Predicting Depression From Smartphone Behavioral Markers Using Machine Learning Methods, Hyperparameter Optimization, and Feature Importance Analysis: Exploratory Study

Jul 13, 2021JMIR mHealth and uHealth

Using Smartphone Behavior and Machine Learning to Predict Depression

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Abstract

Of 629 participants, 16.81% exhibited depressed scores as identified by the PHQ-8 assessment.

  • A significant positive correlation exists between screen status-normalized entropy and depression (r=0.14, P<.001).
  • Bivariate linear mixed models indicate a significant positive association between screen status-normalized entropy and depression (ÎČ=.48, P=.03).
  • Machine learning algorithms achieved high predictive metrics, with accuracy ranging from 96.44% to 98.14%.
  • Behavioral markers related to screen and internet connectivity were identified as the most influential in predicting depression.
  • The study supports the feasibility of using smartphone data to augment traditional depression assessment methods.

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