</surname>
              <given-names>D</given-names>
            </name>
            <name name-style="western">
              <surname>Nanyunja</surname>
              <given-names>M</given-names>
            </name>
            <name name-style="western">
              <surname>Mpairwe</surname>
              <given-names>A</given-names>
            </name>
            <name name-style="western">
              <surname>Banza</surname>
              <given-names>FM</given-names>
            </name>
            <name name-style="western">
              <surname>Diallo</surname>
              <given-names>AB</given-names>
            </name>
            <name name-style="western">
              <surname>Wango</surname>
              <given-names>RK</given-names>
            </name>
            <name name-style="western">
              <surname>Massidi</surname>
              <given-names>C</given-names>
            </name>
            <name name-style="western">
              <surname>Njenge</surname>
              <given-names>HK</given-names>
            </name>
            <name name-style="western">
              <surname>Traore</surname>
              <given-names>M</given-names>
            </name>
            <name name-style="western">
              <surname>Oke</surname>
              <given-names>A</given-names>
            </name>
            <name name-style="western">
              <surname>Bonkoungou</surname>
              <given-names>B</given-names>
            </name>
            <name name-style="western">
              <surname>Mayigane</surname>
              <given-names>LN</given-names>
            </name>
            <name name-style="western">
              <surname>Conteh</surname>
              <given-names>IN</given-names>
            </name>
            <name name-style="western">
              <surname>Senait</surname>
              <given-names>F</given-names>
            </name>
            <name name-style="western">
              <surname>Chungong</surname>
              <given-names>S</given-names>
            </name>
            <name name-style="western">
              <surname>Impouma</surname>
              <given-names>B</given-names>
            </name>
            <name name-style="western">
              <surname>Ngoy</surname>
              <given-names>N</given-names>
            </name>
            <name name-style="western">
              <surname>Wiysonge</surname>
              <given-names>CS</given-names>
            </name>
            <name name-style="western">
              <surname>Yoti</surname>
              <given-names>Z</given-names>
            </name>
            <name name-style="western">
              <surname>Gueye</surname>
              <given-names>AS</given-names>
            </name>
          </person-group>
          <article-title>Assessment of COVID-19 pandemic responses in African countries: thematic synthesis of WHO intra-action review reports</article-title>
          <source>BMJ Open</source>
          <year>2022</year>
          <month>05</month>
          <day>02</day>
          <volume>12</volume>
          <issue>5</issue>
          <fpage>e056896</fpage>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://bmjopen.bmj.com/lookup/pmidlookup?view=long&amp;pmid=35501083"/>
          </comment>
          <pub-id pub-id-type="doi">10.1136/bmjopen-2021-056896</pub-id>
          <pub-id pub-id-type="medline">35501083</pub-id>
          <pub-id pub-id-type="pii">bmjopen-2021-056896</pub-id>
          <pub-id pub-id-type="pmcid">PMC9062458</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref11">
        <label>11</label>
        <nlm-citation citation-type="web">
          <article-title>Application of the essential public health functions: an integrated and comprehensive approach to public health</article-title>
          <source>World Health Organization</source>
          <access-date>2024-11-10</access-date>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://www.who.int/publications/i/item/9789240088306">https://www.who.int/publications/i/item/9789240088306</ext-link>
          </comment>
        </nlm-citation>
      </ref>
      <ref id="ref12">
        <label>12</label>
        <nlm-citation citation-type="web">
          <article-title>World Bank country classifications by income level for 2024-2025</article-title>
          <source>World Bank</source>
          <access-date>2024-11-10</access-date>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://blogs.worldbank.org/en/opendata/world-bank-country-classifications-by-income-level-for-2024-2025">https://blogs.worldbank.org/en/opendata/world-bank-country-classifications-by-income-level-for-2024-2025</ext-link>
          </comment>
        </nlm-citation>
      </ref>
      <ref id="ref13">
        <label>13</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Wahl</surname>
              <given-names>B</given-names>
            </name>
            <name name-style="western">
              <surname>Cossy-Gantner</surname>
              <given-names>A</given-names>
            </name>
            <name name-style="western">
              <surname>Germann</surname>
              <given-names>S</given-names>
            </name>
            <name name-style="western">
              <surname>Schwalbe</surname>
              <given-names>NR</given-names>
            </name>
          </person-group>
          <article-title>Artificial intelligence (AI) and global health: how can AI contribute to health in resource-poor settings?</article-title>
          <source>BMJ Glob Health</source>
          <year>2018</year>
          <volume>3</volume>
          <issue>4</issue>
          <fpage>e000798</fpage>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://gh.bmj.com/lookup/pmidlookup?view=long&amp;pmid=30233828"/>
          </comment>
          <pub-id pub-id-type="doi">10.1136/bmjgh-2018-000798</pub-id>
          <pub-id pub-id-type="medline">30233828</pub-id>
          <pub-id pub-id-type="pii">bmjgh-2018-000798</pub-id>
          <pub-id pub-id-type="pmcid">PMC6135465</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref14">
        <label>14</label>
        <nlm-citation citation-type="book">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Jurafsky</surname>
              <given-names>D</given-names>
            </name>
            <name name-style="western">
              <surname>Martin</surname>
              <given-names>JH</given-names>
            </name>
          </person-group>
          <source>Speech and Language Processing: An Introduction to Natural Language Processing, Computational Linguistics and Speech Recognition</source>
          <year>2008</year>
          <publisher-loc>Upper Saddle River, NJ</publisher-loc>
          <publisher-name>Prentice Hall</publisher-name>
        </nlm-citation>
      </ref>
      <ref id="ref15">
        <label>15</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Locke</surname>
              <given-names>S</given-names>
            </name>
            <name name-style="western">
              <surname>Bashall</surname>
              <given-names>A</given-names>
            </name>
            <name name-style="western">
              <surname>Al-Adely</surname>
              <given-names>S</given-names>
            </name>
            <name name-style="western">
              <surname>Moore</surname>
              <given-names>J</given-names>
            </name>
            <name name-style="western">
              <surname>Wilson</surname>
              <given-names>A</given-names>
            </name>
            <name name-style="western">
              <surname>Kitchen</surname>
              <given-names>GB</given-names>
            </name>
          </person-group>
          <article-title>Natural language processing in medicine: a review</article-title>
          <source>Trends Anaesth Crit Care</source>
          <year>2021</year>
          <month>06</month>
          <volume>38</volume>
          <fpage>4</fpage>
          <lpage>9</lpage>
          <pub-id pub-id-type="doi">10.1016/j.tacc.2021.02.007</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref16">
        <label>16</label>
        <nlm-citation citation-type="web">
          <article-title>Artificial intelligence in global health: defining a collective path forward</article-title>
          <source>United States Agency for International Development</source>
          <year>2019</year>
          <access-date>2024-11-10</access-date>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://2017-2020.usaid.gov/cii/ai-in-global-health">https://2017-2020.usaid.gov/cii/ai-in-global-health</ext-link>
          </comment>
        </nlm-citation>
      </ref>
      <ref id="ref17">
        <label>17</label>
        <nlm-citation citation-type="web">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Mogo</surname>
              <given-names>E</given-names>
            </name>
          </person-group>
          <article-title>Dr. AI will see you now</article-title>
          <source>JSTOR Daily</source>
          <access-date>2024-11-10</access-date>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://daily.jstor.org/dr-ai-will-see-you-now">https://daily.jstor.org/dr-ai-will-see-you-now</ext-link>
          </comment>
        </nlm-citation>
      </ref>
      <ref id="ref18">
        <label>18</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Phiri</surname>
              <given-names>M</given-names>
            </name>
            <name name-style="western">
              <surname>Munoriyarwa</surname>
              <given-names>A</given-names>
            </name>
          </person-group>
          <article-title>Health chatbots in Africa: scoping review</article-title>
          <source>J Med Internet Res</source>
          <year>2023</year>
          <month>06</month>
          <day>14</day>
          <volume>25</volume>
          <fpage>e35573</fpage>
          <pub-id pub-id-type="doi">10.2196/35573</pub-id>
          <pub-id pub-id-type="medline">35584083</pub-id>
          <pub-id pub-id-type="pii">v25i1e35573</pub-id>
          <pub-id pub-id-type="pmcid">PMC10337242</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref19">
        <label>19</label>
        <nlm-citation citation-type="web">
          <article-title>Africa's SDGs progress uneven, accelerated efforts required to meet 2030 deadline: new report</article-title>
          <source>United Nations Development Programme</source>
          <access-date>2024-11-10</access-date>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://www.undp.org/africa/press-releases/africas-sdgs-progress-uneven-accelerated-efforts-required-meet-2030-deadline-new-report">https://www.undp.org/africa/press-releases/africas-sdgs-progress-uneven-accelerated-efforts-required-meet-2030-deadline-new-report</ext-link>
          </comment>
        </nlm-citation>
      </ref>
      <ref id="ref20">
        <label>20</label>
        <nlm-citation citation-type="web">
          <article-title>2023 Africa sustainable development report</article-title>
          <source>United Nations Development Programme</source>
          <access-date>2024-11-10</access-date>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://www.undp.org/africa/publications/2023-africa-sustainable-development-report[accessed">https://www.undp.org/africa/publications/2023-africa-sustainable-development-report[accessed</ext-link>
          </comment>
        </nlm-citation>
      </ref>
      <ref id="ref21">
        <label>21</label>
        <nlm-citation citation-type="book">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Heine</surname>
              <given-names>B</given-names>
            </name>
            <name name-style="western">
              <surname>Nurse</surname>
              <given-names>D</given-names>
            </name>
          </person-group>
          <source>African Languages: An Introduction</source>
          <year>2000</year>
          <publisher-loc>Cambridge, MA</publisher-loc>
          <publisher-name>Cambridge University Press</publisher-name>
        </nlm-citation>
      </ref>
      <ref id="ref22">
        <label>22</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Lodhi</surname>
              <given-names>AY</given-names>
            </name>
          </person-group>
          <article-title>The language situation in Africa today</article-title>
          <source>Nord J Afr Stud</source>
          <year>1993</year>
          <volume>2</volume>
          <issue>1</issue>
          <fpage>11</fpage>
        </nlm-citation>
      </ref>
      <ref id="ref23">
        <label>23</label>
        <nlm-citation citation-type="confproc">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Weber</surname>
              <given-names>JS</given-names>
            </name>
            <name name-style="western">
              <surname>Toyama</surname>
              <given-names>K</given-names>
            </name>
          </person-group>
          <article-title>Remembering the past for meaningful AI-D</article-title>
          <source>Proceedings of the 2010 Conference on Artificial Intelligence for Development, Papers from the 2010 AAAI Spring Symposium, Technical Report</source>
          <year>2010</year>
          <conf-name>AAAI/SSS '10</conf-name>
          <conf-date>March 22-24, 2010</conf-date>
          <conf-loc>Stanford, CA</conf-loc>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://www.researchgate.net/publication/221250994_Remembering_the_Past_for_Meaningful_AI-D"/>
          </comment>
        </nlm-citation>
      </ref>
      <ref id="ref24">
        <label>24</label>
        <nlm-citation citation-type="web">
          <article-title>Recommendations on digital interventions for health system strengthening</article-title>
          <source>World Health Organization</source>
          <year>2019</year>
          <access-date>2024-11-10</access-date>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://www.who.int/publications/i/item/9789241550505">https://www.who.int/publications/i/item/9789241550505</ext-link>
          </comment>
        </nlm-citation>
      </ref>
      <ref id="ref25">
        <label>25</label>
        <nlm-citation citation-type="web">
          <article-title>Practical guidance for scaling up health service innovations</article-title>
          <source>World Health Organization</source>
          <year>2009</year>
          <access-date>2024-11-10</access-date>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://www.who.int/publications/i/item/9789241598521">https://www.who.int/publications/i/item/9789241598521</ext-link>
          </comment>
        </nlm-citation>
      </ref>
      <ref id="ref26">
        <label>26</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Baclic</surname>
              <given-names>O</given-names>
            </name>
            <name name-style="western">
              <surname>Tunis</surname>
              <given-names>M</given-names>
            </name>
            <name name-style="western">
              <surname>Young</surname>
              <given-names>K</given-names>
            </name>
            <name name-style="western">
              <surname>Doan</surname>
              <given-names>C</given-names>
            </name>
            <name name-style="western">
              <surname>Swerdfeger</surname>
              <given-names>H</given-names>
            </name>
            <name name-style="western">
              <surname>Schonfeld</surname>
              <given-names>J</given-names>
            </name>
          </person-group>
          <article-title>Challenges and opportunities for public health made possible by advances in natural language processing</article-title>
          <source>Can Commun Dis Rep</source>
          <year>2020</year>
          <month>06</month>
          <day>04</day>
          <volume>46</volume>
          <issue>6</issue>
          <fpage>161</fpage>
          <lpage>8</lpage>
          <pub-id pub-id-type="doi">10.14745/ccdr.v46i06a02</pub-id>
          <pub-id pub-id-type="medline">32673380</pub-id>
          <pub-id pub-id-type="pii">460602</pub-id>
          <pub-id pub-id-type="pmcid">PMC7343054</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref27">
        <label>27</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Tshimula</surname>
              <given-names>JM</given-names>
            </name>
            <name name-style="western">
              <surname>Kalengayi</surname>
              <given-names>M</given-names>
            </name>
            <name name-style="western">
              <surname>Makenga</surname>
              <given-names>D</given-names>
            </name>
            <name name-style="western">
              <surname>Lilonge</surname>
              <given-names>D</given-names>
            </name>
            <name name-style="western">
              <surname>Asumani</surname>
              <given-names>M</given-names>
            </name>
            <name name-style="western">
              <surname>Madiya</surname>
              <given-names>D</given-names>
            </name>
            <name name-style="western">
              <surname>Kalonji</surname>
              <given-names>EN</given-names>
            </name>
            <name name-style="western">
              <surname>Kanda</surname>
              <given-names>H</given-names>
            </name>
            <name name-style="western">
              <surname>Galekwa</surname>
              <given-names>R</given-names>
            </name>
            <name name-style="western">
              <surname>Kumbu</surname>
              <given-names>J</given-names>
            </name>
            <name name-style="western">
              <surname>Mikese</surname>
              <given-names>H</given-names>
            </name>
            <name name-style="western">
              <surname>Tshimula</surname>
              <given-names>G</given-names>
            </name>
          </person-group>
          <article-title>Artificial intelligence for public health surveillance in Africa: applications and opportunities</article-title>
          <source>arXiv. Preprint posted online August 5, 2024</source>
          <year>2024</year>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://arxiv.org/abs/2408.02575"/>
          </comment>
          <pub-id pub-id-type="doi">10.48550/arXiv.2408.02575</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref28">
        <label>28</label>
        <nlm-citation citation-type="confproc">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Adebara</surname>
              <given-names>I</given-names>
            </name>
            <name name-style="western">
              <surname>Abdul-Mageed</surname>
              <given-names>M</given-names>
            </name>
          </person-group>
          <article-title>Towards Afrocentric NLP for African languages: where we are and where we can go</article-title>
          <source>Proceedings of the 60th Annual Meeting of the Association for Computational Linguistics</source>
          <year>2022</year>
          <conf-name>ACL '22</conf-name>
          <conf-date>May 22-27, 2022</conf-date>
          <conf-loc>Dublin, Ireland</conf-loc>
          <fpage>3814</fpage>
          <lpage>41</lpage>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://aclanthology.org/2022.acl-long.265.pdf"/>
          </comment>
          <pub-id pub-id-type="doi">10.18653/v1/2022.acl-long.265</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref29">
        <label>29</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Liu</surname>
              <given-names>CC</given-names>
            </name>
            <name name-style="western">
              <surname>Gurevych</surname>
              <given-names>I</given-names>
            </name>
            <name name-style="western">
              <surname>Korhonen</surname>
              <given-names>A</given-names>
            </name>
          </person-group>
          <article-title>Culturally aware and adapted NLP: a taxonomy and a survey of the state of the art</article-title>
          <source>arXiv. Preprint posted online June 6, 2024</source>
          <year>2024</year>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://arxiv.org/abs/2406.03930"/>
          </comment>
          <pub-id pub-id-type="doi">10.48550/arXiv.2406.03930</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref30">
        <label>30</label>
        <nlm-citation citation-type="web">
          <article-title>Agenda 2063: overview</article-title>
          <source>African Union</source>
          <access-date>2024-11-10</access-date>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://au.int/en/agenda2063/overview">https://au.int/en/agenda2063/overview</ext-link>
          </comment>
        </nlm-citation>
      </ref>
      <ref id="ref31">
        <label>31</label>
        <nlm-citation citation-type="web">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Radford</surname>
              <given-names>A</given-names>
            </name>
            <name name-style="western">
              <surname>Wu</surname>
              <given-names>J</given-names>
            </name>
            <name name-style="western">
              <surname>Child</surname>
              <given-names>R</given-names>
            </name>
            <name name-style="western">
              <surname>Luan</surname>
              <given-names>D</given-names>
            </name>
            <name name-style="western">
              <surname>Amodei</surname>
              <given-names>D</given-names>
            </name>
            <name name-style="western">
              <surname>Sutskever</surname>
              <given-names>I</given-names>
            </name>
          </person-group>
          <article-title>Language models are unsupervised multitask learners</article-title>
          <source>OpenAI Blog</source>
          <year>2019</year>
          <access-date>2024-11-10</access-date>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://cdn.openai.com/better-language-models/language_models_are_unsupervised_multitask_learners.pdf">https://cdn.openai.com/better-language-models/language_models_are_unsupervised_multitask_learners.pdf</ext-link>
          </comment>
        </nlm-citation>
      </ref>
      <ref id="ref32">
        <label>32</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Weizenbaum</surname>
              <given-names>J</given-names>
            </name>
          </person-group>
          <article-title>ELIZA—a computer program for the study of natural language communication between man and machine</article-title>
          <source>Commun ACM</source>
          <year>1966</year>
          <month>01</month>
          <volume>9</volume>
          <issue>1</issue>
          <fpage>36</fpage>
          <lpage>45</lpage>
          <pub-id pub-id-type="doi">10.1145/365153.365168</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref33">
        <label>33</label>
        <nlm-citation citation-type="confproc">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Mikolov</surname>
              <given-names>T</given-names>
            </name>
            <name name-style="western">
              <surname>Sutskever</surname>
              <given-names>I</given-names>
            </name>
            <name name-style="western">
              <surname>Chen</surname>
              <given-names>K</given-names>
            </name>
            <name name-style="western">
              <surname>Corrado</surname>
              <given-names>GS</given-names>
            </name>
            <name name-style="western">
              <surname>Dean</surname>
              <given-names>J</given-names>
            </name>
          </person-group>
          <article-title>Distributed representations of words and phrases and their compositionality</article-title>
          <source>Proceedings of the 27th International Conference on Neural Information Processing Systems</source>
          <year>2013</year>
          <conf-name>NIPS '13</conf-name>
          <conf-date>December 5-10, 2013</conf-date>
          <conf-loc>Lake Tahoe, NV</conf-loc>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://dl.acm.org/doi/10.5555/2999792.2999959"/>
          </comment>
          <pub-id pub-id-type="doi">10.5040/9781474284974.00399</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref34">
        <label>34</label>
        <nlm-citation citation-type="confproc">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Devlin</surname>
              <given-names>J</given-names>
            </name>
            <name name-style="western">
              <surname>Chang</surname>
              <given-names>MW</given-names>
            </name>
            <name name-style="western">
              <surname>Lee</surname>
              <given-names>K</given-names>
            </name>
            <name name-style="western">
              <surname>Toutanova</surname>
              <given-names>K</given-names>
            </name>
          </person-group>
          <article-title>BERT: pre-training of deep bidirectional transformers for language understanding</article-title>
          <source>Proceedings of the 2019 Conference of the North American Chapter of the Association for Computational Linguistics: Human Language Technologies</source>
          <year>2019</year>
          <conf-name>NAACL '19</conf-name>
          <conf-date>June 2-7, 2019</conf-date>
          <conf-loc>Minneapolis, MN</conf-loc>
          <fpage>4171</fpage>
          <lpage>86</lpage>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://aclanthology.org/N19-1423.pdf"/>
          </comment>
          <pub-id pub-id-type="doi">10.18653/v1/n18-2</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref35">
        <label>35</label>
        <nlm-citation citation-type="web">
          <article-title>GPT-4 technical report</article-title>
          <source>arXiv. Preprint posted online March 15, 2023</source>
          <year>2023</year>
          <access-date>2024-11-10</access-date>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://arxiv.org/abs/2303.08774">https://arxiv.org/abs/2303.08774</ext-link>
          </comment>
        </nlm-citation>
      </ref>
      <ref id="ref36">
        <label>36</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Touvron</surname>
              <given-names>H</given-names>
            </name>
            <name name-style="western">
              <surname>Lavril</surname>
              <given-names>T</given-names>
            </name>
            <name name-style="western">
              <surname>Izacard</surname>
              <given-names>G</given-names>
            </name>
            <name name-style="western">
              <surname>Martinet</surname>
              <given-names>X</given-names>
            </name>
            <name name-style="western">
              <surname>Lachaux</surname>
              <given-names>MA</given-names>
            </name>
            <name name-style="western">
              <surname>Lacroix</surname>
              <given-names>T</given-names>
            </name>
            <name name-style="western">
              <surname>Rozière</surname>
              <given-names>B</given-names>
            </name>
            <name name-style="western">
              <surname>Goyal</surname>
              <given-names>N</given-names>
            </name>
          </person-group>
          <article-title>Llama: open and efficient foundation language models</article-title>
          <source>arXiv. Preprint posted online February 27, 2023</source>
          <year>2023</year>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://arxiv.org/abs/2302.13971"/>
          </comment>
          <pub-id pub-id-type="doi">10.48550/arXiv.2302.13971</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref37">
        <label>37</label>
        <nlm-citation citation-type="confproc">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Ogamba</surname>
              <given-names>M</given-names>
            </name>
            <name name-style="western">
              <surname>Gitonga</surname>
              <given-names>J</given-names>
            </name>
            <name name-style="western">
              <surname>Muriithi</surname>
              <given-names>B</given-names>
            </name>
            <name name-style="western">
              <surname>Olukuru</surname>
              <given-names>J</given-names>
            </name>
            <name name-style="western">
              <surname>Sevilla</surname>
              <given-names>J</given-names>
            </name>
          </person-group>
          <article-title>Wellness Buddy: an AI mental health chatbot for Kenyan university students</article-title>
          <source>Proceedings of the 2023 First International Conference on the Advancements of Artificial Intelligence in African Context</source>
          <year>2023</year>
          <conf-name>AAIAC '23</conf-name>
          <conf-date>November 15-16, 2023</conf-date>
          <conf-loc>Arusha, Tanzania</conf-loc>
          <fpage>1</fpage>
          <lpage>6</lpage>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://ieeexplore.ieee.org/document/10465291"/>
          </comment>
          <pub-id pub-id-type="doi">10.1109/aaiac60008.2023.10465291</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref38">
        <label>38</label>
        <nlm-citation citation-type="confproc">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Mondal</surname>
              <given-names>I</given-names>
            </name>
            <name name-style="western">
              <surname>Ahuja</surname>
              <given-names>K</given-names>
            </name>
            <name name-style="western">
              <surname>Jain</surname>
              <given-names>M</given-names>
            </name>
            <name name-style="western">
              <surname>O'Neill</surname>
              <given-names>J</given-names>
            </name>
            <name name-style="western">
              <surname>Bali</surname>
              <given-names>K</given-names>
            </name>
            <name name-style="western">
              <surname>Choudhury</surname>
              <given-names>M</given-names>
            </name>
          </person-group>
          <article-title>Global readiness of language technology for healthcare: what would it take to combat the next pandemic?</article-title>
          <source>Proceedings of the 29th International Conference on Computational Linguistics</source>
          <year>2022</year>
          <conf-name>COLING '22</conf-name>
          <conf-date>October 12-17, 2022</conf-date>
          <conf-loc>Gyeongju, Republic of Korea</conf-loc>
          <fpage>4320</fpage>
          <lpage>35</lpage>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://aclanthology.org/2022.coling-1.381.pdf"/>
          </comment>
        </nlm-citation>
      </ref>
      <ref id="ref39">
        <label>39</label>
        <nlm-citation citation-type="confproc">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Gangavarapu</surname>
              <given-names>A</given-names>
            </name>
          </person-group>
          <article-title>LLMs: a promising new tool for improving healthcare in low-resource nations</article-title>
          <source>Proceedings of the 2023 IEEE Global Humanitarian Technology Conference</source>
          <year>2023</year>
          <conf-name>GHTC '23</conf-name>
          <conf-date>October 12-15, 2023</conf-date>
          <conf-loc>Radnor, PA</conf-loc>
          <fpage>252</fpage>
          <lpage>5</lpage>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://ieeexplore.ieee.org/document/10354650"/>
          </comment>
          <pub-id pub-id-type="doi">10.1109/ghtc56179.2023.10354650</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref40">
        <label>40</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Green</surname>
              <given-names>EP</given-names>
            </name>
            <name name-style="western">
              <surname>Pearson</surname>
              <given-names>N</given-names>
            </name>
            <name name-style="western">
              <surname>Rajasekharan</surname>
              <given-names>S</given-names>
            </name>
            <name name-style="western">
              <surname>Rauws</surname>
              <given-names>M</given-names>
            </name>
            <name name-style="western">
              <surname>Joerin</surname>
              <given-names>A</given-names>
            </name>
            <name name-style="western">
              <surname>Kwobah</surname>
              <given-names>E</given-names>
            </name>
            <name name-style="western">
              <surname>Musyimi</surname>
              <given-names>C</given-names>
            </name>
            <name name-style="western">
              <surname>Bhat</surname>
              <given-names>C</given-names>
            </name>
            <name name-style="western">
              <surname>Jones</surname>
              <given-names>R</given-names>
            </name>
            <name name-style="western">
              <surname>Lai</surname>
              <given-names>Y</given-names>
            </name>
          </person-group>
          <article-title>Expanding access to depression treatment in Kenya through automated psychological support: protocol for a single-case experimental design pilot study</article-title>
          <source>JMIR Res Protoc</source>
          <year>2019</year>
          <month>04</month>
          <day>29</day>
          <volume>8</volume>
          <issue>4</issue>
          <fpage>e11800</fpage>
          <pub-id pub-id-type="doi">10.2196/11800</pub-id>
          <pub-id pub-id-type="medline">31033448</pub-id>
          <pub-id pub-id-type="pii">v8i4e11800</pub-id>
          <pub-id pub-id-type="pmcid">PMC6658239</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref41">
        <label>41</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Schmude</surname>
              <given-names>M</given-names>
            </name>
            <name name-style="western">
              <surname>Salim</surname>
              <given-names>N</given-names>
            </name>
            <name name-style="western">
              <surname>Azadzoy</surname>
              <given-names>H</given-names>
            </name>
            <name name-style="western">
              <surname>Bane</surname>
              <given-names>M</given-names>
            </name>
            <name name-style="western">
              <surname>Millen</surname>
              <given-names>E</given-names>
            </name>
            <name name-style="western">
              <surname>O'Donnell</surname>
              <given-names>L</given-names>
            </name>
            <name name-style="western">
              <surname>Bode</surname>
              <given-names>P</given-names>
            </name>
            <name name-style="western">
              <surname>Türk</surname>
              <given-names>E</given-names>
            </name>
            <name name-style="western">
              <surname>Vaidya</surname>
              <given-names>R</given-names>
            </name>
            <name name-style="western">
              <surname>Gilbert</surname>
              <given-names>S</given-names>
            </name>
          </person-group>
          <article-title>Investigating the potential for clinical decision support in sub-Saharan Africa with AFYA (artificial intelligence-based assessment of health symptoms in Tanzania): protocol for a prospective, observational pilot study</article-title>
          <source>JMIR Res Protoc</source>
          <year>2022</year>
          <month>06</month>
          <day>07</day>
          <volume>11</volume>
          <issue>6</issue>
          <fpage>e34298</fpage>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://www.researchprotocols.org/2022/6/e34298/"/>
          </comment>
          <pub-id pub-id-type="doi">10.2196/34298</pub-id>
          <pub-id pub-id-type="medline">35671073</pub-id>
          <pub-id pub-id-type="pii">v11i6e34298</pub-id>
          <pub-id pub-id-type="pmcid">PMC9214611</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref42">
        <label>42</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Ogbuokiri</surname>
              <given-names>B</given-names>
            </name>
            <name name-style="western">
              <surname>Ahmadi</surname>
              <given-names>A</given-names>
            </name>
            <name name-style="western">
              <surname>Bragazzi</surname>
              <given-names>NL</given-names>
            </name>
            <name name-style="western">
              <surname>Movahedi Nia</surname>
              <given-names>Z</given-names>
            </name>
            <name name-style="western">
              <surname>Mellado</surname>
              <given-names>B</given-names>
            </name>
            <name name-style="western">
              <surname>Wu</surname>
              <given-names>J</given-names>
            </name>
            <name name-style="western">
              <surname>Orbinski</surname>
              <given-names>J</given-names>
            </name>
            <name name-style="western">
              <surname>Asgary</surname>
              <given-names>A</given-names>
            </name>
            <name name-style="western">
              <surname>Kong</surname>
              <given-names>J</given-names>
            </name>
          </person-group>
          <article-title>Public sentiments toward COVID-19 vaccines in South African cities: an analysis of Twitter posts</article-title>
          <source>Front Public Health</source>
          <year>2022</year>
          <volume>10</volume>
          <fpage>987376</fpage>
          <pub-id pub-id-type="doi">10.3389/fpubh.2022.987376</pub-id>
          <pub-id pub-id-type="medline">36033735</pub-id>
          <pub-id pub-id-type="pmcid">PMC9412204</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref43">
        <label>43</label>
        <nlm-citation citation-type="confproc">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Tresner-Kirsch</surname>
              <given-names>D</given-names>
            </name>
            <name name-style="western">
              <surname>Mikkelson</surname>
              <given-names>AA</given-names>
            </name>
            <name name-style="western">
              <surname>Yinka-Banjo</surname>
              <given-names>C</given-names>
            </name>
            <name name-style="western">
              <surname>Akinyemi</surname>
              <given-names>M</given-names>
            </name>
            <name name-style="western">
              <surname>Goyal</surname>
              <given-names>S</given-names>
            </name>
          </person-group>
          <article-title>Intent recognition on low-resource language messages in a health marketplace chatbot</article-title>
          <source>Proceedings of the 2023 IEEE 11th International Conference on Healthcare Informatics</source>
          <year>2023</year>
          <conf-name>ICHI '23</conf-name>
          <conf-date>Houston, TX</conf-date>
          <conf-loc>June 26-29, 2023</conf-loc>
          <fpage>457</fpage>
          <lpage>9</lpage>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://www.computer.org/csdl/proceedings-article/ichi/2023/026300a457/1SN7zPjRwl2"/>
          </comment>
          <pub-id pub-id-type="doi">10.1109/ichi57859.2023.00066</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref44">
        <label>44</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Fletcher</surname>
              <given-names>RR</given-names>
            </name>
            <name name-style="western">
              <surname>Olubeko</surname>
              <given-names>O</given-names>
            </name>
            <name name-style="western">
              <surname>Sonthalia</surname>
              <given-names>H</given-names>
            </name>
            <name name-style="western">
              <surname>Kateera</surname>
              <given-names>F</given-names>
            </name>
            <name name-style="western">
              <surname>Nkurunziza</surname>
              <given-names>T</given-names>
            </name>
            <name name-style="western">
              <surname>Ashby</surname>
              <given-names>JL</given-names>
            </name>
            <name name-style="western">
              <surname>Riviello</surname>
              <given-names>R</given-names>
            </name>
            <name name-style="western">
              <surname>Hedt-Gauthier</surname>
              <given-names>B</given-names>
            </name>
          </person-group>
          <article-title>Application of machine learning to prediction of surgical site infection</article-title>
          <source>Annu Int Conf IEEE Eng Med Biol Soc</source>
          <year>2019</year>
          <month>07</month>
          <volume>2019</volume>
          <fpage>2234</fpage>
          <lpage>7</lpage>
          <pub-id pub-id-type="doi">10.1109/EMBC.2019.8857942</pub-id>
          <pub-id pub-id-type="medline">31946345</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref45">
        <label>45</label>
        <nlm-citation citation-type="confproc">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Batani</surname>
              <given-names>J</given-names>
            </name>
            <name name-style="western">
              <surname>Mbunge</surname>
              <given-names>E</given-names>
            </name>
            <name name-style="western">
              <surname>Leokana</surname>
              <given-names>L</given-names>
            </name>
          </person-group>
          <article-title>A deep learning-based chatbot to enhance maternal health education</article-title>
          <source>Proceedings of the 2024 Conference on Information Communications Technology and Society</source>
          <year>2024</year>
          <conf-name>ICTAS '24</conf-name>
          <conf-date>March 7-8, 2024</conf-date>
          <conf-loc>Durban, South Africa</conf-loc>
          <fpage>7</fpage>
          <lpage>11</lpage>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://ieeexplore.ieee.org/document/10507149"/>
          </comment>
          <pub-id pub-id-type="doi">10.1109/ictas59620.2024.10507149</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref46">
        <label>46</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Ogbuokiri</surname>
              <given-names>B</given-names>
            </name>
            <name name-style="western">
              <surname>Ahmadi</surname>
              <given-names>A</given-names>
            </name>
            <name name-style="western">
              <surname>Nia</surname>
              <given-names>Z</given-names>
            </name>
            <name name-style="western">
              <surname>Mellado</surname>
              <given-names>B</given-names>
            </name>
            <name name-style="western">
              <surname>Wu</surname>
              <given-names>J</given-names>
            </name>
            <name name-style="western">
              <surname>Orbinski</surname>
              <given-names>J</given-names>
            </name>
            <name name-style="western">
              <surname>Asgary</surname>
              <given-names>A</given-names>
            </name>
            <name name-style="western">
              <surname>Kong</surname>
              <given-names>J</given-names>
            </name>
          </person-group>
          <article-title>Vaccine hesitancy hotspots in Africa: an insight from geotagged Twitter posts</article-title>
          <source>IEEE Trans Comput Soc Syst</source>
          <year>2024</year>
          <month>2</month>
          <volume>11</volume>
          <issue>1</issue>
          <fpage>1325</fpage>
          <lpage>38</lpage>
          <pub-id pub-id-type="doi">10.1109/tcss.2023.3236368</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref47">
        <label>47</label>
        <nlm-citation citation-type="confproc">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Marais</surname>
              <given-names>L</given-names>
            </name>
            <name name-style="western">
              <surname>Louw</surname>
              <given-names>JA</given-names>
            </name>
            <name name-style="western">
              <surname>Badenhorst</surname>
              <given-names>J</given-names>
            </name>
            <name name-style="western">
              <surname>Calteaux</surname>
              <given-names>K</given-names>
            </name>
            <name name-style="western">
              <surname>Wilken</surname>
              <given-names>I</given-names>
            </name>
            <name name-style="western">
              <surname>van Niekerk</surname>
              <given-names>N</given-names>
            </name>
            <name name-style="western">
              <surname>Stein</surname>
              <given-names>G</given-names>
            </name>
          </person-group>
          <article-title>AwezaMed: a multilingual, multimodal speech-to-speech translation application for maternal health care</article-title>
          <source>Proceedings of the 2020 IEEE 23rd International Conference on Information Fusion</source>
          <year>2020</year>
          <conf-name>FUSION '20</conf-name>
          <conf-date>July 6-9, 2020</conf-date>
          <conf-loc>Rustenburg, South Africa</conf-loc>
          <fpage>1</fpage>
          <lpage>8</lpage>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://ieeexplore.ieee.org/document/9190240"/>
          </comment>
          <pub-id pub-id-type="doi">10.23919/fusion45008.2020.9190240</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref48">
        <label>48</label>
        <nlm-citation citation-type="confproc">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Annapareddy</surname>
              <given-names>N</given-names>
            </name>
            <name name-style="western">
              <surname>Fallin</surname>
              <given-names>K</given-names>
            </name>
            <name name-style="western">
              <surname>Folks</surname>
              <given-names>R</given-names>
            </name>
            <name name-style="western">
              <surname>Jarrard</surname>
              <given-names>W</given-names>
            </name>
            <name name-style="western">
              <surname>Durieux</surname>
              <given-names>M</given-names>
            </name>
            <name name-style="western">
              <surname>Moradinasab</surname>
              <given-names>N</given-names>
            </name>
            <name name-style="western">
              <surname>Naik</surname>
              <given-names>B</given-names>
            </name>
            <name name-style="western">
              <surname>Sengupta</surname>
              <given-names>S</given-names>
            </name>
            <name name-style="western">
              <surname>Ndaribitse</surname>
              <given-names>C</given-names>
            </name>
            <name name-style="western">
              <surname>Brown</surname>
              <given-names>D</given-names>
            </name>
          </person-group>
          <article-title>Handwritten text and digit classification on Rwandan perioperative flowsheets via YOLOv5</article-title>
          <source>Proceedings of the 2022 Systems and Information Engineering Design Symposium</source>
          <year>2022</year>
          <conf-name>SIEDS '22</conf-name>
          <conf-date>April 28-29, 2022</conf-date>
          <conf-loc>Charlottesville, VA</conf-loc>
          <fpage>270</fpage>
          <lpage>5</lpage>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://ieeexplore.ieee.org/document/9799426"/>
          </comment>
          <pub-id pub-id-type="doi">10.1109/sieds55548.2022.9799426</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref49">
        <label>49</label>
        <nlm-citation citation-type="confproc">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Hassib</surname>
              <given-names>M</given-names>
            </name>
            <name name-style="western">
              <surname>Hossam</surname>
              <given-names>N</given-names>
            </name>
            <name name-style="western">
              <surname>Sameh</surname>
              <given-names>J</given-names>
            </name>
            <name name-style="western">
              <surname>Torki</surname>
              <given-names>M</given-names>
            </name>
          </person-group>
          <article-title>AraDepSu: detecting depression and suicidal ideation in Arabic tweets using transformers</article-title>
          <source>Proceedings of the 7th Arabic Natural Language Processing Workshop</source>
          <year>2022</year>
          <conf-name>WANLP '22</conf-name>
          <conf-date>December 8, 2022</conf-date>
          <conf-loc>Abu Dhabi, United Arab Emirates</conf-loc>
          <fpage>302</fpage>
          <lpage>11</lpage>
          <pub-id pub-id-type="doi">10.18653/v1/2022.wanlp-1.28</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref50">
        <label>50</label>
        <nlm-citation citation-type="confproc">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Mondal</surname>
              <given-names>I</given-names>
            </name>
            <name name-style="western">
              <surname>Bali</surname>
              <given-names>K</given-names>
            </name>
            <name name-style="western">
              <surname>Jain</surname>
              <given-names>M</given-names>
            </name>
            <name name-style="western">
              <surname>Choudhury</surname>
              <given-names>M</given-names>
            </name>
            <name name-style="western">
              <surname>O'Neill</surname>
              <given-names>J</given-names>
            </name>
            <name name-style="western">
              <surname>Ochieng</surname>
              <given-names>M</given-names>
            </name>
            <name name-style="western">
              <surname>Awori</surname>
              <given-names>K</given-names>
            </name>
            <name name-style="western">
              <surname>Ronen</surname>
              <given-names>K</given-names>
            </name>
          </person-group>
          <article-title>Language patterns and behaviour of the peer supporters in multilingual healthcare conversational forums</article-title>
          <source>Proceedings of the 13th Language Resources and Evaluation Conference</source>
          <year>2022</year>
          <conf-name>LREC '22</conf-name>
          <conf-date>June 20-25, 2022</conf-date>
          <conf-loc>Marseille, France</conf-loc>
          <fpage>963</fpage>
          <lpage>75</lpage>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://aclanthology.org/2022.lrec-1.102.pdf"/>
          </comment>
          <pub-id pub-id-type="doi">10.1007/S10579-005-2692-5</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref51">
        <label>51</label>
        <nlm-citation citation-type="confproc">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Ngao</surname>
              <given-names>N</given-names>
            </name>
            <name name-style="western">
              <surname>Wang</surname>
              <given-names>Z</given-names>
            </name>
            <name name-style="western">
              <surname>Nderu</surname>
              <given-names>L</given-names>
            </name>
            <name name-style="western">
              <surname>Mwalili</surname>
              <given-names>T</given-names>
            </name>
            <name name-style="western">
              <surname>August</surname>
              <given-names>T</given-names>
            </name>
            <name name-style="western">
              <surname>Ronen</surname>
              <given-names>K</given-names>
            </name>
          </person-group>
          <article-title>Detecting urgency in multilingual medical SMS in Kenya</article-title>
          <source>Proceedings of the 2nd Conference of the Asia-Pacific Chapter of the Association for Computational Linguistics and the 12th International Joint Conference on Natural Language Processing: Student Research Workshop</source>
          <year>2022</year>
          <conf-name>AACL/IJCNLP '22</conf-name>
          <conf-date>November 20, 2022</conf-date>
          <conf-loc>Virtual Event</conf-loc>
          <fpage>68</fpage>
          <lpage>75</lpage>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://aclanthology.org/2022.aacl-srw.10.pdf"/>
          </comment>
          <pub-id pub-id-type="doi">10.18653/v1/2022.aacl-srw.10</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref52">
        <label>52</label>
        <nlm-citation citation-type="confproc">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Mondal</surname>
              <given-names>I</given-names>
            </name>
            <name name-style="western">
              <surname>Bali</surname>
              <given-names>K</given-names>
            </name>
            <name name-style="western">
              <surname>Jain</surname>
              <given-names>M</given-names>
            </name>
            <name name-style="western">
              <surname>Choudhury</surname>
              <given-names>M</given-names>
            </name>
            <name name-style="western">
              <surname>Sharma</surname>
              <given-names>A</given-names>
            </name>
            <name name-style="western">
              <surname>Gitau</surname>
              <given-names>E</given-names>
            </name>
            <name name-style="western">
              <surname>O'Neill</surname>
              <given-names>J</given-names>
            </name>
            <name name-style="western">
              <surname>Awori</surname>
              <given-names>K</given-names>
            </name>
            <name name-style="western">
              <surname>Gitau</surname>
              <given-names>S</given-names>
            </name>
          </person-group>
          <article-title>A linguistic annotation framework to study interactions in multilingual healthcare conversational forums</article-title>
          <source>Proceedings of the Joint 15th Linguistic Annotation Workshop (LAW) and 3rd Designing Meaning Representations (DMR) Workshop</source>
          <year>2021</year>
          <conf-name>LAW/DMR '21</conf-name>
          <conf-date>November 3-7, 2021</conf-date>
          <conf-loc>Punta Cana, Dominican Republic</conf-loc>
          <fpage>66</fpage>
          <lpage>77</lpage>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://aclanthology.org/2021.law-1.7.pdf"/>
          </comment>
          <pub-id pub-id-type="doi">10.18653/v1/2021.law-1.7</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref53">
        <label>53</label>
        <nlm-citation citation-type="confproc">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Daniel</surname>
              <given-names>J</given-names>
            </name>
            <name name-style="western">
              <surname>Brink</surname>
              <given-names>W</given-names>
            </name>
            <name name-style="western">
              <surname>Eloff</surname>
              <given-names>R</given-names>
            </name>
            <name name-style="western">
              <surname>Copley</surname>
              <given-names>C</given-names>
            </name>
          </person-group>
          <article-title>Towards automating healthcare question answering in a noisy multilingual low-resource setting</article-title>
          <source>Proceedings of the 57th Annual Meeting of the Association for Computational Linguistics</source>
          <year>2019</year>
          <conf-name>ACL '19</conf-name>
          <conf-date>July 28-August 2, 2019</conf-date>
          <conf-loc>Florence, Italy</conf-loc>
          <fpage>948</fpage>
          <lpage>53</lpage>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://aclanthology.org/P19-1090.pdf"/>
          </comment>
          <pub-id pub-id-type="doi">10.18653/v1/p19-1090</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref54">
        <label>54</label>
        <nlm-citation citation-type="confproc">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Byamugisha</surname>
              <given-names>J</given-names>
            </name>
            <name name-style="western">
              <surname>Keet</surname>
              <given-names>CM</given-names>
            </name>
            <name name-style="western">
              <surname>DeRenzi</surname>
              <given-names>B</given-names>
            </name>
          </person-group>
          <article-title>Evaluation of a Runyankore grammar engine for healthcare messages</article-title>
          <source>Proceedings of the 10th International Conference on Natural Language Generation</source>
          <year>2017</year>
          <conf-name>SIGGEN '17</conf-name>
          <conf-date>September 4-7, 2017</conf-date>
          <conf-loc>Santiago de Compostela, Spain</conf-loc>
          <fpage>105</fpage>
          <lpage>13</lpage>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://aclanthology.org/W17-3514.pdf"/>
          </comment>
          <pub-id pub-id-type="doi">10.18653/v1/w17-3514</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref55">
        <label>55</label>
        <nlm-citation citation-type="confproc">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Mojapelo</surname>
              <given-names>ML</given-names>
            </name>
          </person-group>
          <article-title>Semantics of body parts in African WordNet: a case of Northern Sotho</article-title>
          <source>Proceedings of the 8th Global WordNet Conference</source>
          <year>2016</year>
          <conf-name>GWC '16</conf-name>
          <conf-date>January 27-30, 2016</conf-date>
          <conf-loc>Bucharest, Romania</conf-loc>
          <fpage>234</fpage>
          <lpage>42</lpage>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://aclanthology.org/2016.gwc-1.34.pdf"/>
          </comment>
        </nlm-citation>
      </ref>
      <ref id="ref56">
        <label>56</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Vorster</surname>
              <given-names>C</given-names>
            </name>
            <name name-style="western">
              <surname>Kritzinger</surname>
              <given-names>A</given-names>
            </name>
            <name name-style="western">
              <surname>Coetser</surname>
              <given-names>LE</given-names>
            </name>
            <name name-style="western">
              <surname>van der Linden</surname>
              <given-names>J</given-names>
            </name>
          </person-group>
          <article-title>Preliminary reliability of South African adaptation and Northern Sotho translation of the modified checklist for autism in toddlers, revised with follow-up</article-title>
          <source>S Afr J Commun Disord</source>
          <year>2021</year>
          <month>07</month>
          <day>22</day>
          <volume>68</volume>
          <issue>1</issue>
          <fpage>e1</fpage>
          <lpage>7</lpage>
          <pub-id pub-id-type="doi">10.4102/sajcd.v68i1.831</pub-id>
          <pub-id pub-id-type="medline">34342485</pub-id>
          <pub-id pub-id-type="pmcid">PMC8335781</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref57">
        <label>57</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Ghanem</surname>
              <given-names>A</given-names>
            </name>
            <name name-style="western">
              <surname>Asaad</surname>
              <given-names>C</given-names>
            </name>
            <name name-style="western">
              <surname>Hafidi</surname>
              <given-names>H</given-names>
            </name>
            <name name-style="western">
              <surname>Moukafih</surname>
              <given-names>Y</given-names>
            </name>
            <name name-style="western">
              <surname>Guermah</surname>
              <given-names>B</given-names>
            </name>
            <name name-style="western">
              <surname>Sbihi</surname>
              <given-names>N</given-names>
            </name>
            <name name-style="western">
              <surname>Zakroum</surname>
              <given-names>M</given-names>
            </name>
            <name name-style="western">
              <surname>Ghogho</surname>
              <given-names>M</given-names>
            </name>
            <name name-style="western">
              <surname>Dairi</surname>
              <given-names>M</given-names>
            </name>
            <name name-style="western">
              <surname>Cherqaoui</surname>
              <given-names>M</given-names>
            </name>
            <name name-style="western">
              <surname>Baina</surname>
              <given-names>K</given-names>
            </name>
          </person-group>
          <article-title>Real-time infoveillance of Moroccan social media users' sentiments towards the COVID-19 pandemic and its management</article-title>
          <source>Int J Environ Res Public Health</source>
          <year>2021</year>
          <month>11</month>
          <day>19</day>
          <volume>18</volume>
          <issue>22</issue>
          <fpage>12172</fpage>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://www.mdpi.com/resolver?pii=ijerph182212172"/>
          </comment>
          <pub-id pub-id-type="doi">10.3390/ijerph182212172</pub-id>
          <pub-id pub-id-type="medline">34831927</pub-id>
          <pub-id pub-id-type="pii">ijerph182212172</pub-id>
          <pub-id pub-id-type="pmcid">PMC8624830</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref58">
        <label>58</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Nsoesie</surname>
              <given-names>EO</given-names>
            </name>
            <name name-style="western">
              <surname>Oladeji</surname>
              <given-names>O</given-names>
            </name>
            <name name-style="western">
              <surname>Abah</surname>
              <given-names>AS</given-names>
            </name>
            <name name-style="western">
              <surname>Ndeffo-Mbah</surname>
              <given-names>ML</given-names>
            </name>
          </person-group>
          <article-title>Forecasting influenza-like illness trends in Cameroon using Google search data</article-title>
          <source>Sci Rep</source>
          <year>2021</year>
          <month>03</month>
          <day>24</day>
          <volume>11</volume>
          <issue>1</issue>
          <fpage>6713</fpage>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://doi.org/10.1038/s41598-021-85987-9"/>
          </comment>
          <pub-id pub-id-type="doi">10.1038/s41598-021-85987-9</pub-id>
          <pub-id pub-id-type="medline">33762599</pub-id>
          <pub-id pub-id-type="pii">10.1038/s41598-021-85987-9</pub-id>
          <pub-id pub-id-type="pmcid">PMC7991669</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref59">
        <label>59</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>van Heerden</surname>
              <given-names>A</given-names>
            </name>
            <name name-style="western">
              <surname>Bosman</surname>
              <given-names>S</given-names>
            </name>
            <name name-style="western">
              <surname>Swendeman</surname>
              <given-names>D</given-names>
            </name>
            <name name-style="western">
              <surname>Comulada</surname>
              <given-names>WS</given-names>
            </name>
          </person-group>
          <article-title>Chatbots for HIV prevention and care: a narrative review</article-title>
          <source>Curr HIV/AIDS Rep</source>
          <year>2023</year>
          <month>12</month>
          <volume>20</volume>
          <issue>6</issue>
          <fpage>481</fpage>
          <lpage>6</lpage>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://europepmc.org/abstract/MED/38010467"/>
          </comment>
          <pub-id pub-id-type="doi">10.1007/s11904-023-00681-x</pub-id>
          <pub-id pub-id-type="medline">38010467</pub-id>
          <pub-id pub-id-type="pii">10.1007/s11904-023-00681-x</pub-id>
          <pub-id pub-id-type="pmcid">PMC10719151</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref60">
        <label>60</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Cassim</surname>
              <given-names>N</given-names>
            </name>
            <name name-style="western">
              <surname>Mapundu</surname>
              <given-names>M</given-names>
            </name>
            <name name-style="western">
              <surname>Olago</surname>
              <given-names>V</given-names>
            </name>
            <name name-style="western">
              <surname>Celik</surname>
              <given-names>T</given-names>
            </name>
            <name name-style="western">
              <surname>George</surname>
              <given-names>JA</given-names>
            </name>
            <name name-style="western">
              <surname>Glencross</surname>
              <given-names>DK</given-names>
            </name>
          </person-group>
          <article-title>Using text mining techniques to extract prostate cancer predictive information (Gleason score) from semi-structured narrative laboratory reports in the Gauteng province, South Africa</article-title>
          <source>BMC Med Inform Decis Mak</source>
          <year>2021</year>
          <month>11</month>
          <day>25</day>
          <volume>21</volume>
          <issue>1</issue>
          <fpage>330</fpage>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://bmcmedinformdecismak.biomedcentral.com/articles/10.1186/s12911-021-01697-2"/>
          </comment>
          <pub-id pub-id-type="doi">10.1186/s12911-021-01697-2</pub-id>
          <pub-id pub-id-type="medline">34823522</pub-id>
          <pub-id pub-id-type="pii">10.1186/s12911-021-01697-2</pub-id>
          <pub-id pub-id-type="pmcid">PMC8614040</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref61">
        <label>61</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Ntinga</surname>
              <given-names>X</given-names>
            </name>
            <name name-style="western">
              <surname>Musiello</surname>
              <given-names>F</given-names>
            </name>
            <name name-style="western">
              <surname>Keter</surname>
              <given-names>AK</given-names>
            </name>
            <name name-style="western">
              <surname>Barnabas</surname>
              <given-names>R</given-names>
            </name>
            <name name-style="western">
              <surname>van Heerden</surname>
              <given-names>A</given-names>
            </name>
          </person-group>
          <article-title>The feasibility and acceptability of an mHealth conversational agent designed to support HIV self-testing in South Africa: cross-sectional study</article-title>
          <source>J Med Internet Res</source>
          <year>2022</year>
          <month>12</month>
          <day>12</day>
          <volume>24</volume>
          <issue>12</issue>
          <fpage>e39816</fpage>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://www.jmir.org/2022/12/e39816/"/>
          </comment>
          <pub-id pub-id-type="doi">10.2196/39816</pub-id>
          <pub-id pub-id-type="medline">36508248</pub-id>
          <pub-id pub-id-type="pii">v24i12e39816</pub-id>
          <pub-id pub-id-type="pmcid">PMC9793294</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref62">
        <label>62</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Greyling</surname>
              <given-names>T</given-names>
            </name>
            <name name-style="western">
              <surname>Rossouw</surname>
              <given-names>S</given-names>
            </name>
          </person-group>
          <article-title>Positive attitudes towards COVID-19 vaccines: a cross-country analysis</article-title>
          <source>PLoS One</source>
          <year>2022</year>
          <volume>17</volume>
          <issue>3</issue>
          <fpage>e0264994</fpage>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://dx.plos.org/10.1371/journal.pone.0264994"/>
          </comment>
          <pub-id pub-id-type="doi">10.1371/journal.pone.0264994</pub-id>
          <pub-id pub-id-type="medline">35271637</pub-id>
          <pub-id pub-id-type="pii">PONE-D-21-34544</pub-id>
          <pub-id pub-id-type="pmcid">PMC8912241</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref63">
        <label>63</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>du Toit</surname>
              <given-names>J</given-names>
            </name>
            <name name-style="western">
              <surname>Hattingh</surname>
              <given-names>R</given-names>
            </name>
            <name name-style="western">
              <surname>Pitcher</surname>
              <given-names>R</given-names>
            </name>
          </person-group>
          <article-title>The accuracy of radiology speech recognition reports in a multilingual South African teaching hospital</article-title>
          <source>BMC Med Imaging</source>
          <year>2015</year>
          <month>03</month>
          <day>04</day>
          <volume>15</volume>
          <fpage>8</fpage>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://bmcmedimaging.biomedcentral.com/articles/10.1186/s12880-015-0048-1"/>
          </comment>
          <pub-id pub-id-type="doi">10.1186/s12880-015-0048-1</pub-id>
          <pub-id pub-id-type="medline">25879906</pub-id>
          <pub-id pub-id-type="pii">10.1186/s12880-015-0048-1</pub-id>
          <pub-id pub-id-type="pmcid">PMC4464850</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref64">
        <label>64</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Movahedi Nia</surname>
              <given-names>Z</given-names>
            </name>
            <name name-style="western">
              <surname>Bragazzi</surname>
              <given-names>NL</given-names>
            </name>
            <name name-style="western">
              <surname>Ahamadi</surname>
              <given-names>A</given-names>
            </name>
            <name name-style="western">
              <surname>Asgary</surname>
              <given-names>A</given-names>
            </name>
            <name name-style="western">
              <surname>Mellado</surname>
              <given-names>B</given-names>
            </name>
            <name name-style="western">
              <surname>Orbinski</surname>
              <given-names>J</given-names>
            </name>
            <name name-style="western">
              <surname>Seyyed-Kalantari</surname>
              <given-names>L</given-names>
            </name>
            <name name-style="western">
              <surname>Woldegerima</surname>
              <given-names>W</given-names>
            </name>
            <name name-style="western">
              <surname>Wu</surname>
              <given-names>J</given-names>
            </name>
            <name name-style="western">
              <surname>Kong</surname>
              <given-names>J</given-names>
            </name>
          </person-group>
          <article-title>Off-label drug use during the COVID-19 pandemic in Africa: topic modelling and sentiment analysis of ivermectin in South Africa and Nigeria as a case study</article-title>
          <source>J R Soc Interface</source>
          <year>2023</year>
          <month>09</month>
          <volume>20</volume>
          <issue>206</issue>
          <fpage>20230200</fpage>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://royalsocietypublishing.org/doi/abs/10.1098/rsif.2023.0200?url_ver=Z39.88-2003&amp;rfr_id=ori:rid:crossref.org&amp;rfr_dat=cr_pub  0pubmed"/>
          </comment>
          <pub-id pub-id-type="doi">10.1098/rsif.2023.0200</pub-id>
          <pub-id pub-id-type="medline">37700708</pub-id>
          <pub-id pub-id-type="pmcid">PMC10498353</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref65">
        <label>65</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Achilonu</surname>
              <given-names>OJ</given-names>
            </name>
            <name name-style="western">
              <surname>Singh</surname>
              <given-names>E</given-names>
            </name>
            <name name-style="western">
              <surname>Nimako</surname>
              <given-names>G</given-names>
            </name>
            <name name-style="western">
              <surname>Eijkemans</surname>
              <given-names>RM</given-names>
            </name>
            <name name-style="western">
              <surname>Musenge</surname>
              <given-names>E</given-names>
            </name>
          </person-group>
          <article-title>Rule-based information extraction from free-text pathology reports reveals trends in South African female breast cancer molecular subtypes and Ki67 expression</article-title>
          <source>Biomed Res Int</source>
          <year>2022</year>
          <volume>2022</volume>
          <fpage>6157861</fpage>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://doi.org/10.1155/2022/6157861"/>
          </comment>
          <pub-id pub-id-type="doi">10.1155/2022/6157861</pub-id>
          <pub-id pub-id-type="medline">35355821</pub-id>
          <pub-id pub-id-type="pmcid">PMC8960023</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref66">
        <label>66</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Nia</surname>
              <given-names>ZM</given-names>
            </name>
            <name name-style="western">
              <surname>Asgary</surname>
              <given-names>A</given-names>
            </name>
            <name name-style="western">
              <surname>Bragazzi</surname>
              <given-names>N</given-names>
            </name>
            <name name-style="western">
              <surname>Mellado</surname>
              <given-names>B</given-names>
            </name>
            <name name-style="western">
              <surname>Orbinski</surname>
              <given-names>J</given-names>
            </name>
            <name name-style="western">
              <surname>Wu</surname>
              <given-names>J</given-names>
            </name>
            <name name-style="western">
              <surname>Kong</surname>
              <given-names>J</given-names>
            </name>
          </person-group>
          <article-title>Nowcasting unemployment rate during the COVID-19 pandemic using Twitter data: the case of South Africa</article-title>
          <source>Front Public Health</source>
          <year>2022</year>
          <volume>10</volume>
          <fpage>952363</fpage>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://europepmc.org/abstract/MED/36530702"/>
          </comment>
          <pub-id pub-id-type="doi">10.3389/fpubh.2022.952363</pub-id>
          <pub-id pub-id-type="medline">36530702</pub-id>
          <pub-id pub-id-type="pmcid">PMC9757491</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref67">
        <label>67</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Babington-Ashaye</surname>
              <given-names>A</given-names>
            </name>
            <name name-style="western">
              <surname>de Moerloose</surname>
              <given-names>P</given-names>
            </name>
            <name name-style="western">
              <surname>Diop</surname>
              <given-names>S</given-names>
            </name>
            <name name-style="western">
              <surname>Geissbuhler</surname>
              <given-names>A</given-names>
            </name>
          </person-group>
          <article-title>Design, development and usability of an educational AI chatbot for people with Haemophilia in Senegal</article-title>
          <source>Haemophilia</source>
          <year>2023</year>
          <month>07</month>
          <volume>29</volume>
          <issue>4</issue>
          <fpage>1063</fpage>
          <lpage>73</lpage>
          <pub-id pub-id-type="doi">10.1111/hae.14815</pub-id>
          <pub-id pub-id-type="medline">37347648</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref68">
        <label>68</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Cassim</surname>
              <given-names>N</given-names>
            </name>
            <name name-style="western">
              <surname>Mapundu</surname>
              <given-names>M</given-names>
            </name>
            <name name-style="western">
              <surname>Olago</surname>
              <given-names>V</given-names>
            </name>
            <name name-style="western">
              <surname>George</surname>
              <given-names>JA</given-names>
            </name>
            <name name-style="western">
              <surname>Glencross</surname>
              <given-names>DK</given-names>
            </name>
          </person-group>
          <article-title>Using big data techniques to improve prostate cancer reporting in the Gauteng province, South Africa</article-title>
          <source>Stud Health Technol Inform</source>
          <year>2019</year>
          <month>08</month>
          <day>21</day>
          <volume>264</volume>
          <fpage>1437</fpage>
          <lpage>8</lpage>
          <pub-id pub-id-type="doi">10.3233/SHTI190472</pub-id>
          <pub-id pub-id-type="medline">31438169</pub-id>
          <pub-id pub-id-type="pii">SHTI190472</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref69">
        <label>69</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Movassagh</surname>
              <given-names>M</given-names>
            </name>
            <name name-style="western">
              <surname>Bebell</surname>
              <given-names>LM</given-names>
            </name>
            <name name-style="western">
              <surname>Burgoine</surname>
              <given-names>K</given-names>
            </name>
            <name name-style="western">
              <surname>Hehnly</surname>
              <given-names>C</given-names>
            </name>
            <name name-style="western">
              <surname>Zhang</surname>
              <given-names>L</given-names>
            </name>
            <name name-style="western">
              <surname>Moran</surname>
              <given-names>K</given-names>
            </name>
            <name name-style="western">
              <surname>Sheldon</surname>
              <given-names>K</given-names>
            </name>
            <name name-style="western">
              <surname>Sinnar</surname>
              <given-names>SA</given-names>
            </name>
            <name name-style="western">
              <surname>Mbabazi-Kabachelor</surname>
              <given-names>E</given-names>
            </name>
            <name name-style="western">
              <surname>Kumbakumba</surname>
              <given-names>E</given-names>
            </name>
            <name name-style="western">
              <surname>Bazira</surname>
              <given-names>J</given-names>
            </name>
            <name name-style="western">
              <surname>Ochora</surname>
              <given-names>M</given-names>
            </name>
            <name name-style="western">
              <surname>Mulondo</surname>
              <given-names>R</given-names>
            </name>
            <name name-style="western">
              <surname>Nsubuga</surname>
              <given-names>BK</given-names>
            </name>
            <name name-style="western">
              <surname>Weeks</surname>
              <given-names>AD</given-names>
            </name>
            <name name-style="western">
              <surname>Gladstone</surname>
              <given-names>M</given-names>
            </name>
            <name name-style="western">
              <surname>Olupot-Olupot</surname>
              <given-names>P</given-names>
            </name>
            <name name-style="western">
              <surname>Ngonzi</surname>
              <given-names>J</given-names>
            </name>
            <name name-style="western">
              <surname>Roberts</surname>
              <given-names>DJ</given-names>
            </name>
            <name name-style="western">
              <surname>Meier</surname>
              <given-names>FA</given-names>
            </name>
            <name name-style="western">
              <surname>Irizarry</surname>
              <given-names>RA</given-names>
            </name>
            <name name-style="western">
              <surname>Broach</surname>
              <given-names>JR</given-names>
            </name>
            <name name-style="western">
              <surname>Schiff</surname>
              <given-names>SJ</given-names>
            </name>
            <name name-style="western">
              <surname>Paulson</surname>
              <given-names>JN</given-names>
            </name>
          </person-group>
          <article-title>Vaginal microbiome topic modeling of laboring Ugandan women with and without fever</article-title>
          <source>NPJ Biofilms Microbiomes</source>
          <year>2021</year>
          <month>09</month>
          <day>10</day>
          <volume>7</volume>
          <issue>1</issue>
          <fpage>75</fpage>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://doi.org/10.1038/s41522-021-00244-1"/>
          </comment>
          <pub-id pub-id-type="doi">10.1038/s41522-021-00244-1</pub-id>
          <pub-id pub-id-type="medline">34508087</pub-id>
          <pub-id pub-id-type="pii">10.1038/s41522-021-00244-1</pub-id>
          <pub-id pub-id-type="pmcid">PMC8433417</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref70">
        <label>70</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Mishra</surname>
              <given-names>A</given-names>
            </name>
          </person-group>
          <article-title>Chatbot in IsiXhosa for remote pre/post-natal care</article-title>
          <source>engrXiv. Preprint posted online July 18, 2019</source>
          <year>2019</year>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://engrxiv.org/preprint/view/601/1376"/>
          </comment>
          <pub-id pub-id-type="doi">10.31224/osf.io/jm54z</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref71">
        <label>71</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Green</surname>
              <given-names>EP</given-names>
            </name>
            <name name-style="western">
              <surname>Lai</surname>
              <given-names>Y</given-names>
            </name>
            <name name-style="western">
              <surname>Pearson</surname>
              <given-names>N</given-names>
            </name>
            <name name-style="western">
              <surname>Rajasekharan</surname>
              <given-names>S</given-names>
            </name>
            <name name-style="western">
              <surname>Rauws</surname>
              <given-names>M</given-names>
            </name>
            <name name-style="western">
              <surname>Joerin</surname>
              <given-names>A</given-names>
            </name>
            <name name-style="western">
              <surname>Kwobah</surname>
              <given-names>E</given-names>
            </name>
            <name name-style="western">
              <surname>Musyimi</surname>
              <given-names>C</given-names>
            </name>
            <name name-style="western">
              <surname>Jones</surname>
              <given-names>RM</given-names>
            </name>
            <name name-style="western">
              <surname>Bhat</surname>
              <given-names>C</given-names>
            </name>
            <name name-style="western">
              <surname>Mulinge</surname>
              <given-names>A</given-names>
            </name>
            <name name-style="western">
              <surname>Puffer</surname>
              <given-names>ES</given-names>
            </name>
          </person-group>
          <article-title>Expanding access to perinatal depression treatment in Kenya through automated psychological support: development and usability study</article-title>
          <source>JMIR Form Res</source>
          <year>2020</year>
          <month>10</month>
          <day>05</day>
          <volume>4</volume>
          <issue>10</issue>
          <fpage>e17895</fpage>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://formative.jmir.org/2020/10/e17895/"/>
          </comment>
          <pub-id pub-id-type="doi">10.2196/17895</pub-id>
          <pub-id pub-id-type="medline">33016883</pub-id>
          <pub-id pub-id-type="pii">v4i10e17895</pub-id>
          <pub-id pub-id-type="pmcid">PMC7573703</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref72">
        <label>72</label>
        <nlm-citation citation-type="confproc">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Mugoye</surname>
              <given-names>K</given-names>
            </name>
            <name name-style="western">
              <surname>Okoyo</surname>
              <given-names>H</given-names>
            </name>
            <name name-style="western">
              <surname>Mcoyowo</surname>
              <given-names>S</given-names>
            </name>
          </person-group>
          <article-title>Smart-bot technology: conversational agents role in maternal healthcare support</article-title>
          <source>Proceedings of the 2019 IST-Africa Week Conference</source>
          <year>2019</year>
          <conf-name>IST-Africa '19</conf-name>
          <conf-date>May 8-10, 2019</conf-date>
          <conf-loc>Nairobi, Kenya</conf-loc>
          <fpage>1</fpage>
          <lpage>7</lpage>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://ieeexplore.ieee.org/document/8764817"/>
          </comment>
          <pub-id pub-id-type="doi">10.23919/istafrica.2019.8764817</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref73">
        <label>73</label>
        <nlm-citation citation-type="confproc">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Sewunetie</surname>
              <given-names>W</given-names>
            </name>
            <name name-style="western">
              <surname>Beza</surname>
              <given-names>A</given-names>
            </name>
            <name name-style="western">
              <surname>Abebe</surname>
              <given-names>H</given-names>
            </name>
            <name name-style="western">
              <surname>Abuhay</surname>
              <given-names>TM</given-names>
            </name>
            <name name-style="western">
              <surname>Admass</surname>
              <given-names>W</given-names>
            </name>
            <name name-style="western">
              <surname>Hassen</surname>
              <given-names>H</given-names>
            </name>
            <name name-style="western">
              <surname>Haile</surname>
              <given-names>T</given-names>
            </name>
            <name name-style="western">
              <surname>Hailemariam</surname>
              <given-names>H</given-names>
            </name>
            <name name-style="western">
              <surname>Debebe</surname>
              <given-names>L</given-names>
            </name>
            <name name-style="western">
              <surname>Moges</surname>
              <given-names>N</given-names>
            </name>
          </person-group>
          <article-title>Large language models for sexual, reproductive, and maternal health rights</article-title>
          <source>Proceedings of the 2024 IEEE 12th International Conference on Healthcare Informatics</source>
          <year>2024</year>
          <conf-name>ICHI '24</conf-name>
          <conf-date>June 3-6, 2024</conf-date>
          <conf-loc>Orlando, FL</conf-loc>
          <fpage>568</fpage>
          <lpage>73</lpage>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://www.computer.org/csdl/proceedings-article/ichi/2024/837300a568/1ZCgQ4gMcwg"/>
          </comment>
          <pub-id pub-id-type="doi">10.1109/ichi61247.2024.00091</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref74">
        <label>74</label>
        <nlm-citation citation-type="confproc">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Arsevska</surname>
              <given-names>E</given-names>
            </name>
            <name name-style="western">
              <surname>Roche</surname>
              <given-names>M</given-names>
            </name>
            <name name-style="western">
              <surname>Falala</surname>
              <given-names>S</given-names>
            </name>
          </person-group>
          <article-title>Monitoring disease outbreak events on the web using text-mining approach and domain expert knowledge</article-title>
          <source>Proceedings of the 10th International Conference on Language Resources and Evaluation</source>
          <year>2016</year>
          <conf-name>LREC '16</conf-name>
          <conf-date>May 8-13, 2016</conf-date>
          <conf-loc>Portorož, Slovenia</conf-loc>
          <fpage>3407</fpage>
          <lpage>11</lpage>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://aclanthology.org/L16-1543.pdf"/>
          </comment>
        </nlm-citation>
      </ref>
      <ref id="ref75">
        <label>75</label>
        <nlm-citation citation-type="confproc">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Anastasopoulos</surname>
              <given-names>A</given-names>
            </name>
            <name name-style="western">
              <surname>Cattelan</surname>
              <given-names>A</given-names>
            </name>
            <name name-style="western">
              <surname>Dou</surname>
              <given-names>ZY</given-names>
            </name>
            <name name-style="western">
              <surname>Federico</surname>
              <given-names>M</given-names>
            </name>
            <name name-style="western">
              <surname>Federmann</surname>
              <given-names>C</given-names>
            </name>
            <name name-style="western">
              <surname>Genzel</surname>
              <given-names>D</given-names>
            </name>
            <name name-style="western">
              <surname>Guzmán</surname>
              <given-names>F</given-names>
            </name>
            <name name-style="western">
              <surname>Hu</surname>
              <given-names>J</given-names>
            </name>
            <name name-style="western">
              <surname>Hughes</surname>
              <given-names>M</given-names>
            </name>
            <name name-style="western">
              <surname>Koehn</surname>
              <given-names>P</given-names>
            </name>
          </person-group>
          <article-title>TICO-19: the translation initiative for COVID-19</article-title>
          <source>Proceedings of the 1st Workshop on NLP for COVID-19</source>
          <year>2020</year>
          <conf-name>EMNLP '20</conf-name>
          <conf-date>July 1-5, 2020</conf-date>
          <conf-loc>Virtual Event</conf-loc>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://aclanthology.org/2020.nlpcovid19-2.5.pdf"/>
          </comment>
          <pub-id pub-id-type="doi">10.18653/v1/2020.nlpcovid19-2.5</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref76">
        <label>76</label>
        <nlm-citation citation-type="confproc">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Kim</surname>
              <given-names>J</given-names>
            </name>
            <name name-style="western">
              <surname>Bak</surname>
              <given-names>BR</given-names>
            </name>
            <name name-style="western">
              <surname>Agrawal</surname>
              <given-names>A</given-names>
            </name>
            <name name-style="western">
              <surname>Wu</surname>
              <given-names>J</given-names>
            </name>
            <name name-style="western">
              <surname>Wirtz</surname>
              <given-names>V</given-names>
            </name>
            <name name-style="western">
              <surname>Hong</surname>
              <given-names>T</given-names>
            </name>
            <name name-style="western">
              <surname>Wijaya</surname>
              <given-names>D</given-names>
            </name>
          </person-group>
          <article-title>COVID-19 vaccine misinformation in middle income countries</article-title>
          <source>Proceedings of the 2023 Conference on Empirical Methods in Natural Language Processing</source>
          <year>2023</year>
          <conf-name>EMNLP '23</conf-name>
          <conf-date>December 6-10, 2023</conf-date>
          <conf-loc>Singapore, Singapore</conf-loc>
          <fpage>3903</fpage>
          <lpage>15</lpage>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://aclanthology.org/2023.emnlp-main.237.pdf"/>
          </comment>
          <pub-id pub-id-type="doi">10.18653/v1/2023.emnlp-main.237</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref77">
        <label>77</label>
        <nlm-citation citation-type="confproc">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Al-Thubaity</surname>
              <given-names>A</given-names>
            </name>
            <name name-style="western">
              <surname>Alkhereyf</surname>
              <given-names>S</given-names>
            </name>
            <name name-style="western">
              <surname>Bahanshal</surname>
              <given-names>AO</given-names>
            </name>
          </person-group>
          <article-title>AraNPCC: the Arabic newspaper COVID-19 corpus</article-title>
          <source>Proceedinsg of the 5th Workshop on Open-Source Arabic Corpora and Processing Tools with Shared Tasks on Qur'an QA and Fine-Grained Hate Speech Detection</source>
          <year>2022</year>
          <conf-name>OSACT '22</conf-name>
          <conf-date>June 12-15, 2022</conf-date>
          <conf-loc>Marseille, France</conf-loc>
          <fpage>32</fpage>
          <lpage>40</lpage>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://aclanthology.org/2022.osact-1.4.pdf"/>
          </comment>
          <pub-id pub-id-type="doi">10.18653/v1/2022.wanlp-1.1</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref78">
        <label>78</label>
        <nlm-citation citation-type="confproc">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Oyebode</surname>
              <given-names>O</given-names>
            </name>
            <name name-style="western">
              <surname>Orji</surname>
              <given-names>R</given-names>
            </name>
          </person-group>
          <article-title>Detecting factors responsible for diabetes prevalence in Nigeria using social media and machine learning</article-title>
          <source>Proceedings of the 15th International Conference on Network and Service Management</source>
          <year>2019</year>
          <conf-name>CNSM '19</conf-name>
          <conf-date>October 21-25, 2019</conf-date>
          <conf-loc>Halifax, NS</conf-loc>
          <fpage>1</fpage>
          <lpage>4</lpage>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://ieeexplore.ieee.org/document/9012679"/>
          </comment>
          <pub-id pub-id-type="doi">10.23919/cnsm46954.2019.9012679</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref79">
        <label>79</label>
        <nlm-citation citation-type="confproc">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Krishnamoorthy</surname>
              <given-names>M</given-names>
            </name>
            <name name-style="western">
              <surname>Hameed</surname>
              <given-names>MS</given-names>
            </name>
            <name name-style="western">
              <surname>Kopinski</surname>
              <given-names>T</given-names>
            </name>
            <name name-style="western">
              <surname>Schwung</surname>
              <given-names>A</given-names>
            </name>
          </person-group>
          <article-title>Disease prediction based on individual's medical history using CNN</article-title>
          <source>Proceedings of the 20th IEEE International Conference on Machine Learning and Applications</source>
          <year>2021</year>
          <conf-name>ICMLA '21</conf-name>
          <conf-date>December 13-16, 2021</conf-date>
          <conf-loc>Pasadena, CA</conf-loc>
          <fpage>89</fpage>
          <lpage>94</lpage>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://ieeexplore.ieee.org/document/9680243"/>
          </comment>
          <pub-id pub-id-type="doi">10.1109/icmla52953.2021.00022</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref80">
        <label>80</label>
        <nlm-citation citation-type="confproc">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Mubarak</surname>
              <given-names>H</given-names>
            </name>
            <name name-style="western">
              <surname>Hassan</surname>
              <given-names>S</given-names>
            </name>
            <name name-style="western">
              <surname>Chowdhury</surname>
              <given-names>SA</given-names>
            </name>
            <name name-style="western">
              <surname>Alam</surname>
              <given-names>F</given-names>
            </name>
          </person-group>
          <article-title>ArCovidVac: analyzing Arabic tweets about COVID-19 vaccination</article-title>
          <source>Proceedings of the 13th Language Resources and Evaluation Conference</source>
          <year>2022</year>
          <conf-name>LREC '22</conf-name>
          <conf-date>June 20-25, 2022</conf-date>
          <conf-loc>Marseille, France</conf-loc>
          <fpage>3220</fpage>
          <lpage>30</lpage>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://aclanthology.org/2022.lrec-1.344.pdf"/>
          </comment>
        </nlm-citation>
      </ref>
      <ref id="ref81">
        <label>81</label>
        <nlm-citation citation-type="confproc">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Yuan</surname>
              <given-names>M</given-names>
            </name>
            <name name-style="western">
              <surname>Zhang</surname>
              <given-names>M</given-names>
            </name>
            <name name-style="western">
              <surname>van Durme</surname>
              <given-names>B</given-names>
            </name>
            <name name-style="western">
              <surname>Findlater</surname>
              <given-names>L</given-names>
            </name>
            <name name-style="western">
              <surname>Boyd-Graber</surname>
              <given-names>J</given-names>
            </name>
          </person-group>
          <article-title>Interactive refinement of cross-lingual word embeddings</article-title>
          <source>Proceedings of the 2020 Conference on Empirical Methods in Natural Language Processing</source>
          <year>2020</year>
          <conf-name>EMNLP '20</conf-name>
          <conf-date>November 16-20, 2020</conf-date>
          <conf-loc>Virtual Event</conf-loc>
          <fpage>5984</fpage>
          <lpage>96</lpage>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://aclanthology.org/2020.emnlp-main.482.pdf"/>
          </comment>
          <pub-id pub-id-type="doi">10.18653/v1/2020.emnlp-main.482</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref82">
        <label>82</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Yadav</surname>
              <given-names>A</given-names>
            </name>
            <name name-style="western">
              <surname>Vishwakarma</surname>
              <given-names>DK</given-names>
            </name>
          </person-group>
          <article-title>A language-independent network to analyze the impact of COVID-19 on the world via sentiment analysis</article-title>
          <source>ACM Trans Internet Technol</source>
          <year>2021</year>
          <month>09</month>
          <day>14</day>
          <volume>22</volume>
          <issue>1</issue>
          <fpage>1</fpage>
          <lpage>30</lpage>
          <pub-id pub-id-type="doi">10.1145/3475867</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref83">
        <label>83</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Verma</surname>
              <given-names>M</given-names>
            </name>
            <name name-style="western">
              <surname>Moudgil</surname>
              <given-names>N</given-names>
            </name>
            <name name-style="western">
              <surname>Goel</surname>
              <given-names>G</given-names>
            </name>
            <name name-style="western">
              <surname>Pardeshi</surname>
              <given-names>P</given-names>
            </name>
            <name name-style="western">
              <surname>Joseph</surname>
              <given-names>J</given-names>
            </name>
            <name name-style="western">
              <surname>Kumar</surname>
              <given-names>N</given-names>
            </name>
            <name name-style="western">
              <surname>Singh</surname>
              <given-names>K</given-names>
            </name>
            <name name-style="western">
              <surname>Singh</surname>
              <given-names>H</given-names>
            </name>
            <name name-style="western">
              <surname>Kodali</surname>
              <given-names>P</given-names>
            </name>
          </person-group>
          <article-title>People's perceptions on COVID-19 vaccination: an analysis of twitter discourse from four countries</article-title>
          <source>Sci Rep</source>
          <year>2023</year>
          <month>08</month>
          <day>31</day>
          <volume>13</volume>
          <issue>1</issue>
          <fpage>14281</fpage>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://doi.org/10.1038/s41598-023-41478-7"/>
          </comment>
          <pub-id pub-id-type="doi">10.1038/s41598-023-41478-7</pub-id>
          <pub-id pub-id-type="medline">37653001</pub-id>
          <pub-id pub-id-type="pii">10.1038/s41598-023-41478-7</pub-id>
          <pub-id pub-id-type="pmcid">PMC10471683</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref84">
        <label>84</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Marcus</surname>
              <given-names>JL</given-names>
            </name>
            <name name-style="western">
              <surname>Sewell</surname>
              <given-names>WC</given-names>
            </name>
            <name name-style="western">
              <surname>Balzer</surname>
              <given-names>LB</given-names>
            </name>
            <name name-style="western">
              <surname>Krakower</surname>
              <given-names>DS</given-names>
            </name>
          </person-group>
          <article-title>Artificial intelligence and machine learning for HIV prevention: emerging approaches to ending the epidemic</article-title>
          <source>Curr HIV/AIDS Rep</source>
          <year>2020</year>
          <month>06</month>
          <volume>17</volume>
          <issue>3</issue>
          <fpage>171</fpage>
          <lpage>9</lpage>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://europepmc.org/abstract/MED/32347446"/>
          </comment>
          <pub-id pub-id-type="doi">10.1007/s11904-020-00490-6</pub-id>
          <pub-id pub-id-type="medline">32347446</pub-id>
          <pub-id pub-id-type="pii">10.1007/s11904-020-00490-6</pub-id>
          <pub-id pub-id-type="pmcid">PMC7260108</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref85">
        <label>85</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Thiabaud</surname>
              <given-names>A</given-names>
            </name>
            <name name-style="western">
              <surname>Triulzi</surname>
              <given-names>I</given-names>
            </name>
            <name name-style="western">
              <surname>Orel</surname>
              <given-names>E</given-names>
            </name>
            <name name-style="western">
              <surname>Tal</surname>
              <given-names>K</given-names>
            </name>
            <name name-style="western">
              <surname>Keiser</surname>
              <given-names>O</given-names>
            </name>
          </person-group>
          <article-title>Social, behavioral, and cultural factors of HIV in Malawi: semi-automated systematic review</article-title>
          <source>J Med Internet Res</source>
          <year>2020</year>
          <month>08</month>
          <day>14</day>
          <volume>22</volume>
          <issue>8</issue>
          <fpage>e18747</fpage>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://boris.unibe.ch/id/eprint/146101"/>
          </comment>
          <pub-id pub-id-type="doi">10.2196/18747</pub-id>
          <pub-id pub-id-type="medline">32795992</pub-id>
          <pub-id pub-id-type="pii">v22i8e18747</pub-id>
          <pub-id pub-id-type="pmcid">PMC7455873</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref86">
        <label>86</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Kiyasseh</surname>
              <given-names>D</given-names>
            </name>
            <name name-style="western">
              <surname>Zhu</surname>
              <given-names>T</given-names>
            </name>
            <name name-style="western">
              <surname>Clifton</surname>
              <given-names>D</given-names>
            </name>
          </person-group>
          <article-title>The promise of clinical decision support systems targetting low-resource settings</article-title>
          <source>IEEE Rev Biomed Eng</source>
          <year>2022</year>
          <volume>15</volume>
          <fpage>354</fpage>
          <lpage>71</lpage>
          <pub-id pub-id-type="doi">10.1109/rbme.2020.3017868</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref87">
        <label>87</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Alshalan</surname>
              <given-names>R</given-names>
            </name>
            <name name-style="western">
              <surname>Al-Khalifa</surname>
              <given-names>H</given-names>
            </name>
            <name name-style="western">
              <surname>Alsaeed</surname>
              <given-names>D</given-names>
            </name>
            <name name-style="western">
              <surname>Al-Baity</surname>
              <given-names>H</given-names>
            </name>
            <name name-style="western">
              <surname>Alshalan</surname>
              <given-names>S</given-names>
            </name>
          </person-group>
          <article-title>Detection of hate speech in COVID-19-related tweets in the Arab region: deep learning and topic modeling approach</article-title>
          <source>J Med Internet Res</source>
          <year>2020</year>
          <month>12</month>
          <day>08</day>
          <volume>22</volume>
          <issue>12</issue>
          <fpage>e22609</fpage>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://www.jmir.org/2020/12/e22609/"/>
          </comment>
          <pub-id pub-id-type="doi">10.2196/22609</pub-id>
          <pub-id pub-id-type="medline">33207310</pub-id>
          <pub-id pub-id-type="pii">v22i12e22609</pub-id>
          <pub-id pub-id-type="pmcid">PMC7725497</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref88">
        <label>88</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Martin</surname>
              <given-names>S</given-names>
            </name>
            <name name-style="western">
              <surname>Kilich</surname>
              <given-names>E</given-names>
            </name>
            <name name-style="western">
              <surname>Dada</surname>
              <given-names>S</given-names>
            </name>
            <name name-style="western">
              <surname>Kummervold</surname>
              <given-names>PE</given-names>
            </name>
            <name name-style="western">
              <surname>Denny</surname>
              <given-names>C</given-names>
            </name>
            <name name-style="western">
              <surname>Paterson</surname>
              <given-names>P</given-names>
            </name>
            <name name-style="western">
              <surname>Larson</surname>
              <given-names>HJ</given-names>
            </name>
          </person-group>
          <article-title>"Vaccines for pregnant women…?! absurd" - mapping maternal vaccination discourse and stance on social media over six months</article-title>
          <source>Vaccine</source>
          <year>2020</year>
          <month>09</month>
          <day>29</day>
          <volume>38</volume>
          <issue>42</issue>
          <fpage>6627</fpage>
          <lpage>37</lpage>
          <pub-id pub-id-type="doi">10.1016/j.vaccine.2020.07.072</pub-id>
          <pub-id pub-id-type="medline">32788136</pub-id>
          <pub-id pub-id-type="pii">S0264-410X(20)31016-1</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref89">
        <label>89</label>
        <nlm-citation citation-type="web">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Rosenzweig</surname>
              <given-names>LR</given-names>
            </name>
            <name name-style="western">
              <surname>Offer-Westort</surname>
              <given-names>M</given-names>
            </name>
          </person-group>
          <article-title>Testing interventions to address vaccine hesitancy on Facebook in East and West Africa</article-title>
          <source>Open Science Framework</source>
          <year>2022</year>
          <month>01</month>
          <day>07</day>
          <access-date>2024-11-10</access-date>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://osf.io/m4e6d/">https://osf.io/m4e6d/</ext-link>
          </comment>
        </nlm-citation>
      </ref>
      <ref id="ref90">
        <label>90</label>
        <nlm-citation citation-type="confproc">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Keet</surname>
              <given-names>CM</given-names>
            </name>
          </person-group>
          <article-title>Natural language generation requirements for social robots in sub-Saharan Africa</article-title>
          <source>Proceedings of the 2021 IST-Africa Conference</source>
          <year>2021</year>
          <conf-name>IST-Africa '21</conf-name>
          <conf-date>May 10-14, 2021</conf-date>
          <conf-loc>Cape Town, South Africa</conf-loc>
          <fpage>1</fpage>
          <lpage>8</lpage>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://ieeexplore.ieee.org/document/9576993"/>
          </comment>
        </nlm-citation>
      </ref>
      <ref id="ref91">
        <label>91</label>
        <nlm-citation citation-type="web">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Daniel</surname>
              <given-names>JE</given-names>
            </name>
          </person-group>
          <article-title>Applications of natural language processing for low-resource languages in the healthcare domain</article-title>
          <source>Faculty of Science at Stellenbosch University</source>
          <year>2020</year>
          <month>03</month>
          <access-date>2024-11-10</access-date>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://scholar.sun.ac.za/server/api/core/bitstreams/7a1beb3b-4859-43d2-b1c8-54fc80811e7d/content">https://scholar.sun.ac.za/server/api/core/bitstreams/7a1beb3b-4859-43d2-b1c8-54fc80811e7d/content</ext-link>
          </comment>
        </nlm-citation>
      </ref>
      <ref id="ref92">
        <label>92</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Manaka</surname>
              <given-names>T</given-names>
            </name>
            <name name-style="western">
              <surname>Zyl</surname>
              <given-names>TV</given-names>
            </name>
            <name name-style="western">
              <surname>Kar</surname>
              <given-names>D</given-names>
            </name>
            <name name-style="western">
              <surname>Wade</surname>
              <given-names>A</given-names>
            </name>
          </person-group>
          <article-title>Multi-step transfer learning in natural language processing for the health domain</article-title>
          <source>Neural Process Lett</source>
          <year>2024</year>
          <month>05</month>
          <day>20</day>
          <volume>56</volume>
          <issue>3</issue>
          <fpage>177</fpage>
          <pub-id pub-id-type="doi">10.1007/S11063-024-11526-Y</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref93">
        <label>93</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Gbashi</surname>
              <given-names>S</given-names>
            </name>
            <name name-style="western">
              <surname>Adebo</surname>
              <given-names>OA</given-names>
            </name>
            <name name-style="western">
              <surname>Doorsamy</surname>
              <given-names>W</given-names>
            </name>
            <name name-style="western">
              <surname>Njobeh</surname>
              <given-names>PB</given-names>
            </name>
          </person-group>
          <article-title>Systematic delineation of media polarity on COVID-19 vaccines in Africa: computational linguistic modeling study</article-title>
          <source>JMIR Med Inform</source>
          <year>2021</year>
          <month>03</month>
          <day>16</day>
          <volume>9</volume>
          <issue>3</issue>
          <fpage>e22916</fpage>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://medinform.jmir.org/2021/3/e22916/"/>
          </comment>
          <pub-id pub-id-type="doi">10.2196/22916</pub-id>
          <pub-id pub-id-type="medline">33667172</pub-id>
          <pub-id pub-id-type="pii">v9i3e22916</pub-id>
          <pub-id pub-id-type="pmcid">PMC7968413</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref94">
        <label>94</label>
        <nlm-citation citation-type="book">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Stone</surname>
              <given-names>K</given-names>
            </name>
            <name name-style="western">
              <surname>Ojo</surname>
              <given-names>S</given-names>
            </name>
            <name name-style="western">
              <surname>Tu</surname>
              <given-names>C</given-names>
            </name>
          </person-group>
          <person-group person-group-type="editor">
            <name name-style="western">
              <surname>Nagar</surname>
              <given-names>AK</given-names>
            </name>
            <name name-style="western">
              <surname>Jat</surname>
              <given-names>DS</given-names>
            </name>
            <name name-style="western">
              <surname>Mishra</surname>
              <given-names>DK</given-names>
            </name>
            <name name-style="western">
              <surname>Joshi</surname>
              <given-names>A</given-names>
            </name>
          </person-group>
          <article-title>Natural language processing of South African online question-answering health forum HIV and AIDS dataset using topic modeling</article-title>
          <source>Intelligent Sustainable Systems: Selected Papers of WorldS4 2022, Volume 2</source>
          <year>2022</year>
          <publisher-loc>Cham, Switzerland</publisher-loc>
          <publisher-name>Springer</publisher-name>
          <fpage>387</fpage>
          <lpage>95</lpage>
        </nlm-citation>
      </ref>
      <ref id="ref95">
        <label>95</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Olatunji</surname>
              <given-names>T</given-names>
            </name>
            <name name-style="western">
              <surname>Afonja</surname>
              <given-names>T</given-names>
            </name>
            <name name-style="western">
              <surname>Yadavalli</surname>
              <given-names>A</given-names>
            </name>
            <name name-style="western">
              <surname>Emezue</surname>
              <given-names>CC</given-names>
            </name>
            <name name-style="western">
              <surname>Singh</surname>
              <given-names>S</given-names>
            </name>
            <name name-style="western">
              <surname>Dossou</surname>
              <given-names>BF</given-names>
            </name>
            <name name-style="western">
              <surname>Osuchukwu</surname>
              <given-names>J</given-names>
            </name>
            <name name-style="western">
              <surname>Osei</surname>
              <given-names>S</given-names>
            </name>
            <name name-style="western">
              <surname>Tonja</surname>
              <given-names>A</given-names>
            </name>
            <name name-style="western">
              <surname>Etori</surname>
              <given-names>N</given-names>
            </name>
            <name name-style="western">
              <surname>Mbataku</surname>
              <given-names>C</given-names>
            </name>
          </person-group>
          <article-title>AfriSpeech-200: pan-African accented speech dataset for clinical and general domain ASR</article-title>
          <source>Trans Assoc Comput Linguist</source>
          <year>2023</year>
          <volume>11</volume>
          <fpage>1669</fpage>
          <lpage>85</lpage>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://direct.mit.edu/tacl/article/doi/10.1162/tacl_a_00627/118796/AfriSpeech-200-Pan-African-Accented-Speech-Dataset"/>
          </comment>
          <pub-id pub-id-type="doi">10.1162/tacl_a_00627</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref96">
        <label>96</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Tresner-Kirsch</surname>
              <given-names>D</given-names>
            </name>
            <name name-style="western">
              <surname>Yinka-Banjo</surname>
              <given-names>C</given-names>
            </name>
            <name name-style="western">
              <surname>Akinyemi</surname>
              <given-names>M</given-names>
            </name>
            <name name-style="western">
              <surname>Ajayi</surname>
              <given-names>O</given-names>
            </name>
          </person-group>
          <article-title>Auditing natural language processing for gender equality in sub-Saharan African healthcare systems: framework development and evaluation</article-title>
          <source>JMIRP. Preprint posted online August 18, 2023</source>
          <year>2023</year>
          <month>08</month>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://preprints.jmir.org/preprint/51954"/>
          </comment>
          <pub-id pub-id-type="doi">10.2196/preprints.51954</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref97">
        <label>97</label>
        <nlm-citation citation-type="confproc">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Oyebode</surname>
              <given-names>O</given-names>
            </name>
            <name name-style="western">
              <surname>Orji</surname>
              <given-names>R</given-names>
            </name>
          </person-group>
          <article-title>Likita: a medical chatbot to improve healthcare delivery in Africa</article-title>
          <source>Proceedings of the 2018 CHI Conference on Human Factors in Computing Systems</source>
          <year>2018</year>
          <conf-name>CHI '18</conf-name>
          <conf-date>April 21-26, 2018</conf-date>
          <conf-loc>Montreal, QC</conf-loc>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://www.hcixb.org/papers_2018/hcixb18-final-22.pdf"/>
          </comment>
        </nlm-citation>
      </ref>
      <ref id="ref98">
        <label>98</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Olaleye</surname>
              <given-names>TO</given-names>
            </name>
          </person-group>
          <article-title>Opinion mining analytics for spotting omicron fear-stimuli using REPTree classifier and natural language processing</article-title>
          <source>IJRASET</source>
          <year>2022</year>
          <month>1</month>
          <day>31</day>
          <volume>10</volume>
          <issue>1</issue>
          <fpage>995</fpage>
          <lpage>1005</lpage>
          <pub-id pub-id-type="doi">10.22214/ijraset.2022.39903</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref99">
        <label>99</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Magassouba</surname>
              <given-names>AS</given-names>
            </name>
            <name name-style="western">
              <surname>Sylla</surname>
              <given-names>Y</given-names>
            </name>
            <name name-style="western">
              <surname>Toure</surname>
              <given-names>AT</given-names>
            </name>
            <name name-style="western">
              <surname>Leno</surname>
              <given-names>NN</given-names>
            </name>
            <name name-style="western">
              <surname>Diallo</surname>
              <given-names>DB</given-names>
            </name>
            <name name-style="western">
              <surname>Camara</surname>
              <given-names>G</given-names>
            </name>
            <name name-style="western">
              <surname>Nabé</surname>
              <given-names>BA</given-names>
            </name>
            <name name-style="western">
              <surname>Diallo</surname>
              <given-names>DM</given-names>
            </name>
            <name name-style="western">
              <surname>Afe</surname>
              <given-names>AJ</given-names>
            </name>
            <name name-style="western">
              <surname>Diallo</surname>
              <given-names>OO</given-names>
            </name>
          </person-group>
          <article-title>A mixed cross-sectional study with natural language processing analysis on computer literacy and access among healthcare workers in Guinea</article-title>
          <source>J Health Inform Dev Ctries</source>
          <year>2023</year>
          <volume>17</volume>
          <issue>02</issue>
          <fpage>1</fpage>
          <lpage>14</lpage>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://jhidc.org/index.php/jhidc/article/view/396/370"/>
          </comment>
          <pub-id pub-id-type="doi">10.21203/rs.3.rs-122687/v1</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref100">
        <label>100</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Lester</surname>
              <given-names>RT</given-names>
            </name>
            <name name-style="western">
              <surname>Manson</surname>
              <given-names>M</given-names>
            </name>
            <name name-style="western">
              <surname>Semakula</surname>
              <given-names>M</given-names>
            </name>
            <name name-style="western">
              <surname>Jang</surname>
              <given-names>H</given-names>
            </name>
            <name name-style="western">
              <surname>Mugabo</surname>
              <given-names>H</given-names>
            </name>
            <name name-style="western">
              <surname>Magzari</surname>
              <given-names>A</given-names>
            </name>
            <name name-style="western">
              <surname>Blackmer</surname>
              <given-names>JM</given-names>
            </name>
            <name name-style="western">
              <surname>Fattah</surname>
              <given-names>F</given-names>
            </name>
            <name name-style="western">
              <surname>Niyonsenga</surname>
              <given-names>SP</given-names>
            </name>
            <name name-style="western">
              <surname>Rwagasore</surname>
              <given-names>E</given-names>
            </name>
            <name name-style="western">
              <surname>Ruranga</surname>
              <given-names>C</given-names>
            </name>
            <name name-style="western">
              <surname>Remera</surname>
              <given-names>E</given-names>
            </name>
            <name name-style="western">
              <surname>Ngabonziza</surname>
              <given-names>JC</given-names>
            </name>
            <name name-style="western">
              <surname>Carenini</surname>
              <given-names>G</given-names>
            </name>
            <name name-style="western">
              <surname>Nsanzimana</surname>
              <given-names>S</given-names>
            </name>
          </person-group>
          <article-title>Natural language processing to evaluate texting conversations between patients and healthcare providers during COVID-19 home-based care in Rwanda at scale</article-title>
          <source>PLOS Digit Health</source>
          <year>2025</year>
          <month>01</month>
          <volume>4</volume>
          <issue>1</issue>
          <fpage>e0000625</fpage>
          <pub-id pub-id-type="doi">10.1371/journal.pdig.0000625</pub-id>
          <pub-id pub-id-type="medline">39813181</pub-id>
          <pub-id pub-id-type="pii">PDIG-D-24-00364</pub-id>
          <pub-id pub-id-type="pmcid">PMC11734906</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref101">
        <label>101</label>
        <nlm-citation citation-type="web">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Disrupt</surname>
              <given-names>A</given-names>
            </name>
          </person-group>
          <article-title>Kenya’s SophieBot selected for Merck Nairobi accelerator</article-title>
          <source>Disrupt Africa</source>
          <year>2017</year>
          <access-date>2024-11-06</access-date>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://disruptafrica.com/2017/09/22/kenyas-sophiebot-selected-for-merck-nairobi-accelerator/">https://disruptafrica.com/2017/09/22/kenyas-sophiebot-selected-for-merck-nairobi-accelerator/</ext-link>
          </comment>
        </nlm-citation>
      </ref>
      <ref id="ref102">
        <label>102</label>
        <nlm-citation citation-type="web">
          <article-title>We use AI to support and optimize health decisions</article-title>
          <source>ElsaHealth</source>
          <access-date>2024-11-06</access-date>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://www.elsa.health/">https://www.elsa.health/</ext-link>
          </comment>
        </nlm-citation>
      </ref>
      <ref id="ref103">
        <label>103</label>
        <nlm-citation citation-type="web">
          <article-title>Mbaza AI chatbot</article-title>
          <source>Digital Umuganda</source>
          <access-date>2024-11-06</access-date>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://digitalumuganda.com/chatbot/">https://digitalumuganda.com/chatbot/</ext-link>
          </comment>
        </nlm-citation>
      </ref>
      <ref id="ref104">
        <label>104</label>
        <nlm-citation citation-type="web">
          <article-title>Jacaranda launches open-source LLM in five African languages</article-title>
          <source>Jacaranda Health</source>
          <access-date>2024-11-06</access-date>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://jacarandahealth.org/jacaranda-launches-open-source-llm-in-five-african-languages/">https://jacarandahealth.org/jacaranda-launches-open-source-llm-in-five-african-languages/</ext-link>
          </comment>
        </nlm-citation>
      </ref>
      <ref id="ref105">
        <label>105</label>
        <nlm-citation citation-type="web">
          <article-title>Aurum Institute Ghana receives grand challenges grant for catalyzing equitable artificial intelligence (AI) use</article-title>
          <source>Aurum Institute</source>
          <access-date>2024-11-06</access-date>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://www.auruminstitute.org/component/content/article/45-press-releases/772-aurum-institute-ghana-receives-grand-challenges-grant-for-catalyzing-equitable-artificial-intelligence-ai-use?Itemid=101">https://www.auruminstitute.org/component/content/article/45-press-releases/772-aurum-institute-ghana-receives-grand-challenges-grant-for-catalyzing-equitable-artificial-intelligence-ai-use?Itemid=101</ext-link>
          </comment>
        </nlm-citation>
      </ref>
      <ref id="ref106">
        <label>106</label>
        <nlm-citation citation-type="web">
          <article-title>The largest study on LLMs in African healthcare</article-title>
          <source>AfriMedQA</source>
          <access-date>2024-11-06</access-date>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://afrimedqa.com/">https://afrimedqa.com/</ext-link>
          </comment>
        </nlm-citation>
      </ref>
      <ref id="ref107">
        <label>107</label>
        <nlm-citation citation-type="web">
          <article-title>Ada supporting mothers in South Africa</article-title>
          <source>Ada Health GmbH</source>
          <year>2023</year>
          <access-date>2024-11-06</access-date>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://ada.com/press/230905-ada-supporting-mothers-in-southafrica/">https://ada.com/press/230905-ada-supporting-mothers-in-southafrica/</ext-link>
          </comment>
        </nlm-citation>
      </ref>
      <ref id="ref108">
        <label>108</label>
        <nlm-citation citation-type="web">
          <article-title>World's first AI health guidance app in Swahili</article-title>
          <source>Ada Health GmbH</source>
          <access-date>2024-11-06</access-date>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://ada.com/press/191119-worlds-first-ai-health-guidance-app-in-swahili/">https://ada.com/press/191119-worlds-first-ai-health-guidance-app-in-swahili/</ext-link>
          </comment>
        </nlm-citation>
      </ref>
      <ref id="ref109">
        <label>109</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Tricco</surname>
              <given-names>AC</given-names>
            </name>
            <name name-style="western">
              <surname>Lillie</surname>
              <given-names>E</given-names>
            </name>
            <name name-style="western">
              <surname>Zarin</surname>
              <given-names>W</given-names>
            </name>
            <name name-style="western">
              <surname>O'Brien</surname>
              <given-names>KK</given-names>
            </name>
            <name name-style="western">
              <surname>Colquhoun</surname>
              <given-names>H</given-names>
            </name>
            <name name-style="western">
              <surname>Levac</surname>
              <given-names>D</given-names>
            </name>
            <name name-style="western">
              <surname>Moher</surname>
              <given-names>D</given-names>
            </name>
            <name name-style="western">
              <surname>Peters</surname>
              <given-names>MD</given-names>
            </name>
            <name name-style="western">
              <surname>Horsley</surname>
              <given-names>T</given-names>
            </name>
            <name name-style="western">
              <surname>Weeks</surname>
              <given-names>L</given-names>
            </name>
            <name name-style="western">
              <surname>Hempel</surname>
              <given-names>S</given-names>
            </name>
            <name name-style="western">
              <surname>Akl</surname>
              <given-names>EA</given-names>
            </name>
            <name name-style="western">
              <surname>Chang</surname>
              <given-names>C</given-names>
            </name>
            <name name-style="western">
              <surname>McGowan</surname>
              <given-names>J</given-names>
            </name>
            <name name-style="western">
              <surname>Stewart</surname>
              <given-names>L</given-names>
            </name>
            <name name-style="western">
              <surname>Hartling</surname>
              <given-names>L</given-names>
            </name>
            <name name-style="western">
              <surname>Aldcroft</surname>
              <given-names>A</given-names>
            </name>
            <name name-style="western">
              <surname>Wilson</surname>
              <given-names>MG</given-names>
            </name>
            <name name-style="western">
              <surname>Garritty</surname>
              <given-names>C</given-names>
            </name>
            <name name-style="western">
              <surname>Lewin</surname>
              <given-names>S</given-names>
            </name>
            <name name-style="western">
              <surname>Godfrey</surname>
              <given-names>CM</given-names>
            </name>
            <name name-style="western">
              <surname>Macdonald</surname>
              <given-names>MT</given-names>
            </name>
            <name name-style="western">
              <surname>Langlois</surname>
              <given-names>EV</given-names>
            </name>
            <name name-style="western">
              <surname>Soares-Weiser</surname>
              <given-names>K</given-names>
            </name>
            <name name-style="western">
              <surname>Moriarty</surname>
              <given-names>J</given-names>
            </name>
            <name name-style="western">
              <surname>Clifford</surname>
              <given-names>T</given-names>
            </name>
            <name name-style="western">
              <surname>Tunçalp</surname>
              <given-names>Ö</given-names>
            </name>
            <name name-style="western">
              <surname>Straus</surname>
              <given-names>SE</given-names>
            </name>
          </person-group>
          <article-title>PRISMA extension for scoping reviews (PRISMA-ScR): checklist and explanation</article-title>
          <source>Ann Intern Med</source>
          <year>2018</year>
          <month>10</month>
          <day>02</day>
          <volume>169</volume>
          <issue>7</issue>
          <fpage>467</fpage>
          <lpage>73</lpage>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://www.acpjournals.org/doi/abs/10.7326/M18-0850?url_ver=Z39.88-2003&amp;rfr_id=ori:rid:crossref.org&amp;rfr_dat=cr_pub  0pubmed"/>
          </comment>
          <pub-id pub-id-type="doi">10.7326/M18-0850</pub-id>
          <pub-id pub-id-type="medline">30178033</pub-id>
          <pub-id pub-id-type="pii">2700389</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref110">
        <label>110</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Hu</surname>
              <given-names>S</given-names>
            </name>
            <name name-style="western">
              <surname>Oppong</surname>
              <given-names>A</given-names>
            </name>
            <name name-style="western">
              <surname>Mogo</surname>
              <given-names>E</given-names>
            </name>
            <name name-style="western">
              <surname>Barford</surname>
              <given-names>A</given-names>
            </name>
            <name name-style="western">
              <surname>Occhini</surname>
              <given-names>G</given-names>
            </name>
            <name name-style="western">
              <surname>Collins</surname>
              <given-names>C</given-names>
            </name>
            <name name-style="western">
              <surname>Korhonen</surname>
              <given-names>A</given-names>
            </name>
          </person-group>
          <article-title>Review protocol: a scoping review of natural language processing technologies for public health in Africa</article-title>
          <source>medRxiv. Preprint posted online July 3, 2024</source>
          <year>2024</year>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://www.medrxiv.org/content/10.1101/2024.07.02.24309815v1"/>
          </comment>
          <pub-id pub-id-type="doi">10.1101/2024.07.02.24309815</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref111">
        <label>111</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Laranjo</surname>
              <given-names>L</given-names>
            </name>
            <name name-style="western">
              <surname>Dunn</surname>
              <given-names>AG</given-names>
            </name>
            <name name-style="western">
              <surname>Tong</surname>
              <given-names>HL</given-names>
            </name>
            <name name-style="western">
              <surname>Kocaballi</surname>
              <given-names>AB</given-names>
            </name>
            <name name-style="western">
              <surname>Chen</surname>
              <given-names>J</given-names>
            </name>
            <name name-style="western">
              <surname>Bashir</surname>
              <given-names>R</given-names>
            </name>
            <name name-style="western">
              <surname>Surian</surname>
              <given-names>D</given-names>
            </name>
            <name name-style="western">
              <surname>Gallego</surname>
              <given-names>B</given-names>
            </name>
            <name name-style="western">
              <surname>Magrabi</surname>
              <given-names>F</given-names>
            </name>
            <name name-style="western">
              <surname>Lau</surname>
              <given-names>AY</given-names>
            </name>
            <name name-style="western">
              <surname>Coiera</surname>
              <given-names>E</given-names>
            </name>
          </person-group>
          <article-title>Conversational agents in healthcare: a systematic review</article-title>
          <source>J Am Med Inform Assoc</source>
          <year>2018</year>
          <month>09</month>
          <day>01</day>
          <volume>25</volume>
          <issue>9</issue>
          <fpage>1248</fpage>
          <lpage>58</lpage>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://europepmc.org/abstract/MED/30010941"/>
          </comment>
          <pub-id pub-id-type="doi">10.1093/jamia/ocy072</pub-id>
          <pub-id pub-id-type="medline">30010941</pub-id>
          <pub-id pub-id-type="pii">5052181</pub-id>
          <pub-id pub-id-type="pmcid">PMC6118869</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref112">
        <label>112</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Pradhan</surname>
              <given-names>P</given-names>
            </name>
            <name name-style="western">
              <surname>Costa</surname>
              <given-names>L</given-names>
            </name>
            <name name-style="western">
              <surname>Rybski</surname>
              <given-names>D</given-names>
            </name>
            <name name-style="western">
              <surname>Lucht</surname>
              <given-names>W</given-names>
            </name>
            <name name-style="western">
              <surname>Kropp</surname>
              <given-names>JP</given-names>
            </name>
          </person-group>
          <article-title>A systematic study of sustainable development goal (SDG) interactions</article-title>
          <source>Earth's Future</source>
          <year>2017</year>
          <month>11</month>
          <day>30</day>
          <volume>5</volume>
          <issue>11</issue>
          <fpage>1169</fpage>
          <lpage>79</lpage>
          <pub-id pub-id-type="doi">10.1002/2017EF000632</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref113">
        <label>113</label>
        <nlm-citation citation-type="web">
          <article-title>Monitoring and evaluating digital health interventions: a practical guide to conducting research and assessment</article-title>
          <source>World Health Organization</source>
          <year>2016</year>
          <access-date>2024-11-10</access-date>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://www.who.int/publications/i/item/9789241511766">https://www.who.int/publications/i/item/9789241511766</ext-link>
          </comment>
        </nlm-citation>
      </ref>
      <ref id="ref114">
        <label>114</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Bishop</surname>
              <given-names>M</given-names>
            </name>
            <name name-style="western">
              <surname>Green</surname>
              <given-names>M</given-names>
            </name>
          </person-group>
          <article-title>Philanthrocapitalism Rising</article-title>
          <source>Soc</source>
          <year>2015</year>
          <month>11</month>
          <day>5</day>
          <volume>52</volume>
          <issue>6</issue>
          <fpage>541</fpage>
          <lpage>8</lpage>
          <pub-id pub-id-type="doi">10.1007/S12115-015-9945-8</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref115">
        <label>115</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>McCoy</surname>
              <given-names>D</given-names>
            </name>
            <name name-style="western">
              <surname>Kembhavi</surname>
              <given-names>G</given-names>
            </name>
            <name name-style="western">
              <surname>Patel</surname>
              <given-names>J</given-names>
            </name>
            <name name-style="western">
              <surname>Luintel</surname>
              <given-names>A</given-names>
            </name>
          </person-group>
          <article-title>The Bill and Melinda Gates Foundation's grant-making programme for global health</article-title>
          <source>Lancet</source>
          <year>2009</year>
          <month>05</month>
          <day>09</day>
          <volume>373</volume>
          <issue>9675</issue>
          <fpage>1645</fpage>
          <lpage>53</lpage>
          <pub-id pub-id-type="doi">10.1016/S0140-6736(09)60571-7</pub-id>
          <pub-id pub-id-type="medline">19427959</pub-id>
          <pub-id pub-id-type="pii">S0140-6736(09)60571-7</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref116">
        <label>116</label>
        <nlm-citation citation-type="web">
          <article-title>Economic impact of big tech platforms on the viability of local broadcast news</article-title>
          <source>BIA Advisory Services &amp; National Association of Broadcasters</source>
          <year>2021</year>
          <access-date>2024-11-10</access-date>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://www.nab.org/documents/newsRoom/pdfs/Economic_Impact_Tech_Platforms_Broadcast_News.pdf[accessed">https://www.nab.org/documents/newsRoom/pdfs/Economic_Impact_Tech_Platforms_Broadcast_News.pdf[accessed</ext-link>
          </comment>
        </nlm-citation>
      </ref>
      <ref id="ref117">
        <label>117</label>
        <nlm-citation citation-type="web">
          <article-title>The sustainable development goals report 2024</article-title>
          <source>United Nations</source>
          <year>2024</year>
          <access-date>2024-11-10</access-date>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://unstats.un.org/sdgs/report/2024/">https://unstats.un.org/sdgs/report/2024/</ext-link>
          </comment>
        </nlm-citation>
      </ref>
      <ref id="ref118">
        <label>118</label>
        <nlm-citation citation-type="web">
          <article-title>Sustainable development report 2024: interactive map</article-title>
          <source>Sustainable Development Solutions Network</source>
          <access-date>2024-11-10</access-date>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://dashboards.sdgindex.org/map">https://dashboards.sdgindex.org/map</ext-link>
          </comment>
        </nlm-citation>
      </ref>
      <ref id="ref119">
        <label>119</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Cerf</surname>
              <given-names>ME</given-names>
            </name>
          </person-group>
          <article-title>The Sustainable development goals: contextualizing Africa's economic and health landscape</article-title>
          <source>Glob Chall</source>
          <year>2018</year>
          <month>08</month>
          <volume>2</volume>
          <issue>8</issue>
          <fpage>1800014</fpage>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://europepmc.org/abstract/MED/31565342"/>
          </comment>
          <pub-id pub-id-type="doi">10.1002/gch2.201800014</pub-id>
          <pub-id pub-id-type="medline">31565342</pub-id>
          <pub-id pub-id-type="pii">GCH2201800014</pub-id>
          <pub-id pub-id-type="pmcid">PMC6607161</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref120">
        <label>120</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>LeFevre</surname>
              <given-names>AE</given-names>
            </name>
            <name name-style="western">
              <surname>Shah</surname>
              <given-names>N</given-names>
            </name>
            <name name-style="western">
              <surname>Bashingwa</surname>
              <given-names>JJ</given-names>
            </name>
            <name name-style="western">
              <surname>George</surname>
              <given-names>AS</given-names>
            </name>
            <name name-style="western">
              <surname>Mohan</surname>
              <given-names>D</given-names>
            </name>
          </person-group>
          <article-title>Does women's mobile phone ownership matter for health? Evidence from 15 countries</article-title>
          <source>BMJ Glob Health</source>
          <year>2020</year>
          <month>05</month>
          <volume>5</volume>
          <issue>5</issue>
          <fpage>e002524</fpage>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://gh.bmj.com/lookup/pmidlookup?view=long&amp;pmid=32424014"/>
          </comment>
          <pub-id pub-id-type="doi">10.1136/bmjgh-2020-002524</pub-id>
          <pub-id pub-id-type="medline">32424014</pub-id>
          <pub-id pub-id-type="pii">bmjgh-2020-002524</pub-id>
          <pub-id pub-id-type="pmcid">PMC7245424</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref121">
        <label>121</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Chitungo</surname>
              <given-names>I</given-names>
            </name>
            <name name-style="western">
              <surname>Mhango</surname>
              <given-names>M</given-names>
            </name>
            <name name-style="western">
              <surname>Mbunge</surname>
              <given-names>E</given-names>
            </name>
            <name name-style="western">
              <surname>Dzobo</surname>
              <given-names>M</given-names>
            </name>
            <name name-style="western">
              <surname>Musuka</surname>
              <given-names>G</given-names>
            </name>
            <name name-style="western">
              <surname>Dzinamarira</surname>
              <given-names>T</given-names>
            </name>
          </person-group>
          <article-title>Utility of telemedicine in sub-Saharan Africa during the COVID-19 pandemic. A rapid review</article-title>
          <source>Hum Behav Emerg Technol</source>
          <year>2021</year>
          <month>12</month>
          <volume>3</volume>
          <issue>5</issue>
          <fpage>843</fpage>
          <lpage>53</lpage>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://europepmc.org/abstract/MED/34901772"/>
          </comment>
          <pub-id pub-id-type="doi">10.1002/hbe2.297</pub-id>
          <pub-id pub-id-type="medline">34901772</pub-id>
          <pub-id pub-id-type="pii">HBE2297</pub-id>
          <pub-id pub-id-type="pmcid">PMC8653215</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref122">
        <label>122</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Wallerstein</surname>
              <given-names>N</given-names>
            </name>
            <name name-style="western">
              <surname>Duran</surname>
              <given-names>B</given-names>
            </name>
          </person-group>
          <article-title>Community-based participatory research contributions to intervention research: the intersection of science and practice to improve health equity</article-title>
          <source>Am J Public Health</source>
          <year>2010</year>
          <month>04</month>
          <volume>100</volume>
          <issue>S1</issue>
          <fpage>S40</fpage>
          <lpage>6</lpage>
          <pub-id pub-id-type="doi">10.2105/ajph.2009.184036</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref123">
        <label>123</label>
        <nlm-citation citation-type="confproc">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Amugongo</surname>
              <given-names>LM</given-names>
            </name>
            <name name-style="western">
              <surname>Bidwell</surname>
              <given-names>NJ</given-names>
            </name>
            <name name-style="western">
              <surname>Corrigan</surname>
              <given-names>CC</given-names>
            </name>
          </person-group>
          <article-title>Invigorating ubuntu ethics in AI for healthcare: enabling equitable care</article-title>
          <source>Proceedings of the 2023 ACM Conference on Fairness, Accountability, and Transparency</source>
          <year>2023</year>
          <conf-name>FAccT '23</conf-name>
          <conf-date>June 12-15, 2023</conf-date>
          <conf-loc>Chicago, IL</conf-loc>
          <fpage>583</fpage>
          <lpage>592</lpage>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://dl.acm.org/doi/10.1145/3593013.3594024"/>
          </comment>
          <pub-id pub-id-type="doi">10.1145/3593013.3594024</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref124">
        <label>124</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Proefke</surname>
              <given-names>R</given-names>
            </name>
            <name name-style="western">
              <surname>Barford</surname>
              <given-names>A</given-names>
            </name>
          </person-group>
          <article-title>Creating spaces for co-research</article-title>
          <source>J Br Acad</source>
          <year>2023</year>
          <month>11</month>
          <day>2</day>
          <volume>11</volume>
          <fpage>19</fpage>
          <lpage>42</lpage>
          <pub-id pub-id-type="doi">10.5871/jba/011s3.019</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref125">
        <label>125</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Habwe</surname>
              <given-names>J</given-names>
            </name>
          </person-group>
          <article-title>The role of Kiswahili in the integration of East Africa</article-title>
          <source>J Pan Afr Stud</source>
          <year>2009</year>
          <fpage>2</fpage>
          <lpage>10</lpage>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://mail.jpanafrican.org/docs/vol2no8/2.8_RoleOfKiswahiliInTheIntegration.pdf"/>
          </comment>
        </nlm-citation>
      </ref>
      <ref id="ref126">
        <label>126</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Emeka-Nwobia</surname>
              <given-names>NU</given-names>
            </name>
          </person-group>
          <article-title>The place of indigenous Nigerian languages in national development</article-title>
          <source>Res Humanit Soc Sci</source>
          <year>2015</year>
          <volume>5</volume>
          <issue>12</issue>
          <fpage>112</fpage>
          <lpage>6</lpage>
          <pub-id pub-id-type="doi">10.7575/aiac.ijalel.v.2n.3p.29</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref127">
        <label>127</label>
        <nlm-citation citation-type="confproc">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Hu</surname>
              <given-names>S</given-names>
            </name>
            <name name-style="western">
              <surname>Zhou</surname>
              <given-names>H</given-names>
            </name>
            <name name-style="western">
              <surname>Yuan</surname>
              <given-names>M</given-names>
            </name>
            <name name-style="western">
              <surname>Gritta</surname>
              <given-names>M</given-names>
            </name>
            <name name-style="western">
              <surname>Zhang</surname>
              <given-names>G</given-names>
            </name>
            <name name-style="western">
              <surname>Iacobacci</surname>
              <given-names>I</given-names>
            </name>
            <name name-style="western">
              <surname>Korhonen</surname>
              <given-names>A</given-names>
            </name>
            <name name-style="western">
              <surname>Vulic</surname>
              <given-names>I</given-names>
            </name>
          </person-group>
          <article-title>A systematic study of performance disparities in multilingual task-oriented dialogue systems</article-title>
          <source>Proceedings of the 2023 Conference on Empirical Methods in Natural Language Processing</source>
          <year>2023</year>
          <conf-name>EMNLP '23</conf-name>
          <conf-date>December 6-10, 2023</conf-date>
          <conf-loc>Singapore, Singapore</conf-loc>
          <fpage>6825</fpage>
          <lpage>51</lpage>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://aclanthology.org/2023.emnlp-main.422.pdf"/>
          </comment>
          <pub-id pub-id-type="doi">10.18653/v1/2023.emnlp-main.422</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref128">
        <label>128</label>
        <nlm-citation citation-type="book">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Barocas</surname>
              <given-names>S</given-names>
            </name>
            <name name-style="western">
              <surname>Hardt</surname>
              <given-names>M</given-names>
            </name>
            <name name-style="western">
              <surname>Narayanan</surname>
              <given-names>A</given-names>
            </name>
          </person-group>
          <source>Fairness and Machine Learning: Limitations and Opportunities</source>
          <year>2023</year>
          <publisher-loc>Mahwah, NJ</publisher-loc>
          <publisher-name>MIT Press</publisher-name>
        </nlm-citation>
      </ref>
      <ref id="ref129">
        <label>129</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Orife</surname>
              <given-names>I</given-names>
            </name>
            <name name-style="western">
              <surname>Kreutzer</surname>
              <given-names>J</given-names>
            </name>
            <name name-style="western">
              <surname>Sibanda</surname>
              <given-names>B</given-names>
            </name>
            <name name-style="western">
              <surname>Whitenack</surname>
              <given-names>D</given-names>
            </name>
            <name name-style="western">
              <surname>Siminyu</surname>
              <given-names>K</given-names>
            </name>
            <name name-style="western">
              <surname>Martinus</surname>
              <given-names>L</given-names>
            </name>
            <name name-style="western">
              <surname>Ali</surname>
              <given-names>JT</given-names>
            </name>
            <name name-style="western">
              <surname>Abbott</surname>
              <given-names>J</given-names>
            </name>
            <name name-style="western">
              <surname>Marivate</surname>
              <given-names>V</given-names>
            </name>
            <name name-style="western">
              <surname>Kabongo</surname>
              <given-names>S</given-names>
            </name>
          </person-group>
          <article-title>Masakhane -- machine translation for Africa</article-title>
          <source>arXiv. Preprint posted online March 13, 2020</source>
          <year>2020</year>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://arxiv.org/abs/2003.11529"/>
          </comment>
          <pub-id pub-id-type="doi">10.48550/arXiv.2003.11529</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref130">
        <label>130</label>
        <nlm-citation citation-type="confproc">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Conneau</surname>
              <given-names>A</given-names>
            </name>
            <name name-style="western">
              <surname>Khandelwal</surname>
              <given-names>K</given-names>
            </name>
            <name name-style="western">
              <surname>Goyal</surname>
              <given-names>N</given-names>
            </name>
            <name name-style="western">
              <surname>Chaudhary</surname>
              <given-names>V</given-names>
            </name>
            <name name-style="western">
              <surname>Wenzek</surname>
              <given-names>G</given-names>
            </name>
            <name name-style="western">
              <surname>Guzmán</surname>
              <given-names>F</given-names>
            </name>
            <name name-style="western">
              <surname>Grave</surname>
              <given-names>E</given-names>
            </name>
            <name name-style="western">
              <surname>Ott</surname>
              <given-names>M</given-names>
            </name>
            <name name-style="western">
              <surname>Zettlemoyer</surname>
              <given-names>L</given-names>
            </name>
            <name name-style="western">
              <surname>Stoyanov</surname>
              <given-names>V</given-names>
            </name>
          </person-group>
          <article-title>Unsupervised cross-lingual representation learning at scale</article-title>
          <source>Proceedings of the 58th Annual Meeting of the Association for Computational Linguistics</source>
          <year>2020</year>
          <conf-name>ACL '20</conf-name>
          <conf-date>July 5-10, 2020</conf-date>
          <conf-loc>Virtual Event</conf-loc>
          <fpage>8440</fpage>
          <lpage>51</lpage>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://aclanthology.org/2020.acl-main.747.pdf"/>
          </comment>
          <pub-id pub-id-type="doi">10.18653/v1/2020.acl-main.747</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref131">
        <label>131</label>
        <nlm-citation citation-type="confproc">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Conneau</surname>
              <given-names>A</given-names>
            </name>
            <name name-style="western">
              <surname>Rinott</surname>
              <given-names>R</given-names>
            </name>
            <name name-style="western">
              <surname>Lample</surname>
              <given-names>G</given-names>
            </name>
            <name name-style="western">
              <surname>Williams</surname>
              <given-names>A</given-names>
            </name>
            <name name-style="western">
              <surname>Bowman</surname>
              <given-names>S</given-names>
            </name>
            <name name-style="western">
              <surname>Schwenk</surname>
              <given-names>H</given-names>
            </name>
            <name name-style="western">
              <surname>Stoyanov</surname>
              <given-names>V</given-names>
            </name>
          </person-group>
          <article-title>XNLI: evaluating cross-lingual sentence representations</article-title>
          <source>Proceedings of the 2018 Conference on Empirical Methods in Natural Language Processing</source>
          <year>2018</year>
          <conf-name>EMNLP '18</conf-name>
          <conf-date>October 31-November 4, 2018</conf-date>
          <conf-loc>Brussels, Belgium</conf-loc>
          <fpage>2475</fpage>
          <lpage>85</lpage>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://aclanthology.org/D18-1269.pdf"/>
          </comment>
          <pub-id pub-id-type="doi">10.18653/v1/d18-1269</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref132">
        <label>132</label>
        <nlm-citation citation-type="confproc">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Hu</surname>
              <given-names>J</given-names>
            </name>
            <name name-style="western">
              <surname>Ruder</surname>
              <given-names>S</given-names>
            </name>
            <name name-style="western">
              <surname>Siddhant</surname>
              <given-names>A</given-names>
            </name>
            <name name-style="western">
              <surname>Neubig</surname>
              <given-names>G</given-names>
            </name>
            <name name-style="western">
              <surname>Firat</surname>
              <given-names>O</given-names>
            </name>
            <name name-style="western">
              <surname>Johnson</surname>
              <given-names>M</given-names>
            </name>
          </person-group>
          <article-title>XTREME: a massively multilingual multi-task benchmark for evaluating cross-lingual generalization</article-title>
          <source>Proceedings of the 37th International Conference on Machine Learning</source>
          <year>2020</year>
          <conf-name>ICML '20</conf-name>
          <conf-date>July 13-18, 2020</conf-date>
          <conf-loc>Virtual Event</conf-loc>
          <fpage>4411</fpage>
          <lpage>21</lpage>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://dl.acm.org/doi/pdf/10.5555/3524938.3525348"/>
          </comment>
        </nlm-citation>
      </ref>
      <ref id="ref133">
        <label>133</label>
        <nlm-citation citation-type="confproc">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Hovy</surname>
              <given-names>D</given-names>
            </name>
            <name name-style="western">
              <surname>Yang</surname>
              <given-names>D</given-names>
            </name>
          </person-group>
          <article-title>The importance of modeling social factors of language: theory and practice</article-title>
          <source>Proceedings of the 2021 Conference of the North American Chapter of the Association for Computational Linguistics: Human Language Technologies</source>
          <year>2021</year>
          <conf-name>NAACL '21</conf-name>
          <conf-date>June 6-11, 2021</conf-date>
          <conf-loc>Virtual Event</conf-loc>
          <fpage>588</fpage>
          <lpage>602</lpage>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://aclanthology.org/2021.naacl-main.49.pdf"/>
          </comment>
          <pub-id pub-id-type="doi">10.18653/v1/2021.naacl-main.49</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref134">
        <label>134</label>
        <nlm-citation citation-type="confproc">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Loveys</surname>
              <given-names>K</given-names>
            </name>
            <name name-style="western">
              <surname>Torrez</surname>
              <given-names>J</given-names>
            </name>
            <name name-style="western">
              <surname>Fine</surname>
              <given-names>A</given-names>
            </name>
            <name name-style="western">
              <surname>Moriarty</surname>
              <given-names>G</given-names>
            </name>
            <name name-style="western">
              <surname>Coppersmith</surname>
              <given-names>G</given-names>
            </name>
          </person-group>
          <article-title>Cross-cultural differences in language markers of depression online</article-title>
          <source>Proceedings of the 5th Workshop on Computational Linguistics and Clinical Psychology: From Keyboard to Clinic</source>
          <year>2018</year>
          <conf-name>CLPsych '18</conf-name>
          <conf-date>June 5, 2018</conf-date>
          <conf-loc>New Orleans, LA</conf-loc>
          <fpage>78</fpage>
          <lpage>87</lpage>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://aclanthology.org/W18-0608.pdf"/>
          </comment>
          <pub-id pub-id-type="doi">10.18653/v1/w18-0608</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref135">
        <label>135</label>
        <nlm-citation citation-type="web">
          <article-title>Traditional medicine: questions and answers</article-title>
          <source>World Health Organization</source>
          <access-date>2024-11-10</access-date>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://www.who.int/news-room/questions-and-answers/item/traditional-medicine">https://www.who.int/news-room/questions-and-answers/item/traditional-medicine</ext-link>
          </comment>
        </nlm-citation>
      </ref>
      <ref id="ref136">
        <label>136</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Olatunji</surname>
              <given-names>T</given-names>
            </name>
            <name name-style="western">
              <surname>Nimo</surname>
              <given-names>C</given-names>
            </name>
            <name name-style="western">
              <surname>Owodunni</surname>
              <given-names>A</given-names>
            </name>
            <name name-style="western">
              <surname>Abdullahi</surname>
              <given-names>T</given-names>
            </name>
            <name name-style="western">
              <surname>Ayodele</surname>
              <given-names>E</given-names>
            </name>
            <name name-style="western">
              <surname>Sanni</surname>
              <given-names>M</given-names>
            </name>
            <name name-style="western">
              <surname>Aka</surname>
              <given-names>C</given-names>
            </name>
            <name name-style="western">
              <surname>Omofoye</surname>
              <given-names>F</given-names>
            </name>
            <name name-style="western">
              <surname>Yuehgoh</surname>
              <given-names>F</given-names>
            </name>
            <name name-style="western">
              <surname>Faniran</surname>
              <given-names>T</given-names>
            </name>
            <name name-style="western">
              <surname>Dossou</surname>
              <given-names>BF</given-names>
            </name>
            <name name-style="western">
              <surname>Yekini</surname>
              <given-names>M</given-names>
            </name>
          </person-group>
          <article-title>AfriMed-QA: a Pan-African, multi-specialty, medical question-answering benchmark dataset</article-title>
          <source>arXiv. Preprint posted online November 23, 2024</source>
          <year>2024</year>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://arxiv.org/abs/2411.15640"/>
          </comment>
          <pub-id pub-id-type="doi">10.48550/arXiv.2411.15640</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref137">
        <label>137</label>
        <nlm-citation citation-type="confproc">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Conforti</surname>
              <given-names>C</given-names>
            </name>
            <name name-style="western">
              <surname>Hirmer</surname>
              <given-names>S</given-names>
            </name>
            <name name-style="western">
              <surname>Morgan</surname>
              <given-names>D</given-names>
            </name>
            <name name-style="western">
              <surname>Basaldella</surname>
              <given-names>M</given-names>
            </name>
            <name name-style="western">
              <surname>Ben</surname>
              <given-names>OY</given-names>
            </name>
          </person-group>
          <article-title>Natural language processing for achieving sustainable development: the case of neural labelling to enhance community profiling</article-title>
          <source>Proceedings of the 2020 Conference on Empirical Methods in Natural Language Processing</source>
          <year>2020</year>
          <conf-name>EMNLP '20</conf-name>
          <conf-date>November 16-20, 2020</conf-date>
          <conf-loc>Virtual Event</conf-loc>
          <fpage>8427</fpage>
          <lpage>44</lpage>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://aclanthology.org/2020.emnlp-main.677.pdf"/>
          </comment>
          <pub-id pub-id-type="doi">10.18653/v1/2020.emnlp-main.677</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref138">
        <label>138</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Moher</surname>
              <given-names>D</given-names>
            </name>
            <name name-style="western">
              <surname>Shamseer</surname>
              <given-names>L</given-names>
            </name>
            <name name-style="western">
              <surname>Clarke</surname>
              <given-names>M</given-names>
            </name>
            <name name-style="western">
              <surname>Ghersi</surname>
              <given-names>D</given-names>
            </name>
            <name name-style="western">
              <surname>Liberati</surname>
              <given-names>A</given-names>
            </name>
            <name name-style="western">
              <surname>Petticrew</surname>
              <given-names>M</given-names>
            </name>
            <name name-style="western">
              <surname>Shekelle</surname>
              <given-names>P</given-names>
            </name>
            <name name-style="western">
              <surname>Stewart</surname>
              <given-names>LA</given-names>
            </name>
          </person-group>
          <article-title>Preferred reporting items for systematic review and meta-analysis protocols (PRISMA-P) 2015 statement</article-title>
          <source>Syst Rev</source>
          <year>2015</year>
          <month>01</month>
          <day>01</day>
          <volume>4</volume>
          <issue>1</issue>
          <fpage>1</fpage>
          <comment>
            <ext-link ext-link-type="uri" xlink:type="simple" xlink:href="https://systematicreviewsjournal.biomedcentral.com/articles/10.1186/2046-4053-4-1"/>
          </comment>
          <pub-id pub-id-type="doi">10.1186/2046-4053-4-1</pub-id>
          <pub-id pub-id-type="medline">25554246</pub-id>
          <pub-id pub-id-type="pii">2046-4053-4-1</pub-id>
          <pub-id pub-id-type="pmcid">PMC4320440</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref139">
        <label>139</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Barford</surname>
              <given-names>A</given-names>
            </name>
            <name name-style="western">
              <surname>Ahmad</surname>
              <given-names>SR</given-names>
            </name>
          </person-group>
          <article-title>Levers for a corporate transition to a plastics circular economy</article-title>
          <source>Bus Strat Env</source>
          <year>2022</year>
          <month>06</month>
          <day>29</day>
          <volume>32</volume>
          <issue>4</issue>
          <fpage>1203</fpage>
          <lpage>17</lpage>
          <pub-id pub-id-type="doi">10.1002/bse.3182</pub-id>
        </nlm-citation>
      </ref>
      <ref id="ref140">
        <label>140</label>
        <nlm-citation citation-type="journal">
          <person-group person-group-type="author">
            <name name-style="western">
              <surname>Barford</surname>
              <given-names>A</given-names>
            </name>
            <name name-style="western">
              <surname>Beales</surname>
              <given-names>A</given-names>
            </name>
            <name name-style="western">
              <surname>Zorila</surname>
              <given-names>M</given-names>
            </name>
          </person-group>
          <article-title>An expert study of systemic influences on progress towards living wages: a key to unlock the sustainable development goals</article-title>
          <source>Bus Strat Dev</source>
          <year>2025</year>
          <month>01</month>
          <day>20</day>
          <volume>8</volume>
          <issue>1</issue>
          <fpage>55</fpage>
          <pub-id pub-id-type="doi">10.1002/bsd2.70048</pub-id>
        </nlm-citation>
      </ref>
    </ref-list>
  </back>
</article>
