JMIR mHealth and uHealth (May 2019)

Validation of the Mobile App–Recorded Circadian Rhythm by a Digital Footprint

  • Lin, Yu-Hsuan,
  • Wong, Bo-Yu,
  • Pan, Yuan-Chien,
  • Chiu, Yu-Chuan,
  • Lee, Yang-Han

DOI
https://doi.org/10.2196/13421
Journal volume & issue
Vol. 7, no. 5
p. e13421

Abstract

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BackgroundModern smartphone use is pervasive and could be an accessible method of evaluating the circadian rhythm and social jet lag via a mobile app. ObjectiveThis study aimed to validate the app-recorded sleep time with daily self-reports by examining the consistency of total sleep time (TST), as well as the timing of sleep onset and wake time, and to validate the app-recorded circadian rhythm with the corresponding 30-day self-reported midpoint of sleep and the consistency of social jetlag. MethodsThe mobile app, Rhythm, recorded parameters and these parameters were hypothesized to be used to infer a relative long-term pattern of the circadian rhythm. In total, 28 volunteers downloaded the app, and 30 days of automatically recorded data along with self-reported sleep measures were collected. ResultsNo significant difference was noted between app-recorded and self-reported midpoint of sleep time and between app-recorded and self-reported social jetlag. The overall correlation coefficient of app-recorded and self-reported midpoint of sleep time was .87. ConclusionsThe circadian rhythm for 1 month, daily TST, and timing of sleep onset could be automatically calculated by the app and algorithm.