Sensor-based surveillance for digitising real-time COVID-19 tracking in the USA (DETECT): a multivariable, population-based, modelling study

Sep 26, 2022The Lancet. Digital health

Using sensor data to track COVID-19 in real time across the USA: a population-based modeling study

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Abstract

35,842 participants enrolled in the DETECT study, with predictions for COVID-19 case counts significantly improved using sensor data.

  • Anomalous sensor data, characterized by higher resting heart rates and lower step counts, was used to enhance predictions of COVID-19 case counts.
  • The model incorporating sensor data outperformed traditional models, with a 32.9% increase in correlation for predictions 12 days ahead in California.
  • In the USA, the correlation for 12-day predictions improved by 12.2% when using combined sensor and historical data.
  • Validation of the model confirmed significant correlations for real-time and future predictions across different time frames.

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