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Content Recommendation Systems in Web-Based Mental Health Care: Real-world Application and Formative Evaluation.

Akhil ChaturvediBrandon S AylwardSetu ShahGrant GrazianiJoan ZhangBobby ManuelEmmanuel TelewaStefan FroelichOlalekan BaruwaPrathamesh Param KulkarniWatson ΞSarah Kunkle
Published in: JMIR formative research (2023)
Recommender systems can help scale and supplement digital mental health care with personalized content and self-care recommendations. Onboarding-based recommendations are ideal for "cold starting" the process of recommending content for new users and users that tend to use the app just for content but not for therapy or coaching. The conversation-based recommendation algorithm allows for dynamic recommendations based on information gathered during coaching sessions, which is a critical capability, given the changing nature of mental health needs during treatment. The proposed algorithms are just one step toward the direction of outcome-driven personalization in mental health. Our future work will involve a robust causal evaluation of these algorithms using randomized controlled trials, along with consumer feedback-driven improvement of these algorithms, to drive better clinical outcomes.
Keyphrases
  • mental health
  • machine learning
  • deep learning
  • clinical practice
  • randomized controlled trial
  • mental illness
  • health information
  • systematic review
  • double blind