Using Wearable Sensors to Measure and Predict Personal Circadian Lighting Exposure in Nursing Home Residents: Model Development and Validation

Oct 7, 2025JMIR aging

Measuring and Predicting Daily Light Exposure in Nursing Home Residents Using Wearable Sensors

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Abstract

Calibration models for photopic lux and correlated color temperature achieved strong accuracy, with adjusted R² values of 0.858 and 0.982, respectively.

  • Wearable sensors can effectively track individual circadian lighting exposure, which may impact health outcomes for people with dementia.
  • Predictive models for circadian stimulus were successfully developed, with the random forest model showing an adjusted R² of 0.915.
  • Significant individual variations in circadian light exposure were observed, indicating the need for personalized lighting evaluations.
  • The methodology provides a cost-effective alternative to traditional spectrometer measurements for continuous monitoring in health care settings.
  • Challenges related to sensor wearability, durability, and user compliance were noted, suggesting areas for future improvement.

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