Artificial Intelligence in Diagnosing Depression Through Behavioural Cues: A Diagnostic Accuracy Systematic Review and Meta-Analysis
Issued Date
2025-01-01
Resource Type
ISSN
09621067
eISSN
13652702
Scopus ID
2-s2.0-85218677248
Journal Title
Journal of Clinical Nursing
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SCOPUS
Bibliographic Citation
Journal of Clinical Nursing (2025)
Suggested Citation
Goh Y.S., See Q.R., Vongsirimas N., Klanin-Yobas P. Artificial Intelligence in Diagnosing Depression Through Behavioural Cues: A Diagnostic Accuracy Systematic Review and Meta-Analysis. Journal of Clinical Nursing (2025). doi:10.1111/jocn.17694 Retrieved from: https://repository.li.mahidol.ac.th/handle/20.500.14594/105512
Title
Artificial Intelligence in Diagnosing Depression Through Behavioural Cues: A Diagnostic Accuracy Systematic Review and Meta-Analysis
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Author's Affiliation
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Abstract
Aim: To synthesise existing evidence concerning the application of AI methods in detecting depression through behavioural cues among adults in healthcare and community settings. Design: This is a diagnostic accuracy systematic review. Methods: This review included studies examining different AI methods in detecting depression among adults. Two independent reviewers screened, appraised and extracted data. Data were analysed by meta-analysis, narrative synthesis and subgroup analysis. Data Sources: Published studies and grey literature were sought in 11 electronic databases. Hand search was conducted on reference lists and two journals. Results: In total, 30 studies were included in this review. Twenty of which demonstrated that AI models had the potential to detect depression. Speech and facial expression showed better sensitivity, reflecting the ability to detect people with depression. Text and movement had better specificity, indicating the ability to rule out non-depressed individuals. Heterogeneity was initially high. Less heterogeneity was observed within each modality subgroup. Conclusions: This is the first systematic review examining AI models in detecting depression using all four behavioural cues: speech, texts, movement and facial expressions. Implications: A collaborative effort among healthcare professionals can be initiated to develop an AI-assisted depression detection system in general healthcare or community settings. Impact: It is challenging for general healthcare professionals to detect depressive symptoms among people in non-psychiatric settings. Our findings suggested the need for objective screening tools, such as an AI-assisted system, for screening depression. Therefore, people could receive accurate diagnosis and proper treatments for depression. Reporting Method: This review followed the PRISMA checklist. Patients or Public Contribution: No patients or public contribution.