Predicting circadian misalignment with wearable technology: validation of wrist-worn actigraphy and photometry in night shift workers

Sep 12, 2020Sleep

Using wrist-worn devices to detect body clock disruption in night shift workers

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Abstract

Model predictions of dim light melatonin onset (DLMO) from wrist actigraphy showed a Lin's concordance coefficient of 0.70.

  • Actigraphy predicted DLMO in fixed night shift workers with a mean error of 2.88 hours.
  • 76% of predictions were within 2 hours of actual DLMO, and 91% were within 4 hours.
  • This approach provides a valid alternative for assessing circadian phase without the need for in-lab measurements.
  • The study highlights the potential of using passive light and movement data for circadian phase determination.

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