JMIR Mental Health (Dec 2022)

Meeting the Unmet Needs of Individuals With Mental Disorders: Scoping Review on Peer-to-Peer Web-Based Interactions

  • Dawid Storman,
  • Paweł Jemioło,
  • Mateusz Jan Swierz,
  • Zuzanna Sawiec,
  • Ewa Antonowicz,
  • Anna Prokop-Dorner,
  • Marcelina Gotfryd-Burzyńska,
  • Malgorzata M Bala

DOI
https://doi.org/10.2196/36056
Journal volume & issue
Vol. 9, no. 12
p. e36056

Abstract

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BackgroundAn increasing number of online support groups are providing advice and information on topics related to mental health. ObjectiveThis study aimed to investigate the needs that internet users meet through peer-to-peer interactions. MethodsA search of 4 databases was performed until August 15, 2022. Qualitative or mixed methods (ie, qualitative and quantitative) studies investigating interactions among internet users with mental disorders were included. The φ coefficient was used and machine learning techniques were applied to investigate the associations between the type of mental disorders and web-based interactions linked to seeking help or support. ResultsOf the 13,098 identified records, 44 studies (analyzed in 54 study-disorder pairs) that assessed 82,091 users and 293,103 posts were included. The most frequent interactions were noted for people with eating disorders (14/54, 26%), depression (12/54, 22%), and psychoactive substance use disorders (9/54, 17%). We grouped interactions between users into 42 codes, with the empathy or compassion code being the most common (41/54, 76%). The most frequently coexisting codes were request for information and network (35 times; φ=0.5; P<.001). The algorithms that provided the best accuracy in classifying disorders by interactions were decision trees (44/54, 81%) and logistic regression (40/54, 74%). The included studies were of moderate quality. ConclusionsPeople with mental disorders mostly use the internet to seek support, find answers to their questions, and chat. The results of this analysis should be interpreted as a proof of concept. More data on web-based interactions among these people might help apply machine learning methods to develop a tool that might facilitate screening or even support mental health assessment.