Using Wearable Devices and Speech Data for Personalized Machine Learning in Early Detection of Mental Disorders: Protocol for a Participatory Research Study

Nov 13, 2023JMIR research protocols

Using Wearable Devices and Speech to Personalize Machine Learning for Early Mental Disorder Detection

AI simplified

Abstract

The study aims to recruit at least 50 participants to develop a personalized machine learning tool for detecting early signs of depression, anxiety, and stress.

  • Data will be collected from wearable devices, voice recordings, and self-reports to identify mental disorder symptoms.
  • Machine learning models will utilize multimodal data to detect patterns associated with mental health indicators.
  • Longitudinal data collection may improve the accuracy of the models and highlight important features for detection.
  • Personalized models will be compared against population-level models to assess their effectiveness.

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