Smart Devices and Multimodal Systems for Mental Health Monitoring: From Theory to Application
Review article, 2026
Methods: A PRISMA 2020-guided systematic review was conducted across PubMed/MEDLINE, Scopus, the Web of Science Core Collection, IEEE Xplore, and the ACM Digital Library for studies published between 2013 and 2026. Eligible records reported human applications of wearable/smart devices or multimodal biosignals (e.g., EEG/MEG, ECG/HRV, EMG, EDA/GSR, and sleep/activity) for the detection, monitoring, or management of mental health outcomes. The reviewed literature after predefined inclusion/exclusion criteria clustered into six themes: depression detection and monitoring (37%), stress/anxiety management (18%), post-traumatic stress disorder (PTSD)/trauma (5%), technological innovations for monitoring (25%), brain-state-dependent stimulation/interventions (3%), and socioeconomic context (7%). Across modalities, common analytical pipelines included artifact suppression, feature extraction (time/frequency/nonlinear indices such as entropy and complexity), and machine learning/deep learning models (e.g., SVM, random forests, CNNs, and transformers) for classification or prediction. However, 67% of studies involved sample sizes below 100 participants, limited ecological validity, and lacked external validation; heterogeneity in protocols and outcomes constrained comparability.
Conclusions: Overall, multimodal systems demonstrate strong potential to augment conventional mental health assessment, particularly via wearable cardiac metrics and passive sensing approaches, but current evidence is dominated by proof-of-concept studies. Future work should prioritize standardized reporting, rigorous validation in diverse real-world cohorts, transparent model evaluations, and ethics-by-design principles (privacy, fairness, and clinical governance) to support translation into practice.
mental health
multimodal sensing
heart rate variability
depressive disorder
smart devices
machine learning
biomedical signals
remote sensing technology
wearables
Author
Andreea Violeta Caragață
Universitatea Ovidius din Constanta
Mihaela Hnatiuc
Universitatea Maritima din Constanta
Oana Geman
Chalmers, Computer Science and Engineering (Chalmers), Data Science and AI
Simona Halunga
Politehnica University of Bucharest (UPB)
Adrian Tulbure
Universitatea 1 Decembrie 1918 din Alba Iulia
Catalin J. Iov
Gheorghe Asachi Technical University of Iaşi
Bioengineering
23065354 (eISSN)
Vol. 13 2 165Subject Categories (SSIF 2025)
Medical Life Sciences
Artificial Intelligence
Medical Bioinformatics and Systems Biology
DOI
10.3390/bioengineering13020165