A Co‐Segmentation Algorithm to Predict Emotional Stress From Passively Sensed mHealth Data

ABSTRACT We develop a data‐driven cosegmentation algorithm of passively sensed and self‐reported active variables collected through smartphones to identify emotionally stressful states in middle‐aged and older patients with mood disorders undergoing therapy, some of whom also have chronic pain. Our...

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Published inStatistics in medicine Vol. 44; no. 10-12; pp. e70099 - n/a
Main Authors Kim, Younghoon, Basu, Sumanta, Banerjee, Samprit
Format Journal Article
LanguageEnglish
Published Hoboken, USA John Wiley & Sons, Inc 01.05.2025
Wiley Subscription Services, Inc
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ISSN0277-6715
1097-0258
1097-0258
DOI10.1002/sim.70099

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Summary:ABSTRACT We develop a data‐driven cosegmentation algorithm of passively sensed and self‐reported active variables collected through smartphones to identify emotionally stressful states in middle‐aged and older patients with mood disorders undergoing therapy, some of whom also have chronic pain. Our method leverages the association between the different types of time series. These data are typically nonstationary, with meaningful associations often occurring only over short time windows. Traditional machine learning (ML) methods, when applied globally on the entire time series, often fail to capture these time‐varying local patterns. Our approach first segments the passive sensing variables by detecting their change points, then examines segment‐specific associations with the active variable to identify cosegmented periods that exhibit distinct relationships between stress and passively sensed measures. We then use these periods to predict future emotional stress states using standard ML methods. By shifting the unit of analysis from individual time points to data‐driven segments of time and allowing for different associations in different segments, our algorithm helps detect patterns that only exist within short‐time windows. We apply our method to detect periods of stress in patient data collected during ALACRITY Phase I study. Our findings indicate that the data‐driven segmentation algorithm identifies stress periods more accurately than traditional ML methods that do not incorporate segmentation.
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ISSN:0277-6715
1097-0258
1097-0258
DOI:10.1002/sim.70099