Scientific Reports (Oct 2023)

Personalized relapse prediction in patients with major depressive disorder using digital biomarkers

  • Srinivasan Vairavan,
  • Homa Rashidisabet,
  • Qingqin S. Li,
  • Seth Ness,
  • Randall L. Morrison,
  • Claudio N. Soares,
  • Rudolf Uher,
  • Benicio N. Frey,
  • Raymond W. Lam,
  • Sidney H. Kennedy,
  • Madhukar Trivedi,
  • Wayne C. Drevets,
  • Vaibhav A. Narayan

DOI
https://doi.org/10.1038/s41598-023-44592-8
Journal volume & issue
Vol. 13, no. 1
pp. 1 – 14

Abstract

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Abstract Major depressive disorder (MDD) is a chronic illness wherein relapses contribute to significant patient morbidity and mortality. Near-term prediction of relapses in MDD patients has the potential to improve outcomes by helping implement a ‘predict and preempt’ paradigm in clinical care. In this study, we developed a novel personalized (N-of-1) encoder-decoder anomaly detection-based framework of combining anomalies in multivariate actigraphy features (passive) as triggers to utilize an active concurrent self-reported symptomatology questionnaire (core symptoms of depression and anxiety) to predict near-term relapse in MDD. The framework was evaluated on two independent longitudinal observational trials, characterized by regular bimonthly (every other month) in-person clinical assessments, weekly self-reported symptom assessments, and continuous activity monitoring data with two different wearable sensors for ≥ 1 year or until the first relapse episode. This combined passive-active relapse prediction framework achieved a balanced accuracy of ≥ 71%, false alarm rate of ≤ 2.3 alarm/patient/year with a median relapse detection time of 2–3 weeks in advance of clinical onset in both studies. The study results suggest that the proposed personalized N-of-1 prediction framework is generalizable and can help predict a majority of MDD relapses in an actionable time frame with relatively low patient and provider burden.