Personalized Data-Driven State Models of the Circadian Dynamics in a Biometric Signal.

Chukwuemeka O Ike, Yunshi Wen, John T Wen, Meeko M K Oishi, Lee K Brown, A Agung Julius
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Abstract

Circadian rhythms are endogenous 24-hour oscillations that are vital for maintaining our overall well-being. They are driven at a high level by a core circadian clock located in the brain, making their dynamics difficult to track. Various modeling approaches exist to predict the dynamics, but as the models are typically designed on population-level data, their performance is diminished on the individual level. This paper proposes a method for learning personalized latent state models, i.e., dynamical models that explicitly use latent state variables, that relate circadian input(s) to observable biometric signals. Our models combine an autoencoder with a recurrent neural network and use the pair to model the salient dynamics present in the data. We validate our method using experimental data, where the circadian input is light and the biometric data are actigraphy signals. We demonstrate that our method results in models with low-dimensional latent state that can accurately reconstruct and predict the observable biometric signals. Further, we show that the oscillation of the learned latent state agrees with the subjects' circadian clock oscillation as estimated with melatonin measurements.Clinical relevance - This proposes a technique for personal-ized modeling of the circadian system with potential applications in feedback control and individualized circadian studies.

生物特征信号中昼夜动力学的个性化数据驱动状态模型。
昼夜节律是内源性的24小时振荡,对维持我们的整体健康至关重要。它们是由位于大脑中的核心生物钟在高水平上驱动的,这使得它们的动态难以追踪。有多种建模方法可以预测动态,但由于模型通常是在种群水平数据上设计的,因此它们在个体水平上的性能会降低。本文提出了一种学习个性化潜在状态模型的方法,即明确使用潜在状态变量的动态模型,将昼夜节律输入与可观察到的生物特征信号联系起来。我们的模型结合了一个自动编码器和一个循环神经网络,并使用这对模型来模拟数据中存在的显著动态。我们使用实验数据验证我们的方法,其中昼夜节律输入是光,生物特征数据是活动信号。我们证明,我们的方法产生的模型具有低维潜在状态,可以准确地重建和预测可观察到的生物特征信号。此外,我们表明,习得的潜在状态的振荡与受试者的生物钟振荡是一致的,这是通过褪黑激素测量来估计的。临床相关性-本研究提出了一种个性化昼夜节律系统建模技术,在反馈控制和个性化昼夜节律研究中具有潜在的应用前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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