Longitudinal Digital Phenotyping of Multiple Sclerosis Severity Using Passively Sensed Behaviors and Ecological Momentary Assessments: Real-World Evaluation

Jun 3, 2025Journal of medical Internet research

Tracking Multiple Sclerosis Severity Over Time Using Everyday Behavior and Quick Self-Reports in Real Life

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Abstract

Data from 104 participants with multiple sclerosis generated approximately 12,500 days of passive sensor and behavioral health data.

  • Machine learning algorithms predicted depressive symptoms with an accuracy of 80.6%.
  • Predictions for high global MS symptom burden, severe fatigue, and poor sleep quality achieved accuracies of 77.3%, 73.8%, and 72.0%, respectively.
  • Sensor data alone was largely sufficient for predicting symptom severity.
  • Minimal active patient input improved the prediction of depressive symptoms.
  • This approach may enhance continuous self-monitoring of symptoms in real-world settings.

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