Automated mood disorder symptoms monitoring from multivariate time-series sensory data: getting the full picture beyond a single number

dc.contributor.authorCorponi, Filippo
dc.contributor.authorLi, Bryan M.
dc.contributor.authorAnmella, Gerard
dc.contributor.authorMas, Ariadna
dc.contributor.authorPacchiarotti, Isabella
dc.contributor.authorValentí Ribas, Marc
dc.contributor.authorGrande i Fullana, Iria
dc.contributor.authorBenabarre, Antonio
dc.contributor.authorGarriga, Marina
dc.contributor.authorVieta i Pascual, Eduard, 1963-
dc.contributor.authorLawrie, Stephen M.
dc.contributor.authorWhalley, Heather
dc.contributor.authorHidalgo Mazzei, Diego
dc.contributor.authorVergari, Antonio
dc.date.accessioned2025-05-14T18:06:30Z
dc.date.available2025-05-14T18:06:30Z
dc.date.issued2024-03-26
dc.date.updated2025-05-14T18:06:30Z
dc.description.abstractMood disorders (MDs) are among the leading causes of disease burden worldwide. Limited specialized care availability remains a major bottleneck thus hindering pre-emptive interventions. MDs manifest with changes in mood, sleep, and motor activity, observable in ecological physiological recordings thanks to recent advances in wearable technology. Therefore, near-continuous and passive collection of physiological data from wearables in daily life, analyzable with machine learning (ML), could mitigate this problem, bringing MDs monitoring outside the clinician's office. Previous works predict a single label, either the disease state or a psychometric scale total score. However, clinical practice suggests that the same label may underlie different symptom profiles, requiring specific treatments. Here we bridge this gap by proposing a new task: inferring all items in HDRS and YMRS, the two most widely used standardized scales for assessing MDs symptoms, using physiological data from wearables. To that end, we develop a deep learning pipeline to score the symptoms of a large cohort of MD patients and show that agreement between predictions and assessments by an expert clinician is clinically significant (quadratic Cohen's κ and macro-average F1 score both of 0.609). While doing so, we investigate several solutions to the ML challenges associated with this task, including multi-task learning, class imbalance, ordinal target variables, and subject-invariant representations. Lastly, we illustrate the importance of testing on out-of-distribution samples.
dc.format.extent9 p.
dc.format.mimetypeapplication/pdf
dc.identifier.idgrec747879
dc.identifier.issn2158-3188
dc.identifier.pmid38531865
dc.identifier.urihttps://hdl.handle.net/2445/221028
dc.language.isoeng
dc.publisherNature Publishing Group
dc.relation.isformatofReproducció del document publicat a: https://doi.org/10.1038/s41398-024-02876-1
dc.relation.ispartofTranslational Psychiatry, 2024, vol. 14, num.1
dc.relation.urihttps://doi.org/10.1038/s41398-024-02876-1
dc.rightscc-by-nc-nd (c) Corponi, F. et al., 2024
dc.rights.accessRightsinfo:eu-repo/semantics/openAccess
dc.rights.urihttp://creativecommons.org/licenses/by-nc-nd/4.0/
dc.sourceArticles publicats en revistes (Medicina)
dc.subject.classificationAprenentatge automàtic
dc.subject.classificationTrastorns del son
dc.subject.classificationHumor (Psicologia)
dc.subject.classificationDiagnòstic
dc.subject.otherMachine learning
dc.subject.otherSleep disorders
dc.subject.otherMood (Psychology)
dc.subject.otherDiagnosis
dc.titleAutomated mood disorder symptoms monitoring from multivariate time-series sensory data: getting the full picture beyond a single number
dc.typeinfo:eu-repo/semantics/article
dc.typeinfo:eu-repo/semantics/publishedVersion

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