npj Digital Medicine (Nov 2024)

Accurately predicting mood episodes in mood disorder patients using wearable sleep and circadian rhythm features

  • Dongju Lim,
  • Jaegwon Jeong,
  • Yun Min Song,
  • Chul-Hyun Cho,
  • Ji Won Yeom,
  • Taek Lee,
  • Jung-Been Lee,
  • Heon-Jeong Lee,
  • Jae Kyoung Kim

DOI
https://doi.org/10.1038/s41746-024-01333-z
Journal volume & issue
Vol. 7, no. 1
pp. 1 – 13

Abstract

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Abstract Wearable devices enable passive collection of sleep, heart rate, and step-count data, offering potential for mood episode prediction in mood disorder patients. However, current models often require various data types, limiting real-world application. Here, we develop models that predict future episodes using only sleep-wake data, easily gathered through smartphones and wearables when trained on an individual’s sleep-wake history and past mood episodes. Using mathematical modeling to longitudinal data from 168 patients (587 days average clinical follow-up, 267 days wearable data), we derived 36 sleep and circadian rhythm features. These features enabled accurate next-day predictions for depressive, manic, and hypomanic episodes (AUCs: 0.80, 0.98, 0.95). Notably, daily circadian phase shifts were the most significant predictors: delays linked to depressive episodes, advances to manic episodes. This prospective observational cohort study (ClinicalTrials.gov: NCT03088657, 2017-3-23) shows sleep-wake data, combined with prior mood episode history, can effectively predict mood episodes, enhancing mood disorder management.