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Published on in Vol 9 (2025)

Preprints (earlier versions) of this paper are available at https://preprints.jmir.org/preprint/71652, first published .
Young woman participating in an online video call on her laptop at a desk with a lamp.

Web-Based Video Platforms as Sources of Information on Body Image Dissatisfaction in Adolescents: Content and Quality Analysis of a Cross-Sectional Study

Web-Based Video Platforms as Sources of Information on Body Image Dissatisfaction in Adolescents: Content and Quality Analysis of a Cross-Sectional Study

Journals

  1. Wang G, Kuang J, Qi Y, Li J. Information quality of videos related to adolescent depression on social media platforms: a comparative study of TikTok and BiliBili. Frontiers in Public Health 2025;13 View
  2. Wei X, Sun Z, Zhu Z, Zheng L, Zhou D, Chen M. Short-form video platforms as a source of ankylosing spondylitis information: a cross-sectional content analysis. Frontiers in Digital Health 2026;8 View
  3. Xu Z, Ding J, Wang J, Liang R, Xie S, Huang X, Le Y. Evaluating the reliability and quality of asthma educational content on TikTok and Bilibili: A cross-sectional content analysis. DIGITAL HEALTH 2026;12 View
  4. Sun T, Zhao R, Guo M, Zhu Y, Zheng Y, Zhang Y. Health information quality of gallbladder cancer videos on TikTok and Bilibili in China: A cross-sectional content analysis. DIGITAL HEALTH 2026;12 View
  5. Zhang S, Yang X, Bai H, Wang H, Chen Y, Liu P, Zhou C, Li H, Zhang M. Evaluating the reliability and quality of osteoporosis content on TikTok and BiliBili: A cross-sectional content analysis. DIGITAL HEALTH 2026;12 View
  6. Xie Y, Liang Y, Song H, Liu Y, Na Y, Gao J, Ying A, Chen C. Comparative assessment of the quality and reliability of cerebral infarction–related short-video health information on TikTok and Bilibili: A cross-sectional study. Medicine 2026;105(24):e49206 View
  7. Jiao X, Liu X, Liu M, Wang Y, Yang S, Yang X, Xie Y, Guo Y, Yan F, Zhang Y. The pivotal role of video duration in health science popularization: A mixed-methods analysis integrating machine learning and fuzzy-set qualitative comparative analysis. DIGITAL HEALTH 2026;12 View