Evaluation of Machine Learning to Detect Influenza Using Wearable Sensor Data and Patient-Reported Symptoms: Cohort Study

Oct 4, 2024Journal of medical Internet research

Using Machine Learning to Identify Flu from Wearable Device Data and Patient Symptoms

AI simplified

Abstract

An influenza diagnostic test result was available for 953 participants in HTRI and 925 in FluStudy2020.

  • Machine-learning algorithms using combined symptom and activity data achieved a training AUC of 0.77 and a validation AUC of 0.74.
  • The symptom-only model had a training AUC of 0.73 and a validation AUC of 0.72.
  • Performance metrics for the activity-only model showed a training AUC of 0.68 and a validation AUC of 0.65.
  • The top features associated with influenza detection included cough, mean resting heart rate during sleep, fever, and total minutes in bed.
  • Moderate accuracy in influenza detection suggests challenges in translating results from research-grade sensors to commercial-grade sensors.

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:

  • πŸ“š7 fresh studies
  • πŸ“plain-language summaries
  • βœ…direct links to original studies
  • πŸ…top journal indicators
  • πŸ“…weekly delivery
  • πŸ§˜β€β™‚οΈalways free