Using Passive Smartphone Sensing for Improved Risk Stratification of Patients With Depression and Diabetes: Cross-Sectional Observational Study

Jan 30, 2019JMIR mHealth and uHealth

Using Smartphone Data to Better Identify Risk in People with Depression and Diabetes

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Abstract

A 63% prevalence of self-reported depression was found among participants with diabetes.

  • Participants with major depression reported significantly lower average daytime activity rates (16.06) compared to those without (18.79), P=.005.
  • The average number of calls made and received was significantly lower for participants with major depression (5.08) than for those without (8.59), P<.001.
  • Lower activity and social contact levels were associated with symptoms of major depression in individuals with diabetes.
  • An extreme gradient boosting machine-learning classifier achieved an average cross-validation accuracy of 79.07% and a test accuracy of 81.05% for classifying symptoms of depression.

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