Journal of medical Internet research

Physical signs and habits linked to stress and mental health found using wearables and phones

Updated

Abstract

Wearable sensor features achieved 78.3% accuracy in classifying college students into high or low stress groups.

  • Physiological features from wearable sensors, such as skin conductance and temperature, were the most accurate predictors of stress and mental health.
  • Machine learning applied to multimodal data identified key factors associated with self-reported stress and mental health.
  • Modifiable behavior features, including study duration and mobility patterns, also contributed to stress and mental health classification but with lower accuracy.
  • The study collected over 145,000 hours of data from 201 college students to assess daily behaviors and social networks' influence on health.
  • New tools for data integrity significantly reduced the time needed to clean e-diary data by 69%.

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