You Mengying, Guo Wensheng
Department of Biostatistics, Epidemiology and Informatics, University of Pennsylvania.
Ann Appl Stat. 2024 Jun;18(2):1275-1293. doi: 10.1214/23-aoas1834. Epub 2024 Apr 5.
The adrenocorticotropic hormone and cortisol play critical roles in stress regulation and the sleep-wake cycle. Most research has been focused on how the two hormones regulate each other in terms of short-term pulses. Few studies have been conducted on the circadian relationship between the two hormones and how it differs between normal and abnormal groups. The circadian patterns are difficult to model as parametric functions. Directly extending univariate functional mixed effects models would result in a large dimensional problem and a challenging nonparametric inference. In this article, we propose a semi-parametric bivariate hierarchical state space model, in which each hormone profile is modeled by a hierarchical state space model, with nonparametric population-average and subject-specific components. The bivariate relationship is constructed by concatenating two latent independent subject-specific random functions specified by a design matrix, leading to a parametric inference on the correlation. We propose a computationally efficient state-space EM algorithm for estimation and inference. We apply the proposed method to a study of chronic fatigue syndrome and fibromyalgia and discover an erratic regulation pattern in the patient group in contrast to a circadian regulation pattern conforming to the day-night cycle in the control group.
促肾上腺皮质激素和皮质醇在应激调节和睡眠-觉醒周期中发挥着关键作用。大多数研究都集中在这两种激素如何在短期脉冲方面相互调节。关于这两种激素之间的昼夜节律关系以及正常组和异常组之间的差异,很少有研究。昼夜节律模式很难建模为参数函数。直接扩展单变量功能混合效应模型会导致高维问题和具有挑战性的非参数推断。在本文中,我们提出了一种半参数双变量分层状态空间模型,其中每个激素谱由分层状态空间模型建模,具有非参数总体均值和个体特定成分。双变量关系通过连接由设计矩阵指定的两个潜在独立个体特定随机函数来构建,从而对相关性进行参数推断。我们提出了一种计算效率高的状态空间期望最大化(EM)算法用于估计和推断。我们将所提出的方法应用于一项慢性疲劳综合征和纤维肌痛的研究,发现患者组中存在不稳定的调节模式,而对照组中存在符合昼夜周期的昼夜节律调节模式。