Background: Wearable technology is used by consumers worldwide for continuous activity monitoring in daily life but more recently also for classifying or predicting mental health parameters like stress or depression levels. Previous studies identified, based on traditional approaches, that physical activity is a relevant factor in the prevention or management of mental health. However, upcoming artificial intelligence methods have not yet been fully established in the research field of physical activity and mental health.
Objective: This systematic review aims to provide a comprehensive overview of studies that integrated passive monitoring of physical activity data measured via wearable technology in machine learning algorithms for the detection, prediction, or classification of mental health states and traits.
Methods: We conducted a review of studies processing wearable data to gain insights into mental health parameters. Eligibility criteria were (1) the study uses wearables or smartphones to acquire physical behavior and optionally other sensor measurement data, (2) the study must use machine learning to process the acquired data, and (3) the study had to be published in a peer-reviewed English language journal. Studies were identified via a systematic search in 5 electronic databases.
Results: Of 11,057 unique search results, 49 published papers between 2016 and 2023 were included. Most studies examined the connection between wearable sensor data and stress (n=15, 31%) or depression (n=14, 29%). In total, 71% (n=35) of the studies had less than 100 participants, and 47% (n=23) had less than 14 days of data recording. More than half of the studies (n=27, 55%) used step count as movement measurement, and 44% (n=21) used raw accelerometer values. The quality of the studies was assessed, scoring between 0 and 18 points in 9 categories (maximum 2 points per category). On average, studies were rated 6.47 (SD 3.1) points.
Conclusions: The use of wearable technology for the detection, prediction, or classification of mental health states and traits is promising and offers a variety of applications across different settings and target groups. However, based on the current state of literature, the application of artificial intelligence cannot realize its full potential mostly due to a lack of methodological shortcomings and data availability. Future research endeavors may focus on the following suggestions to improve the quality of new applications in this context: first, by using raw data instead of already preprocessed data. Second, by using only relevant data based on empirical evidence. In particular, crafting optimal feature sets rather than using many individual detached features and consultation with in-field professionals. Third, by validating and replicating the existing approaches (ie, applying the model to unseen data). Fourth, depending on the research aim (ie, generalization vs personalization) maximizing the sample size or the duration over which data are collected.
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http://dx.doi.org/10.2196/59660 | DOI Listing |
Ann Ig
March 2025
Department of Global Public Health Policy and Governance, Prasanna School of Public Health, Manipal Academy of Higher Education, Manipal, India.
Background: Seafarers experience unique challenges related to their profession, including risks for mental health. The present study explored the correlates of depression among seafarers in India.
Methods: Following ethics clearance, this cross-sectional study was conducted at an international shipping company in Mumbai, India.
Child Maltreat
March 2025
Factor-Inwentash Faculty of Social Work, University of Toronto, Toronto, ON, Canada.
Childhood physical and/or sexual abuse are associated with negative physical and mental health outcomes in adulthood. Protective factors may contribute to resilience and reduce the risk of these adult health outcomes. This study aims to determine if the presence of a protective adult can mitigate the association between childhood abuse and negative adult health outcomes.
View Article and Find Full Text PDFPsychol Med
March 2025
Centre for Innovation in Mental Health, School of Psychology, University of Southampton, Southampton, UK.
Background: It is unknown whether there is a general factor that accounts for the propensity for both physical and mental conditions in different age groups and how it is associated with lifestyle and well-being.
Methods: We analyzed health conditions data from the Millennium Cohort Study (MCS) (age = 17; N = 19,239), the National Child Development Study (NCDS) (age = 44; N = 9293), and the English Longitudinal Study of Ageing (ELSA) (age ≥ 50; N = 7585). The fit of three Confirmatory Factor models was used to select the optimal solution by Comparative Fit Index, Tucker-Lewis Index, and Root Mean Square Error of Approximation.
Pers Med Psychiatry
April 2024
Department of Psychiatry and Behavioral Sciences, Stanford University School of Medicine, Stanford, CA 94305, USA.
Background: We previously identified a cognitive biotype of depression characterized by dysfunction of the brain's cognitive control circuit, comprising the dorsolateral prefrontal cortex (dLPFC) and dorsal anterior cingulate cortex (dACC), derived from functional magnetic resonance imaging (fMRI). We evaluate these circuit metrics as personalized predictors of antidepressant remission.
Methods: We undertook a secondary analysis of data from the international Study to Predict Optimized Treatment in Depression (iSPOT-D) for 159 patients who completed fMRI during a GoNoGo task, 8 weeks treatment with one of three study antidepressants and who were assessed for remission status (Hamilton Depression Rating Scale score of ≤ 7).
Circ Rep
March 2025
Department of Cardiorenal and Cerebrovascular Medicine, Faculty of Medicine, Kagawa University Kagawa Japan.
Left ventricular assist devices (LVADs) serve as critical life-sustaining therapy for patients with end-stage heart failure awaiting heart transplantation, significantly improving survival rates and enabling social reintegration. However, many patients with LVAD face multiple challenges in their daily lives and social reintegration, such as anxiety about the device, low societal awareness, and economic and psychological burdens. In Japan, where prolonged waiting periods for heart transplants are inevitable, these challenges further exacerbate the economic and psychological burdens on both patients and caregivers.
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