Machine Learning (ML) offers unique and powerful tools for mental health practitioners to improve evidence-based psychological interventions and diagnoses. Indeed, by detecting and analyzing different biosignals, it is possible to differentiate between typical and atypical functioning and to achieve a high level of personalization across all phases of mental health care. This narrative review is aimed at presenting a comprehensive overview of how ML algorithms can be used to infer the psychological states from biosignals. After that, key examples of how they can be used in mental health clinical activity and research are illustrated. A description of the biosignals typically used to infer cognitive and emotional correlates (e.g., EEG and ECG), will be provided, alongside their application in Diagnostic Precision Medicine, Affective Computing, and brain–computer Interfaces. The contents will then focus on challenges and research questions related to ML applied to mental health and biosignals analysis, pointing out the advantages and possible drawbacks connected to the widespread application of AI in the medical/mental health fields. The integration of mental health research and ML data science will facilitate the transition to personalized and effective medicine, and, to do so, it is important that researchers from psychological/ medical disciplines/health care professionals and data scientists all share a common background and vision of the current research.

Sajno, E., Bartolotta, S., Tuena, C., Cipresso, P., Pedroli, E., Riva, G., Machine learning in biosignals processing for mental health: A narrative review, <<FRONTIERS IN PSYCHOLOGY>>, 2023; 13 (N/A): 1066317-N/A. [doi:10.3389/fpsyg.2022.1066317] [https://hdl.handle.net/10807/228648]

Machine learning in biosignals processing for mental health: A narrative review

Sajno, Elena;Bartolotta, Sabrina;Tuena, Cosimo;Cipresso, Pietro;Riva, Giuseppe
2023

Abstract

Machine Learning (ML) offers unique and powerful tools for mental health practitioners to improve evidence-based psychological interventions and diagnoses. Indeed, by detecting and analyzing different biosignals, it is possible to differentiate between typical and atypical functioning and to achieve a high level of personalization across all phases of mental health care. This narrative review is aimed at presenting a comprehensive overview of how ML algorithms can be used to infer the psychological states from biosignals. After that, key examples of how they can be used in mental health clinical activity and research are illustrated. A description of the biosignals typically used to infer cognitive and emotional correlates (e.g., EEG and ECG), will be provided, alongside their application in Diagnostic Precision Medicine, Affective Computing, and brain–computer Interfaces. The contents will then focus on challenges and research questions related to ML applied to mental health and biosignals analysis, pointing out the advantages and possible drawbacks connected to the widespread application of AI in the medical/mental health fields. The integration of mental health research and ML data science will facilitate the transition to personalized and effective medicine, and, to do so, it is important that researchers from psychological/ medical disciplines/health care professionals and data scientists all share a common background and vision of the current research.
2023
Inglese
Sajno, E., Bartolotta, S., Tuena, C., Cipresso, P., Pedroli, E., Riva, G., Machine learning in biosignals processing for mental health: A narrative review, <<FRONTIERS IN PSYCHOLOGY>>, 2023; 13 (N/A): 1066317-N/A. [doi:10.3389/fpsyg.2022.1066317] [https://hdl.handle.net/10807/228648]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10807/228648
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