Depression Prediction by Using Ecological Momentary Assessment, Actiwatch Data, and Machine Learning: Observational Study on Older Adults Living Alone

Oct 18, 2019JMIR mHealth and uHealth

Using Daily Mood Tracking, Movement Data, and Machine Learning to Predict Depression in Older Adults Living Alone

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Abstract

38% of older adults living alone were classified into the probable depression group based on validated scales.

  • Participants reported significantly lower normal mood and physical activity levels.
  • Higher levels of white and RGB light exposure were observed across various 4-hour time frames.
  • Sleep efficiency was identified as a key factor in modeling depression classification.
  • The logit model achieved the highest accuracy (0.910) among the machine learning models tested.
  • Conventional classification using binary logistic regression also demonstrated good model fit with an accuracy of 0.705.

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