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Machine Learning in Mental Health Promotion for Older Adults: a Scoping Review

Sun, August 9, 8:00 to 9:30am, TBA

Abstract

Objective: Owing to the rapidly aging global population, an increasing number of older adults are experiencing mental health problems. Although machine learning has shown a lot of potential for promoting mental health in this group, there are no scoping reviews in this field. This study aimed to provide an overview of the applications of machine learning in promoting the mental health of older adults and identify associated trends and challenges.
Methods: A scoping review was conducted based on the framework by Arksey and O’Malley. The Web of Science database was searched from its inception to August 9, 2025. We included English-language studies on the use of machine learning to promote mental health among older adults. Relevant information was extracted, summarized, and analyzed.
Results: A total of 85 articles were included in this review. Our review showed that the current research reveals diverse data and algorithms, with machine learning applications concentrated in two directions. One is the prediction of the risk of mental health problems, and the other is the detection and identification of mental health status. There are still challenges in methodology and application directions, although machine learning effectively helps address some limitations of existing research.
Conclusions: Future research may consider improving data quality, implementing longitudinal designs, enhancing model interpretability, and broadening research on various mental health problems and intervention–effect prediction. These initiatives may strengthen the empirical basis for clinical judgment and public health policy.
Keywords: machine learning, scoping review, mental health, older adults, healthy aging

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