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Identifying patient-specific behaviors to understand illness trajectories and predict relapses in bipolar disorder using passive sensing and deep anomaly detection: protocol for a contactless cohort study
A. Ortiz, A. Hintze, R. Burnett, C. Gonzalez-Torres, S. Unger, D. Yang, J. Miao, M. Alda, BH. Mulsant
Language English Country Great Britain
Document type Journal Article, Research Support, Non-U.S. Gov't, Research Support, N.I.H., Extramural
NLK
BioMedCentral
from 2001-12-01
BioMedCentral Open Access
from 2001
Directory of Open Access Journals
from 2001
Free Medical Journals
from 2001
PubMed Central
from 2001
Europe PubMed Central
from 2001
ProQuest Central
from 2009-01-01
Open Access Digital Library
from 2001-06-01
Open Access Digital Library
from 2001-01-01
Open Access Digital Library
from 2001-01-01
Medline Complete (EBSCOhost)
from 2001-01-01
Health & Medicine (ProQuest)
from 2009-01-01
Psychology Database (ProQuest)
from 2009-01-01
ROAD: Directory of Open Access Scholarly Resources
from 2001
Springer Nature OA/Free Journals
from 2001-12-01
- MeSH
- Bipolar Disorder * diagnosis MeSH
- Adult MeSH
- Cohort Studies MeSH
- Humans MeSH
- Mood Disorders diagnosis MeSH
- Recurrence MeSH
- Check Tag
- Adult MeSH
- Humans MeSH
- Publication type
- Journal Article MeSH
- Research Support, Non-U.S. Gov't MeSH
- Research Support, N.I.H., Extramural MeSH
BACKGROUND: Predictive models for mental disorders or behaviors (e.g., suicide) have been successfully developed at the level of populations, yet current demographic and clinical variables are neither sensitive nor specific enough for making individual clinical predictions. Forecasting episodes of illness is particularly relevant in bipolar disorder (BD), a mood disorder with high recurrence, disability, and suicide rates. Thus, to understand the dynamic changes involved in episode generation in BD, we propose to extract and interpret individual illness trajectories and patterns suggestive of relapse using passive sensing, nonlinear techniques, and deep anomaly detection. Here we describe the study we have designed to test this hypothesis and the rationale for its design. METHOD: This is a protocol for a contactless cohort study in 200 adult BD patients. Participants will be followed for up to 2 years during which they will be monitored continuously using passive sensing, a wearable that collects multimodal physiological (heart rate variability) and objective (sleep, activity) data. Participants will complete (i) a comprehensive baseline assessment; (ii) weekly assessments; (iii) daily assessments using electronic rating scales. Data will be analyzed using nonlinear techniques and deep anomaly detection to forecast episodes of illness. DISCUSSION: This proposed contactless, large cohort study aims to obtain and combine high-dimensional, multimodal physiological, objective, and subjective data. Our work, by conceptualizing mood as a dynamic property of biological systems, will demonstrate the feasibility of incorporating individual variability in a model informing clinical trajectories and predicting relapse in BD.
Centre for Addiction and Mental Health 100 Stokes St Rm 4229 Toronto ON Canada
Department of Computer Science Dalarna University Dalarna Sweden
Department of Pharmacology University of Toronto Toronto Ontario Canada
Department of Psychiatry Dalhousie University Halifax Nova Scotia Canada
Department of Psychiatry University of Toronto Toronto Ontario Canada
References provided by Crossref.org
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