Digital Biomarkers for Depression Screening With Wearable Devices: Cross-sectional Study With Machine Learning Modeling

Oct 25, 2021JMIR mHealth and uHealth

Using Wearable Devices and Machine Learning to Identify Signs of Depression

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Abstract

A machine learning model using digital biomarkers achieved an accuracy of 80% in identifying high risk of depression among participants.

  • Greater severity of depressive symptoms was associated with more variation in nighttime heart rate during specific early morning hours.
  • Lower regularity of weekday circadian rhythms and fewer daily peaks in step count were linked to increased depressive symptoms.
  • Evidence suggests limited overall ability of digital biomarkers to detect depression across the entire working adult sample.
  • In specific groups of depressed and healthy participants, the model demonstrated a sensitivity of 82% and a specificity of 78% for detecting high risk of depression.

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