Predicting Depressive Symptom Severity Through Individuals’ Nearby Bluetooth Device Count Data Collected by Mobile Phones: Preliminary Longitudinal Study

Jul 30, 2021JMIR mHealth and uHealth

Estimating Depression Severity Using Nearby Bluetooth Device Counts from Mobile Phones: Early Long-Term Study

AI simplified

Abstract

The hierarchical Bayesian linear regression model achieved a prediction metric of R=0.526 for depressive symptom severity using nearby Bluetooth device count data.

  • Significant associations were found between changes in Bluetooth features and depressive symptom severity over the preceding 2 weeks.
  • As depressive symptoms worsened, the nearby Bluetooth device count generally decreased, along with reduced variance and periodicity.
  • Circadian rhythm disruptions and increased irregularity in Bluetooth device sequences were observed alongside increased depressive symptoms.
  • Bluetooth features explained an additional 18.8% of the variance in depressive symptom severity compared to a baseline model without these features.

AI simplified

Full Text

We can’t show the full text here under this license. Use the link below to read it at the source.

what lands in your inbox each week:

  • 📚7 fresh studies
  • 📝plain-language summaries
  • direct links to original studies
  • 🏅top journal indicators
  • 📅weekly delivery
  • 🧘‍♂️always free