Maintenance Notice

Due to necessary scheduled maintenance, the JMIR Publications website will be unavailable from Wednesday, July 01, 2020 at 8:00 PM to 10:00 PM EST. We apologize in advance for any inconvenience this may cause you.

Who will be affected?

Journal Description

The Journal of Medical Internet Research (JMIR) is the pioneer open access eHealth journal, and is the flagship journal of JMIR Publications. It is a leading health services and digital health journal globally in terms of quality/visibility (Journal Impact Factor 6.0, Journal Citation Reports 2025 from Clarivate), ranking Q1 in both the 'Medical Informatics' and 'Health Care Sciences & Services' categories, and is also the largest journal in the field. The journal is ranked #1 on Google Scholar in the 'Medical Informatics' discipline. The journal focuses on emerging technologies, medical devices, apps, engineering, telehealth and informatics applications for patient education, prevention, population health and clinical care.

JMIR is indexed in all major literature indices including National Library of Medicine(NLM)/MEDLINE, Sherpa/Romeo, PubMed, PMCScopus, Psycinfo, Clarivate (which includes Web of Science (WoS)/ESCI/SCIE), EBSCO/EBSCO Essentials, DOAJ, GoOA and others. Journal of Medical Internet Research received a Scopus CiteScore of 11.7 (2024), placing it in the 92nd percentile (#12 of 153) as a Q1 journal in the field of Health Informatics. It is a selective journal complemented by almost 30 specialty JMIR sister journals, which have a broader scope, and which together receive over 10,000 submissions a year. 

As an open access journal, we are read by clinicians, allied health professionals, informal caregivers, and patients alike, and have (as with all JMIR journals) a focus on readable and applied science reporting the design and evaluation of health innovations and emerging technologies. We publish original research, viewpoints, and reviews (both literature reviews and medical device/technology/app reviews). Peer-review reports are portable across JMIR journals and papers can be transferred, so authors save time by not having to resubmit a paper to a different journal but can simply transfer it between journals. 

We are also a leader in participatory and open science approaches, and offer the option to publish new submissions immediately as preprints, which receive DOIs for immediate citation (eg, in grant proposals), and for open peer-review purposes. We also invite patients to participate (eg, as peer-reviewers) and have patient representatives on editorial boards.

As all JMIR journals, the journal encourages Open Science principles and strongly encourages publication of a protocol before data collection. Authors who have published a protocol in JMIR Research Protocols get a discount of 20% on the Article Processing Fee when publishing a subsequent results paper in any JMIR journal.

Be a widely cited leader in the digital health revolution and submit your paper today!

 

Recent Articles:

  • Source: Freepik; Copyright: wavebreakmedia_micro; URL: https://www.freepik.com/free-photo/man-using-mobile-phone-bar_8405882.htm; License: Licensed by JMIR.

    Intersection of Big Five Personality Traits and Substance Use on Social Media Discourse: AI-Powered Observational Study

    Abstract:

    Background: Personality traits are known predictors of substance use (SU), but their expression and association with SU in digital discourse remain largely unexamined. During theCOVID-19 pandemic, the online social engagement heightened, and led the amplification in SU rates, thereby creating a unique natural opportunity to investigate these dynamics through a large-scale digital discourse data. In our study we offer insights beyond traditional self-report methods, which is crucial for developing timely and targeted public health interventions. Objective: To evaluate whether the associations between the Big Five personality traits and SU discourse shifted during the 2019–2021 period, and to conduct a focused analysis of how these traits predict SU and relate to specific substance types, emotional expression, and demographic factors. Methods: We analyzed a corpus of several hundred million public posts from a major social media platform from 2019 to 2021. Using a pipeline of natural language processing and deep learning models, we identified SU-related posts and subsequently extracted scores for the Big Five personality traits, emotions, and user demographics. We employed trend analysis to compare annual shifts in trait-SU associations, while detailed 2020 data underwent rigorous modeling using logistic regression, correlation analysis, and topic modeling to elucidate the core relationships. Results: Our analysis revealed that Extraversion (Odd Ratio=3.22) and, most strikingly, Agreeableness (Odd Ratio=4.04) were the strongest positive predictors of being a substance user. In stark contrast to the conventional self-medication hypothesis, Neuroticism emerged as a robust protective factor against SU (Odd Ratio=0.29). This counterintuitive finding was supported by a decreased association between Neuroticism and SU posts at the pandemic's onset in 2020 (Cohen’s value, d=−0.13, 95% Confidence Interval) and a negative correlation with the expression of negative emotions online. Topic modeling further indicated that SU discourse was frequently embedded in social contexts (Social Drinking, Friendly Beverage Choices) rather than themes of solitary coping. Conclusions: Our findings challenge traditional models by demonstrating that in large-scale online discourse, SU expression is more powerfully linked to social-affiliative traits than to negative emotionality. The paradoxical protective role of Neuroticism suggests that established risk profiles may not apply uniformly to digital environments, particularly during a public health crisis. These insights are vital for refining computational methods for public health surveillance and developing interventions that recognize the potent social drivers of substance use in the digital age.

  • Source: Freepik; Copyright: freepik; URL: https://www.freepik.com/free-photo/side-view-teenage-girl-hangover-ritual_58396801.htm; License: Licensed by JMIR.

    Time Spent on Social Media Applications in Relation to Depressive Symptoms During Emerging Adulthood and the Mediating Role of Sleep Quality: Cross-Sectional...

    Abstract:

    Background: The link between social media use and depressive symptoms remains bidirectional. Findings in this area are often compromised by methodological limitations related to measurement and sample size. As a result, it is challenging to assess dose-response relationships and potential causal pathways. Objective: To utilize objective measurement methods to assess the dose-response relationship and potential mechanisms between social media use and depressive symptoms. Methods: This study was conducted in six universities in 2022. Social media use duration was assessed based on the monitoring of mobile phone systems, and depressive symptoms were evaluated by the Self-Rating Depression Scale. Logistic regression and restricted cubic spline were employed to assess the relationship between social media use and depressive symptoms. Mediation analysis was used to elucidate the biological pathways of sleep quality in the above-mentioned relationship. Results: A total of 7,401 college students were included in the final analysis, with 5% of moderate to severe depressive symptoms. After adjusting for variables such as sociodemographic characteristics and health-related characteristics, there was a significant association between individuals with longer weekly social media usage time and depressive symptoms (OR>48h, 1.769; 95%CI, 1.303-2.400). Similarly, the association between instant messaging-based social media use duration and depressive symptoms was also significant (OR>24h, 1.728; 95%CI, 1.225-2.437), while no associations were observed for content-based social use (OR>24h, 1.251; 95%CI, 0.932-1.680). Restricted cubic splines regression demonstrated a J-type relationship between social media use duration and depressive symptoms. Additionally, sleep quality played a partial mediating role in the relationship between social media use duration and depressive symptoms, with the mediating effect values ranging from 24.10% to 25.25%. Conclusions: Prolonged social media use duration might be associated with an increased prevalence of depressive symptoms in emerging adulthood, and may increase the odds of depression by affecting sleep quality, suggesting that early prevention and intervention regarding social media use might help to ameliorate depressive symptoms.

  • Source: Freepik; Copyright: Freepik; URL: https://www.freepik.com/free-photo/doctor-posing-with-her-patient_11905317.htm; License: Licensed by JMIR.

    The Impact of Patient-Generated Health Data From Mobile Health Technologies on Health Care Management and Clinical Decision-Making: Narrative Scoping Review

    Abstract:

    Background: Long-term health conditions and multimorbidity are increasing globally placing an unsustainable pressure on healthcare systems. Mobile health technologies, or mHealth, enable the collection of patient-generated health data outside clinical settings, offering the potential to support personalised care and inform clinical decision-making. However, the ways in which mHealth patient data is being used in clinical practice remains unclear. Objective: To map and synthesise the existing literature on how patient-generated mHealth data is reportedly being used and influencing clinical decision-making for adults with long-term conditions in an outpatient care setting. Methods: A narrative scoping review was conducted on studies published between 2014 and 2025. Studies were eligible for inclusion if they were in English, had data on the use of patient generated mHealth data, went beyond feasibility testing, and had reference to clinician behaviour/patient interactions. Grey literature was not used to maintain a focus on peer reviewed and published evidence. Studies involving paediatric or adolescent populations were excluded. Searches were conducted across the following databases between 2014 and 2025: Embase, MEDLINE, Knowledge and Library Hub, British Nursing Indes, Proquest Health Research Premium Collection. Data were charted systematically and synthesised narratively. Key data included study characteristics, mHealth use, data types and visualisations, patient demographics, and the ways data informed clinical decision-making. Results: 16 studies met the inclusion requirements which were primarily high-income countries focusing on rheumatoid arthritis and diabetes. Studies reported on how mHealth data was integrated into workflows, influenced healthcare decisions, and shaped patient-provider interactions. mHealth patient data was found to support patient-centred care and facilitate proactive holistic care, though in some instances it was shown to reinforce medical agendas removing agency from patients. There is also a gap between the intended use of the data and its implementation in clinical practice. Reported barriers included professional scepticism, integration challenges, and concerns about data accuracy. Evidence was focused on feasibility rather than long-term outcomes, with limited evidence on the impacts of mHealth. Conclusions: PGHD has potential to enhance clinical decision-making and person-centred practices. However, integration into routine practice is hindered by technological challenges, professional hesitancy, and a lack of standardisation. Future research should prioritise supporting integration, improve data presentation, and evaluate the long-term effects on clinical workflows. Addressing these barriers and establishing clear policy frameworks will be crucial for realising the potential of mHealth in healthcare delivery.

  • Source: freepik; Copyright: jcomp; URL: https://www.freepik.com/free-photo/young-sport-man-with-strong-athletic-legs-holding-knee-with-his-hands-pain-after-suffering-ligament-injury-isolated-white_1602568.htm; License: Licensed by JMIR.

    Impact of Telerehabilitation on Rehabilitation Efficacy and Patient Satisfaction After Knee Surgery: Systematic Review and Meta-Analysis of Randomized...

    Abstract:

    Background: Postoperative rehabilitation after knee surgery is crucial for functional recovery, but traditional in-person methods can impose burdens on patients, particularly those with mobility limitations or living remotely. Telerehabilitation, leveraging digital platforms, offers a potential alternative, yet its comparative efficacy and acceptability remain debated, especially across surgery types. Objective: To evaluate if telerehabilitation improves postoperative rehabilitation satisfaction and efficacy compared to traditional methods for knee joint surgery patients. Methods: Six databases (Web of Science, PubMed, MEDLINE, ScienceDirect, EMBASE, Cochrane Library) were searched from inception to September 27, 2025. Eligibility criteria included randomized controlled trials (RCTs) comparing telerehabilitation with traditional rehabilitation in adult postoperative knee surgery patients, reporting patient satisfaction and/or efficacy outcomes. Risk of bias was assessed using the Cochrane Risk of Bias 1 tool. Data were synthesized using random-effects meta-analysis with the Hartung-Knapp-Sidik-Jonkman method for confidence intervals, reporting standardized mean differences or mean differences, τ2, τ, and prediction intervals where applicable. Heterogeneity was assessed with τ2, τ and PIs. Certainty of evidence was evaluated using GRADE. Results: 19 RCTs were included. Overall, on average, patient satisfaction showed no significant difference between telerehabilitation and traditional rehabilitation (SMD = 0.15; 95% CI = -0.48 to 0.78; P = .48; τ2 = 0.30; τ = 0.55; PI = -1.17 to 1.47). Subgroup analysis revealed on average lower satisfaction with synchronous telerehabilitation (k=4; SMD = -0.52; 95% CI = -1.02 to -0.02; P = .04; τ2 = 0.17; τ = 0.41) and higher with asynchronous (k=6; SMD = 0.56; 95% CI = 0.08 to 1.03; P = .02; τ2 = 0.30; τ = 0.55). Telerehabilitation showed significant improvements on total WOMAC (k=4; SMD = -0.76; 95% CI = -1.38 to -0.14; P = .02; τ2 = 0.08; τ = 0.29; PI = -1.85 to 0.33), KOOS (k=5; SMD = 0.58; 95% CI = 0.47 to 0.70; P = .01; τ2 = 0; τ = 0; PI = 0.36 to 0.80), TUG (k=4; MD = -2.73 s; 95% CI = -4.50 to -0.96; P = .04; τ2 = 1.14; τ = 1.07; PI = -7.17 to 1.72) and knee extension range (k=3; MD=9.64°; 95% CI = 6.89 to 12.39; P=.049; τ2 = 2.45; τ = 1.56; PI = 0.60 to 18.68). Risk of bias was low to moderate; heterogeneity moderate. Conclusions: The pooled average effects suggest that telerehabilitation is noninferior to traditional care for patient satisfaction on average and may improve pain and function and some objective measures. However, bootstrapped prediction intervals and between-study variability indicate that effects vary by context; implementation should therefore be individualized with attention to modality, patient digital literacy, and technical support. Targeted trials with standardized measures are recommended to increase certainty and narrow the expected distribution of effects. Clinical Trial: PROSPERO CRD420251025461; https://www.crd.york.ac.uk/PROSPERO/view/CRD420251025461.

  • Source: freepik; Copyright: freepik; URL: https://www.freepik.com/free-photo/middle-age-adult-having-fun-night_21811542.htm; License: Licensed by JMIR.

    Social Media, Health Consciousness, and Cultural Influences on Sugar Reduction Behaviors in Chinese Youth: Extending the Stimulus-Organism-Response Model

    Abstract:

    Background: The rising prevalence of sugar-related diseases, such as obesity and diabetes, has intensified efforts to reduce sugar intake, particularly among youth. In China, social media is playing an increasingly significant role in shaping health behaviors, including habits related to sugar consumption as sugar reduction has become a prominent youth-led movement. Objective: This study extends the Stimulus-Organism-Response (SOR) model by incorporating the distinct cultural influence of "face" to investigate the impact of social media on sugar reduction behaviors among Chinese youth, as well as the mediating role of health consciousness and conformity, and the moderating effects of face concern and eHealth literacy. Methods: We conducted a national web-based cross-sectional survey through proportionate probability sampling of 883 Chinese youth in July 2024. Descriptive statistics, Pearson correlations, Model fit indices and PLS (Partial Least Squares) SEM were employed to examine and explore the relationships among all the variables. Results: Nearly half the 883 participants were female (460/883, 52.1%) , 91.9% (812/883)of the sample ages fall within the 15-30 range. Most of the participants (602/883, 68.2%) had undergraduate education levels; the majority of participants (688/883, 77.9%) had a bachelor's degree or higher, and a normal Body Mass Index (BMI) (654/883, 74.1%). Most (575/883, 74.1%) had used social media for 3–10 years. Chinese youth reported relatively high sugar-reduction behavior scores in sugar reduction behaviors (mean score: 3.621/5, SD 0.990). Male participants achieved notably higher scores in sugar reduction behaviors.(mean score 3.725/5, SD 0.933), Participants at the age of 15–18 showed significantly lower sugar reduction behavior scores (mean score 3.508/5, SD 1.052). Structural equation modeling revealed that social media usage positively influenced conformity (β=.508, P<.001) and health consciousness (β=.353, P<.001). These factors in turn significantly predicted sugar reduction behaviors (β=.139 and β=.498, respectively; both P<.001). The influence of social media usage on sugar reduction behaviors is primarily facilitated through two mediating pathways.Health consciousness mediated the relationship between social media usage and sugar reduction behaviors (VAF=51.5%), while conformity's mediation was less pronounced (VAF=21.05%), indicating a secondary influence. Face concern (β=0.089, P=.02) and eHealth literacy (β=0.055, P=.04) moderated the respective relationships. Conclusions: This study demonstrates that social media effectively promotes sugar reduction behaviors among Chinese youth. By embedding cultural influences like face concern alongside enabling competencies like eHealth literacy an extended SOR model, we enhance our understanding of social media's influence on health behaviors. The findings highlight cultural nuances in health communication and position the enhanced SOR model as a framework for health promotion. Furthermore, The study underscores the primary mediating effect of health consciousness—surpassing that of conformity—while also delineating the moderating roles of face concern and eHealth literacy, offering actionable insights for digital-age public health strategies.

  • Left: Denise Silber, MBA; Right: Anshu Ankolekar, PhD. Source: The Authors; Copyright: JMIR Publications; URL: https://jmir.org/2025/1/e89205/; License: Licensed by JMIR.

    Beyond Waiting: How Patients Are Reshaping Digital Health

    Authors List:

    Abstract:

  • Source: Freepik; Copyright: pressfoto; URL: https://www.freepik.com/free-photo/asian-doctor-with-stethoscope-around-neck-sitting-office-working-computer_5839246.htm; License: Licensed by JMIR.

    Automated Multitier Tagging of Chinese Online Health Education Resources Using a Large Language Model: Development and Validation Study

    Abstract:

    Background: Precision health promotion, which aims to tailor health messages to individual needs, is hampered by the lack of structured metadata in vast digital health resource libraries. This bottleneck prevents scalable, personalized content delivery and exacerbates information overload for the public. Objective: This study aimed to develop, deploy, and validate an automated tagging system using a large language model (LLM) to create the foundational metadata infrastructure required for tailored health communication at scale. Methods: We developed a comprehensive, 3-tier health promotion taxonomy (10 primary, 34 secondary, and 90,562 tertiary tags) using a hybrid Delphi and corpus-mining methodology. We then constructed a hybrid inference pipeline by fine-tuning a Baichuan2-7B LLM with low-rank adaptation for initial tag generation. This was then refined by a domain-specific named entity recognition model and standardized against a vector database. The system’s performance was evaluated against manual annotations from nonexpert staff on a test set of 1000 resources. We used a “no gold standard” framework, comparing the artificial intelligence–human (A-H) interrater reliability (IRR) with a supplemental human-human (H-H) IRR baseline and expert adjudication for cases where artificial intelligence provided additional tags (“AI Additive”). Results: The A-H agreement was moderate (Cohen κ=0.54, 95% CI 0.53-0.56; Jaccard similarity coefficient=0.48, 95% CI 0.46-0.50). Critically, this was higher than the baseline nonexpert H-H agreement (Cohen κ=0.32, 95% CI 0.29-0.35; Jaccard similarity coefficient=0.35, 95% CI 0.27-0.43). A granular analysis of disagreements revealed that in 15.9% (159/1000) of the cases, the “AI Additive” tags were not identified by human annotators. Expert adjudication of these cases confirmed that the “AI Additive” tags were correct and relevant with a precision of 90% (45/50; 95% CI 78.2%-96.7%). Conclusions: A fine-tuned LLM, integrated into a hybrid pipeline, can function as a powerful augmentation tool for health content annotation. The system’s consistency (A-H κ=0.54) was found to be superior to the baseline human workflow (H-H κ=0.32). By moving beyond simple automation to reliably identify relevant health topics missed by manual annotators with high, expert-validated accuracy, this study provides a robust technical and methodological blueprint for implementing artificial intelligence to enhance precision health communication in public health settings.

  • Top left: Hashim Kareemi, MD; Top right: Alun Ackery, MD (Credit: St. Michael's Hospital); Bottom left: Kerstin de Wit, MD; Bottom right: Alister Martin, MD. Source: Hashim Kareemi, MD; Alun Ackery, MD (Credit: St. Michael's Hospital); Kerstin de Wit, MD; Alister Martin, MD.; Copyright: JMIR Publications; URL: https://www.jmir.org/2025/1/e89200; License: Licensed by JMIR.

    The Potential and Peril of Artificial Intelligence in the Emergency Department

    Authors List:

    Abstract:

  • The illustration visually represents the deployment of an artificial intelligence (AI) platform in a hospital setting.
On the left, a modern multi-story hospital building is shown in soft beige and teal tones, symbolizing a real-world healthcare environment where AI is integrated into daily operations. On the right, a stylized brain—half human and half digital circuit—illustrates the fusion of medical expertise and machine intelligence. Below the brain, a five-layer architecture represents the structured design of the hospital AI platform. The layers, from bottom to top, are labeled Infrastructure, Data, Algorithm, Application, and Security & Compliance. Generated by Musitapa Maimaitiaili on 2025-10-31. Source: Image created by the Authors; Copyright: n/a (AI-generated image); URL: https://www.jmir.org/2025/1/e79788; License: Public Domain (CC0).

    Artificial Intelligence Platform Architecture for Hospital Systems: Systematic Review

    Abstract:

    Background: The construction of artificial intelligence (AI) platforms in hospitals forms the basis of the modern healthcare revolution. While traditional hospital information systems have facilitated digitalization, they are still limited by data siloes, fragmented workflows and insufficient clinical intelligence that impede organizations from realizing the promise of data-led decision-making. Objective: This review aims to provide a strategic roadmap for hospitals to build comprehensive AI platforms, moving beyond siloed AI applications toward infrastructure at the system level that supports sustainable, scalable, and interoperable intelligent services across clinical, operational, and administrative domains. Methods: A systematic literature search was performed in Web of Science, EMBASE, PubMed, and Scopus. The review followed the Preferred Reporting Items for Systematic Reviews and Meta-Analyses (PRISMA) guidelines. Studies were screened and selected for full text review by two independent reviewers with reference to AI platform construction, hospital informatics integration, and institutional deployment strategies. Results: A total of 30 high-quality studies were included in the final analysis. Based on the synthesis of evidence, a five-layer hospital AI platform architecture is proposed, consisting of: (1) infrastructure layer, (2) data layer, (3) algorithm layer, (4) application layer, and (5) security and compliance layer. The review highlights key implementation strategies such as modular deployment, real-world scenario validation, and interdepartmental collaboration. It also identifies critical challenges, including legacy system integration, lack of data standardization, computing resource limitations, organizational resistance, regulatory uncertainty, and economic sustainability. Conclusions: The successful construction of hospital AI platforms requires not only advanced technologies but also institutional readiness, strategic planning, and cultural adaptation. Intelligent hospitals of the future must emphasize privacy-preserving computing, seamless AI integration into clinical workflows, and dynamic performance evaluation systems. Building organizational capacity and fostering cross-disciplinary collaboration will be essential to achieving long-term impact and scalability.

  • AI generated image in response to the request: "Create a photorealistic or 3D-style image (4:3 aspect ratio; suitable for cropping/resizing to 1000×750) illustrating the concept of digital physical therapy without including any text or the study title. Depict a middle-aged woman (approximately 52 years old) performing home physical-therapy exercises in a living-room environment. She should not be seated on a chair. Include a simple table in the scene, but no computer and no bands or strap-based exercise equipment. The overall tone should convey at-home therapeutic activity in a clean, modern space"; Requestor: Beatriz Domingues. Source: DALL-E; Copyright: N/A (AI-generated image); URL: https://www.jmir.org/2025/1/e82573/; License: Public Domain (CC0).

    Digital Versus In-Person Physical Therapy in Adults With Musculoskeletal Conditions: Retrospective Matched-Cohort Analysis of Surgery and Low-Value Surgical...

    Abstract:

    Background: Musculoskeletal (MSK) disorders are leading causes of disability worldwide, with clinical guidelines recommending physical therapy–based interventions. Digital MSK programs offer an alternative to address logistical and socioeconomic barriers to regular in-person care. However, evidence comparing surgical use between digital and in-person physical therapy remains limited, particularly for low-value procedures. Objective: This study aimed to evaluate the 12-month incidence of MSK surgery and low-value surgical procedures among participants initiating a multimodal Digital Care Program (DCP) versus a matched-cohort initiating in-person physical therapy. Methods: Retrospective, matched-cohort study, using exact and propensity matching, with a Health Insurance Portability and Accountability Act (HIPAA)–deidentified US nationwide merged claims dataset (July 2022-February 2025). Eligible adults had spine, knee, hip, or shoulder conditions, ≥24 months uninterrupted health insurance coverage to an employer-sponsored DCP, and no MSK surgery in the prior year. The intervention group (IG) participated in a DCP combining exercise, education, and cognitive behavioral therapy, with real-time biofeedback and remote physical therapist oversight. The comparator group (CG) initiated in-person physical therapy, identified from a third-party claims database, using relevant MSK ICD-10 (International Statistical Classification of Diseases, Tenth Revision) codes as primary diagnosis. The primary outcome was the incidence of any MSK surgery within 12 months; the secondary outcome was the incidence of low-value surgery based on Choosing Wisely–aligned definitions. Cohort characteristics were compared using t test and chi-square test. Risk ratios (RRs) were calculated overall and by pain site, age group, and Social Deprivation Index. Results: In a matched cohort of 4190 individuals, predominantly middle-aged (~52 years old) women (1335/2095, 63.7%) with spinal pain (1123/2095, 53.6%), participation in the digital program was linked to a 58% (95% CI 49-66) lower relative risk of surgery at 12 months compared to those initiating in-person physical therapy (RR 0.42, 95% CI 0.34-0.52; E-value=4.19 [lower CI 3.29]). For surgeries categorized as low-value, IG was associated with 82% (95% CI 68-90) lower relative risk (RR 0.17, 95% CI 0.09-0.31; E-value=11.24 [lower CI 5.91]). Overall MSK surgical trends were consistent across pain sites, with greatest relative differences for knee (IG: 40/414 9.7% vs CG: 122/414, 29.5%; RR 0.26; 95% CI 0.17-0.38) followed by hip (19/203, 9.4% vs 42/203, 20.7%; RR 0.40; 95% CI 0.22-0.71). Lower surgery incidences in the IG (overall and low-value) were found across all socioeconomic and age strata. Conclusions: This real-world study demonstrated, for the first time, that participation in a digital MSK program was associated with substantially lower incidences of both overall and low-value surgeries compared to those who opted for in-person physical therapy among commercially-insured adults. These findings suggest that digital MSK programs can mitigate access barriers, promote adherence to guideline-concordant care, and reduce unnecessary procedures, including among underserved populations.

  • AI-generated image, in response to the request to "create an image for a journal article publication...about tobacco (e-cigarette)-related misinformation on social media." (requestor: Eileen Han; requested: 2025-11-10). Source: Created by ChatGPT 5.1, an AI system by OpenAI; Copyright: N/A (AI-generated image); URL: https://www.jmir.org/2025/1/e78854/; License: Public Domain (CC0).

    An Exploratory Typology of Tobacco-Related Misleading Content on Social Media: Qualitative Analysis of Instagram and TikTok

    Abstract:

    Background: Tobacco-related misinformation on social media platforms presents growing challenges to digital health communication and public health. Although prior studies have focused on platform-specific patterns, a unified framework for categorizing and comparing misinformation across platforms is lacking. Such a framework is essential for improving infodemiological surveillance and designing targeted digital interventions. Objective: This study was an exploratory analysis aimed to build a cross-platform typology to categorize tobacco-related misinformation. Methods: Data from Instagram and TikTok between January 2020 and August 2023 were collected using a third-party data collection platform (CrowdTangle) and the TikTok Research application programming interface (API). We reviewed a total of 4850 Instagram posts using a combination of generative artificial intelligence (AI) and human validation by two independent reviewers. In addition, 719 TikTok videos were reviewed manually using qualitative analysis. We iteratively developed and refined the exploratory typology informed by the literature integrating our prior analysis of Twitter data and these new datasets. Results: Of the 22 (71%) Instagram posts and 9 (29%) TikTok videos we analyzed closely to classify misinformation, 2 (6.5%) were about cigarettes, 22 (71%) were about electronic cigarettes (e-cigarettes), 1 (3.2%) was about heated tobacco products (HTPs), 2 (6.5%) were about nicotine (not mentioning specific products), and 3 (9.7%) were about cannabidiol (CBD) products. 1 (3.2%) post did not mention any type of products. These categories could overlap in a single post. The resulting typology consisted of five core narrative archetypes: false or misleading health claims (A1), wellness and lifestyle appeal (A2), conspiracy-driven policy agenda (A3), undermining trust in science and medicine (A4), and recreational nicotine use normalization (A5). Each archetype has attributes of false claim types and sources. Among the posts we analyzed, A1 and A2 were most likely to be found on Instagram. A3 was most frequently found on Twitter. A4 was commonly seen on both Twitter and TikTok, and A5 was most frequently found on TikTok. Two additional dimensions—type of falsehood and source—were also added to characterize a given misinformation post. This exploratory typology paved the way for a structured lens to view how misinformation is tailored to digital environments and target audiences. Conclusions: This cross-platform typology building supports digital health research by integrating AI and qualitative methods to categorize tobacco-related misinformation. It can inform the development of automated misinformation detection models, enhance real-time infodemiological monitoring, and guide digital public health campaigns to build tailored countermessaging.

  • A doctor discusses vaccination in pregnancy with a pregnant individual using the DECIDE communication approach. Source: Image created by the authors; Copyright: The Authors; URL: https://www.jmir.org/2025/1/e77446/; License: Creative Commons Attribution (CC-BY).

    Supporting Informed Vaccine Decision-Making and Communication in Pregnancy Through the Vaccines in Pregnancy Canada Intervention: Multimethod Co-Design Study

    Abstract:

    Background: Vaccination in pregnancy (VIP) protects pregnant individuals and their newborns; yet, uptake remains suboptimal. Pregnant individuals face unique decision-making challenges, and communication with their health care provider (HCP) is crucial for uptake. While there is extensive data on barriers to VIP, interventions applying evidence-based behavior change strategies and co-designed with end users are scarce. Our prior work indicated that a new Canadian intervention was needed. Objective: This study aimed to co-design a multicomponent intervention to support informed decision-making and vaccine communication in pregnancy. Methods: Our multimethod study followed the Double Diamond phases (ie, Discover, Define, Develop, and Deliver) and partnered with a diverse patient advisory council and a multidisciplinary team of HCPs. During the Discover and Define phases, our previous work, we explored gaps and barriers to VIP in Canada and defined the behavior change strategies to address those needs. During the Develop phase, we co-designed and conducted iterative prototyping of four intervention components: (1) a pregnancy-specific communication approach, (2) a skills course for HCPs, (3) a practice change plan, and (4) a website with evidence-based resources for patients and HCPs. We used online and in-person participatory co-design sessions and peer-to-peer, patient-oriented online focus groups and semistructured in-depth interviews. During the Deliver phase, we refined the intervention components through functionality and usability testing. Results: The Vaccines in Pregnancy Canada (VIP Canada) intervention consists of four integrated components: (1) DECIDE (Determine, Elicit, Consent, Interactive discussion, Deliver, and Empower): a patient-centered, pregnancy-specific communication approach for providers to deliver a clear vaccine recommendation while respecting autonomy. (2) Skills course for HCPs: 4 self-paced, online modules to learn the rationale for VIP and the DECIDE communication approach and 2 group sessions. Providers found the skills course clear, practical, and applicable across diverse clinical roles and settings. Feedback led to enhancements, including improved audio-visual synchronization, consistent closed captioning, and the addition of downloadable reference materials to support learning. (3) Practice change plan: an action plan HCPs make to integrate vaccine communication into their practice. (4) VIP Canada website: an evidence-based website with resources to support informed vaccine decision-making for patients and providers. Patient feedback informed iterative refinements to the layout and content of the website to enhance navigation, readability, and representation of diverse identities. Functionality and usability testing demonstrated that patients found the VIP Canada website visually appealing, easy to navigate, and supportive of informed decision-making. Conclusions: The VIP Canada is a promising intervention co-designed to drive behavior change by addressing key barriers to vaccine communication and informed decision-making around our patient partners’ and HCPs’ perspectives and lived experiences to bridge theoretical frameworks with real-world relevance. Next steps include a feasibility study for further refinement and a subsequent effectiveness study. Trial Registration:

Citing this Article

Right click to copy or hit: ctrl+c (cmd+c on mac)

Latest Submissions Open for Peer-Review:

View All Open Peer Review Articles
  • Strategic Planning for Extended Reality Adoption in Healthcare: Mixed Methods Development of the MCDA-XR Framework

    Date Submitted: Dec 17, 2025

    Open Peer Review Period: Dec 17, 2025 - Feb 11, 2026

    Background: Health services increasingly face decisions about how to integrate immersive technologies into routine practice. International guidance highlights the need for structured governance in dig...

    Background: Health services increasingly face decisions about how to integrate immersive technologies into routine practice. International guidance highlights the need for structured governance in digital health, yet extended reality (XR) initiatives are often launched through isolated pilots without a clear assessment of organisational readiness or implementation risk. Although factors influencing XR adoption are well documented, healthcare organisations and system-level decision makers still lack practical, governance-oriented tools to translate these determinants into structured strategic decisions made before implementation. Objective: To develop MCDA-XR, a strategic governance framework that translates behavioural, organisational, and technical implementation determinants into a structured decision-support process for healthcare organisations. Methods: The study followed a sequential mixed-methods design covering the first two phases of a three-stage framework development and validation project. Phase 1 (Identification) defined strategic criteria by integrating theoretical perspectives on organisational complexity, behaviour change, technology acceptance, and immersive safety, together with a targeted review of XR implementation evidence. Phase 2 (Construction) refined the framework through participatory sessions. A multidisciplinary group of 33 stakeholders, including professionals and managers from hospital and primary care settings and postgraduate students, evaluated the proposed criteria for strategic relevance and operational clarity. This process resulted in a final ten-criterion structure and the establishment of a dual-score assessment logic. Phase 3 (Validation), planned as a subsequent step, will examine the predictive value of the framework in longitudinal clinical settings. Results: The development process yielded a framework comprising ten operational criteria grouped into three conceptual domains (Human, Organisational, and Technical). Stakeholder ratings indicated high strategic relevance across all criteria (mean scores above 4.0 on a 5-point scale), with Safety and Comfort receiving the highest prioritisation (mean 4.6). The final instrument applies a dual-assessment approach in which each criterion is rated separately for Strategic Importance and Organisational Readiness. Mapping these dimensions enables organisations to identify priority gaps, particularly areas of high importance and low readiness, and to distinguish between manageable constraints and critical barriers requiring targeted preparatory action prior to implementation. Conclusions: MCDA-XR addresses a key governance gap in XR implementation by providing a structured way to align adoption decisions with institutional priorities and operational constraints. Rather than relying on descriptive feasibility assessments, the framework supports explicit prioritisation and action-oriented decision making at the organisational level. MCDA-XR is positioned for Phase 3 evaluation, which will examine whether its readiness profiles anticipate implementation challenges and early sustainability outcomes in real-world clinical deployments.

  • Feasibility and acceptability of Orygen Virtual Worlds: a virtual world platform for delivering youth mental health treatment

    Date Submitted: Dec 17, 2025

    Open Peer Review Period: Dec 17, 2025 - Feb 11, 2026

    Background: Online virtual worlds are platforms that allow users, represented as avatars, to meet and interact with other users in real time within 3D virtual environments. These platforms have potent...

    Background: Online virtual worlds are platforms that allow users, represented as avatars, to meet and interact with other users in real time within 3D virtual environments. These platforms have potential utility as vehicles to deliver/receive clinical services, especially as a preference to video-conferencing-based telehealth. However, commercial virtual worlds (e.g.,“Second Life”) are often deemed unsuitable due to privacy and safety concerns. Objective: The aim of this study was therefore to co-develop and test a bespoke virtual world platform to deliver routine youth mental health services. Methods: We undertook a participatory-design process to develop the platform (Orygen Virtual Worlds) involving 10 young people with lived experience of mental health difficulties, researchers, software designers and mental health clinicians. We then tested two types of clinic-led interventions delivered through the virtual world (a structured therapy group and an individual therapy) in a public youth mental health service setting in Australia. Participants were patients receiving treatment in the service. The main outcomes were acceptability and feasibility; we also measured symptom change, usability, presence and therapeutic alliance. We conducted qualitative interviews post-intervention with the participants and analysed these interviews using thematic analysis. Results: 15 young people were recruited to the structured group (27% consented from referred) and 8 were recruited to the individual therapy (36% consented from referred). Drop out was higher in the individual therapy than the structured group therapy (38% versus 80%). Acceptability ratings were high for both therapy approaches and there were no significant safety events attributed to using the platform. There were no significant pre-post differences in the symptom outcome measures in either the structured group intervention or individual therapy. The platform was perceived as being comfortable and safe, enjoyable, fun and interactive, and was not confusing to navigate or difficult to use. The qualitative themes included the platform being fun and engaging, making treatment more accessible, providing a safe and inclusive place, fostering connections, positively impacting wellbeing and providing a catalyst for real life functional change. Young people perceived decreased barriers, increased comfort with help-seeking and reduced social stress facilitated by the avatar, communication options (emoji, text, voice) and accessibility from home. Conclusions: Our findings indicate that online virtual world platforms, such as the one we have designed, hold considerable promise for providing interventions for young people in clinical services. Virtual worlds can provide fun and engaging experiences of therapeutic interventions for young people with mental health difficulties which are safe and inclusive, especially for harder to reach groups.

  • Strategy for Hepatitis B and C Virus Testing Campaigns Through Web Services and Digital Advertising in Japan: A Nationwide Cross-Sectional Study with Correspondence Analysis

    Date Submitted: Dec 15, 2025

    Open Peer Review Period: Dec 16, 2025 - Feb 10, 2026

    Background: Public awareness campaigns and testing promotion must be strengthened to eliminate infections with hepatitis B and C viruses (HBV and HCV, respectively) by 2030. Although public health cam...

    Background: Public awareness campaigns and testing promotion must be strengthened to eliminate infections with hepatitis B and C viruses (HBV and HCV, respectively) by 2030. Although public health campaigns using various types of advertising are widely conducted, the appropriate channels for viral hepatitis testing remain unclear. Objective: To identify web services and digital advertising channels appropriate for promoting HBV and HCV testing, segmented by prior testing history and testing intention. Methods: A nationwide cross-sectional online survey of Japanese adults aged 20–69 years was conducted. The respondents answered questions on viral hepatitis testing status, routinely used web services with 180 options, and exposure to digital advertising with 25 choices. Correspondence analysis was used to visualize the associations among the testing segments, web services, and digital advertising. The distinctiveness was quantitatively evaluated. Results: Of the 2000 respondents (1011 men, 989 women), 18.0% (359/2000) reported prior HBV and HCV testing, and 22.1% (441/2000) were unsure whether they had ever been tested. Web services characteristically associated with those who had never been tested but were willing to be tested included Lawson (convenience store) and cosme (cosmetic shopping). The corresponding digital advertising channels included in-store and storefront screens at Welcia (pharmacy chain) and Lawson (convenience store). Segment-specific patterns varied according to age group and sex. Conclusions: In Japan, the convenience store chain Lawson was a distinctively frequent touchpoint, both online and offline, among individuals who wished to undergo viral hepatitis testing. Future studies are needed to determine whether implementing awareness-raising activities through Lawson can lead to an increased uptake of testing and subsequent treatment.

  • Usage and exposure to content of the NHS Healthy Living programme for people with type 2 diabetes: a retrospective observational cohort study

    Date Submitted: Dec 16, 2025

    Open Peer Review Period: Dec 16, 2025 - Feb 10, 2026

    Background: Diabetes self-management and education services can improve health outcomes, but engagement is often low. ‘Healthy Living’ is an online self-management programme for people with type 2...

    Background: Diabetes self-management and education services can improve health outcomes, but engagement is often low. ‘Healthy Living’ is an online self-management programme for people with type 2 diabetes, based on the ‘HeLP-Diabetes’ intervention which demonstrated effectiveness in a randomised controlled trial. Healthy Living was commissioned by NHS England and rolled out nationally into routine care. The website comprises structured learning, unstructured articles (which users could access at any time), and tracking tools such as goal setting. Objective: To investigate overall usage and exposure to content of Healthy Living, including differences in usage/ exposure by user characteristics. Methods: Anonymous usage data from all people (n=27,422) who activated an account between May 2020 and September 2023 were available, including (1) which website activities were accessed, (2) when activities were accessed and (3) how long users spent on each activity. User demographic and usage information was summarised. Logistic regression evaluated the association between user demographics and usage. Results: The median length of time spent on the website in total was 7·6 minutes (IQR 0·6-27·6 minutes); 12,066 (44·0%) users spent less than five minutes on the website and 3,022 (11·0%) spent one hour or more. Of those who activated an account, 69·8% accessed some website content, 40·7% completed the first section of structured education, and 4·7% completed 60% of the structured education. Usage of the unstructured aspects of the programme was low. Female gender, lower deprivation, White ethnicity, and a shorter time since diagnosis were associated with increased usage. Conclusions: This study is one of the first to provide detailed analysis of user engagement with a national digital self-management programme for type 2 diabetes. Usage of with Healthy Living was generally low, in line with other digital self-management programmes. However, encouraging increased usage with the programme has the potential to lead to better health outcomes in people with type 2 diabetes.

  • A Unified Strategy for an Agentic Artificial Intelligence (AI)-assisted Clinical Decision Support (CDS) System for Primary Care: A Mixed-Method Study in Singapore

    Date Submitted: Dec 5, 2025

    Open Peer Review Period: Dec 15, 2025 - Feb 9, 2026

    Background: Primary care providers (PCPs) must consolidate diverse sources of data (clinical, laboratory, administrative etc.) to make clinical decisions. As these sense-making tasks become increasing...

    Background: Primary care providers (PCPs) must consolidate diverse sources of data (clinical, laboratory, administrative etc.) to make clinical decisions. As these sense-making tasks become increasingly challenging, artificial intelligence (AI) offer potential to prioritise guideline-recommended tasks based on clinical benefit. Objective: To demonstrate a participatory approach to the conception, design, and development of such AI-assisted clinical decision support (CDS) systems for primary care. Methods: A mixed methods study was performed, including in-clinic observations at primary care clinics and a focus group involving 20 PCPs in Singapore. The design thinking double diamond process model was applied to define care delivery challenges and conceptualise digital tools. Participants periodically evaluated data saturation, defined as saturation ratio <5% on two consecutive occasions. Results: In-clinic observations produced a patient journey map (Figure 1) highlighting current workflows, data sources and challenges. PCPs described consolidating patients’ medical records, presenting complaint, financial and sociobehavioral considerations before formulating a management plan based on multiple guidelines and the latest literature. PCPs also reported that core challenges included rapid guideline adaptation, repeated manual entry across multiple systems, complex claims processes, and limited patient health ownership (Figure 3). Participants further conceived AI tools that could automate eligibility checks for recommended interventions (e.g. screening and vaccinations), deliver just-in-time reminders at the point-of-care, consolidate actionable sociobehavioral data, contextualise relevant literature, and develop personalised risk-based action lists (Figure 5). Conclusions: This study describes Singapore’s primary care delivery challenges and identifies parallels from international reports in the United States and Europe. Key providers’ considerations for AI-assisted CDS tools to best support care delivery are described. Additional findings include provider concerns over AI-scribes, highlighting a need for robust evaluation and privacy-preserving approaches. A blended implementation strategy for developed countries was developed using AI agents to aggregate and analyse data, suggest “next best action” lists, and prioritise recommended tasks based on AI-predicted health benefit.

  • Integrated Theory, Better Outcomes: A 25-Year Systematic Review of Digital Information Technology (IT)-Based Behavior-Change Tools

    Date Submitted: Dec 15, 2025

    Open Peer Review Period: Dec 15, 2025 - Feb 9, 2026

    Background: Over the past quarter-century, designers of digital behavior change tools have increasingly blended constructs from multiple theories, yet the extent to which such integration enhances int...

    Background: Over the past quarter-century, designers of digital behavior change tools have increasingly blended constructs from multiple theories, yet the extent to which such integration enhances intervention outcomes remains unclear. Objective: To clarify this relationship, this study systematically reviewed literature published between 1999 and 2025, focusing on IT-mediated interventions that explicitly combined at least two behavioral theories and reported intention or behavior outcomes. Methods: Following a registered protocol (PROSPERO CRD42022285741) and PRISMA guidelines, searches across seven databases identified 62 eligible studies. Results: Most investigations were quantitative (77%), featured sample sizes from 16 to 8840, and lasted under 6 months; only 9 applied randomized controlled designs. Twenty-nine theories appeared, with Self-Determination Theory (35%) and the Theory of Planned Behavior (29%) being the most prevalent, often paired with the Technology Acceptance Model or Task-Technology Fit. Integrated models consistently outperformed their single-theory counterparts. Health care and fitness interventions dominated (44%), followed by online learning (23%) and mobile commerce (11%), but long-term follow-ups and explicit mappings of theory to behavior change techniques were scarce, and overall risk-of-bias ratings were moderate. Conclusions: Findings indicate that integrated theoretical frameworks deliver measurably superior behavioral outcomes in digital environments, yet evidence remains short-term and health centric. Future research should extend evaluation horizons beyond 6 months, diversify application domains, apply more rigorous randomized designs, and articulate more transparently how theoretical constructs guide specific intervention techniques to advance replicable, theory-driven digital solutions.