论文标题
级别设置的卡尔曼过滤器方法来估计昼夜节律阶段及其可穿戴数据的不确定性
A Level Set Kalman Filter Approach to Estimate the Circadian Phase and its Uncertainty from Wearable Data
论文作者
论文摘要
昼夜节律是一个内部计时器,可以协调行为和生理学的每日节奏,包括睡眠和激素分泌。准确跟踪昼夜节律的状态,即昼夜节律,具有巨大的精密药物潜力。可穿戴设备提供了一个机会,可以估算现实世界中的昼夜节律,因为它们可以非侵入性监测受昼夜节律影响的各种生理输出。但是,准确地从可穿戴数据中估算昼夜节律的阶段仍然具有挑战性,这主要是由于缺乏将一分钟可穿戴的数据与昼夜节相中知识相结合的方法。为了解决这个问题,我们提出了一个框架,该框架集成了多个时间尺度的生理数据以估计昼夜节律阶段,以及基于贝叶斯推论的有效实现算法以及一种新的状态空间估计方法,称为级别集合KALMAN滤镜。我们的数值实验表明,我们的方法始终超过先前的昼夜节相估计方法。此外,我们的方法使我们能够检查噪声从不同来源对估计的贡献,这对于先前的方法是不可行的。我们发现,与外部刺激无关的内部噪声是确定估计结果的关键因素。最后,我们开发了一个用户友好的计算包,并将其应用于现实世界数据以证明我们方法的潜在价值。我们的结果为系统地了解昼夜节律的现实动态奠定了基础。
The circadian clock is an internal timer that coordinates the daily rhythms of behavior and physiology, including sleep and hormone secretion. Accurately tracking the state of the circadian clock, or circadian phase, holds immense potential for precision medicine. Wearable devices present an opportunity to estimate the circadian phase in the real world, as they can non-invasively monitor various physiological outputs influenced by the circadian clock. However, accurately estimating circadian phase from wearable data remains challenging, primarily due to the lack of methods that integrate minute-by-minute wearable data with prior knowledge of the circadian phase. To address this issue, we propose a framework that integrates multi-time scale physiological data to estimate the circadian phase, along with an efficient implementation algorithm based on Bayesian inference and a new state space estimation method called the level set Kalman filter. Our numerical experiments indicate that our approach outperforms previous methods for circadian phase estimation consistently. Furthermore, our method enables us to examine the contribution of noise from different sources to the estimation, which was not feasible with prior methods. We found that internal noise unrelated to external stimuli is a crucial factor in determining estimation results. Lastly, we developed a user-friendly computational package and applied it to real-world data to demonstrate the potential value of our approach. Our results provide a foundation for systematically understanding the real-world dynamics of the circadian clock.