Author:
Perez-Pozuelo Ignacio,Posa Marius,Spathis Dimitris,Westgate Kate,Wareham Nicholas,Mascolo Cecilia,Brage Søren,Palotti Joao
Abstract
AbstractThe adoption of multisensor wearables presents the opportunity of longitudinal monitoring of sleep in large populations. Personalized yet device-agnostic algorithms can sidestep laborious human annotations and objectify cross-cohort comparisons. We developed and tested a heart rate-based algorithm that captures inter- and intra-individual sleep differences in free-living conditions and does not require human input. We evaluated it on four study cohorts using different research- and consumer-grade devices for over 2000 nights. Recording periods included both 24 h free-living and conventional lab-based night-only data. We compared our optimized method against polysomnography, sleep diaries and sleep periods produced through a state-of-the-art acceleration based method. Against sleep diaries, the algorithm yielded a mean squared error of 0.04–0.06 and a total sleep time (TST) deviation of $$-$$
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2.70 (± 5.74) and 12.80 (± 3.89) minutes, respectively. When evaluated with PSG lab studies, the MSE ranged between 0.06 and 0.11 yielding a time deviation between $$-$$
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29.07 and $$-$$
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55.04 minutes. These results showcase the value of this open-source, device-agnostic algorithm for the reliable inference of sleep in free-living conditions and in the absence of annotations.
Funder
GlaxoSmithKline
Engineering and Physical Sciences Research
NIHR Cambridge Biomedical Research
Publisher
Springer Science and Business Media LLC
Cited by
16 articles.
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