Harnessing Consumer Wearable Digital Biomarkers for Individualized Recognition of Postpartum Depression Using the All of Us Research Program Data Set: Cross-Sectional Study

May 2, 2024JMIR mHealth and uHealth

Using Wearable Device Data to Identify Postpartum Depression in Individuals

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Abstract

In a cohort of fewer than 60 women, machine learning models utilizing digital biomarkers from consumer wearables achieved a multiclass area under the receiver operating characteristic curve (mAUC) of 0.85 for recognizing postpartum depression (PPD).

  • Digital biomarkers related to heart rate, physical activity, and energy expenditure may effectively distinguish between different periods surrounding childbirth, including postpartum with and without depression.
  • Random forest models demonstrated superior performance in identifying PPD compared to generalized linear models, support vector machines, and k-nearest neighbor models.
  • The model's specificity was confirmed as performance decreased in women who did not experience PPD.
  • A history of depression did not appear to influence the model's ability to recognize PPD.
  • Calories burned during the basal metabolic rate was identified as the most predictive biomarker for PPD.

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