Department of Mathematics, Dartmouth College, Hanover, NH, USA.
Department of Mathematics, University of Michigan, Ann Arbor, MI, USA.
Sleep. 2021 Oct 11;44(10). doi: 10.1093/sleep/zsab126.
From smart work scheduling to optimal drug timing, there is enormous potential in translating circadian rhythms research results for precision medicine in the real world. However, the pursuit of such effort requires the ability to accurately estimate circadian phase outside of the laboratory. One approach is to predict circadian phase noninvasively using light and activity measurements and mathematical models of the human circadian clock. Most mathematical models take light as an input and predict the effect of light on the human circadian system. However, consumer-grade wearables that are already owned by millions of individuals record activity instead of light, which prompts an evaluation of the accuracy of predicting circadian phase using motion alone. Here, we evaluate the ability of four different models of the human circadian clock to estimate circadian phase from data acquired by wrist-worn wearable devices. Multiple datasets across populations with varying degrees of circadian disruption were used for generalizability. Though the models we test yield similar predictions, analysis of data from 27 shift workers with high levels of circadian disruption shows that activity, which is recorded in almost every wearable device, is better at predicting circadian phase than measured light levels from wrist-worn devices when processed by mathematical models. In those living under normal living conditions, circadian phase can typically be predicted to within 1 h, even with data from a widely available commercial device (the Apple Watch). These results show that circadian phase can be predicted using existing data passively collected by millions of individuals with comparable accuracy to much more invasive and expensive methods.
从智能工作安排到最佳药物时间,将生物钟节律研究结果转化为精准医学在现实世界中具有巨大潜力。然而,追求这一目标需要能够在实验室外准确估计生物钟相位。一种方法是使用光和活动测量以及人类生物钟的数学模型来无创预测生物钟相位。大多数数学模型将光作为输入,并预测光对人体生物钟系统的影响。然而,已经拥有数百万用户的消费级可穿戴设备记录的是活动而不是光,这促使我们评估仅使用运动来预测生物钟相位的准确性。在这里,我们评估了四个不同的人类生物钟模型从佩戴在手腕上的可穿戴设备获取的数据来估计生物钟相位的能力。使用具有不同程度生物钟紊乱的人群的多个数据集来评估其通用性。尽管我们测试的模型产生了相似的预测,但对 27 名具有高度生物钟紊乱的轮班工人的数据进行分析表明,在经过数学模型处理后,可穿戴设备记录的活动比腕戴设备测量的光水平更能准确预测生物钟相位。在正常生活条件下,生物钟相位通常可以在 1 小时内预测,即使使用来自广泛可用的商业设备(Apple Watch)的数据也是如此。这些结果表明,可以使用现有的数据通过被动收集数百万个人的数据来预测生物钟相位,其准确性与更具侵入性和昂贵的方法相当。