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Ambivalent User Needs as a Challenge and Chance for the Design of a Web-Based Intervention for Gaming Disorder: Qualitative Interview Study With Adolescents and Young Adults

Ambivalent User Needs as a Challenge and Chance for the Design of a Web-Based Intervention for Gaming Disorder: Qualitative Interview Study With Adolescents and Young Adults

The following characteristics of a self-guided WBI were derived from P5’s positive and negative experiences with this type of web-based help: Quality design—the WBI should be attractively designed. Content should be presented in a variety of ways, for example, not only textual content but also playful elements.

Birte Linny Geisler, Kay Uwe Petersen, Sara Hanke, Simon Schurer, Anne Schreiber, Christine Lämmle, Anil Batra, Tobias Renner, Isabel Brandhorst

JMIR Form Res 2025;9:e63258

Public Health Messaging About Dengue on Facebook in Singapore During the COVID-19 Pandemic: Content Analysis

Public Health Messaging About Dengue on Facebook in Singapore During the COVID-19 Pandemic: Content Analysis

Using the keywords “Dengue,” “dengue,” “Mozzie,” “mozzie,” “mosquito,” “breed,” “wolbachia,” “Wolbachia,” “aedes,” “BLOCK,” “B-L-O-C-K,” “SAW,” “S-A-W,” “#mozziewipeout,” “#Mozziewipeout,” “repellent,” “insecticide,” “vase,” “pails,” “pot,” and “soil,” we crawled Facebook posts of the 5 Singapore governmental institutions. We used the Python Web Crawler to crawl the Facebook posts, starting from January 1, 2020.

Shirley S Ho, Mengxue Ou, Nova Mengxia Huang, Agnes SF Chuah, Vanessa S Ho, Sonny Rosenthal, Hye Kyung Kim

JMIR Form Res 2025;9:e66954

Assessing the Accuracy and Reliability of Large Language Models in Psychiatry Using Standardized Multiple-Choice Questions: Cross-Sectional Study

Assessing the Accuracy and Reliability of Large Language Models in Psychiatry Using Standardized Multiple-Choice Questions: Cross-Sectional Study

For example, a recent study found that GPT-4’s clinical scenario responses are influenced by societal biases, causing it to recommend erroneous diagnoses and management plans based on factors such as race and gender [15]. Other studies have consistently shown that LLMs may misinterpret specialized terminology (eg, “egosyntonic”) within domain-specific text [16,17].

Kaitlin Hanss, Karthik V Sarma, Anne L Glowinski, Andrew Krystal, Ramotse Saunders, Andrew Halls, Sasha Gorrell, Erin Reilly

J Med Internet Res 2025;27:e69910