Mood Prediction of Patients With Mood Disorders by Machine Learning Using Passive Digital Phenotypes Based on the Circadian Rhythm: Prospective Observational Cohort Study

Apr 18, 2019Journal of medical Internet research

Using Machine Learning and Daily Activity Patterns to Predict Mood in People with Mood Disorders

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Abstract

Mood state prediction accuracies for the next 3 days reached 65% across all patients with mood disorders.

  • The mood prediction algorithm utilized machine learning to analyze digital log data from wearable devices and smartphone apps.
  • Prediction accuracies for different mood episodes were 85.3% for no episode, 87% for depressive episodes, 94% for manic episodes, and 91.2% for hypomanic episodes.
  • Area under the curve (AUC) values for mood state predictions indicated strong performance, with values ranging from 0.67 to 0.958 across different patient groups.
  • BD II patients demonstrated balanced prediction accuracies of 82.6% for no episode, 74.4% for depressive episodes, and 87.5% for hypomanic episodes.
  • The study's findings suggest potential for improving prognosis in mood disorder patients through the application of digital technology.

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