Bruce Scott A, Hall Martica H, Buysse Daniel J, Krafty Robert T
Department of Statistical Science, Temple University, Philadelphia, Pennsylvania 19122, U.S.A.
Department of Psychiatry, University of Pittsburgh, Pittsburgh, Pennsylvania 15213, U.S.A.
Biometrics. 2018 Mar;74(1):260-269. doi: 10.1111/biom.12719. Epub 2017 May 8.
Many studies of biomedical time series signals aim to measure the association between frequency-domain properties of time series and clinical and behavioral covariates. However, the time-varying dynamics of these associations are largely ignored due to a lack of methods that can assess the changing nature of the relationship through time. This article introduces a method for the simultaneous and automatic analysis of the association between the time-varying power spectrum and covariates, which we refer to as conditional adaptive Bayesian spectrum analysis (CABS). The procedure adaptively partitions the grid of time and covariate values into an unknown number of approximately stationary blocks and nonparametrically estimates local spectra within blocks through penalized splines. CABS is formulated in a fully Bayesian framework, in which the number and locations of partition points are random, and fit using reversible jump Markov chain Monte Carlo techniques. Estimation and inference averaged over the distribution of partitions allows for the accurate analysis of spectra with both smooth and abrupt changes. The proposed methodology is used to analyze the association between the time-varying spectrum of heart rate variability and self-reported sleep quality in a study of older adults serving as the primary caregiver for their ill spouse.
许多生物医学时间序列信号研究旨在测量时间序列的频域特性与临床及行为协变量之间的关联。然而,由于缺乏能够评估这种关系随时间变化性质的方法,这些关联的时变动态在很大程度上被忽视了。本文介绍了一种用于同时自动分析时变功率谱与协变量之间关联的方法,我们将其称为条件自适应贝叶斯谱分析(CABS)。该过程将时间和协变量值的网格自适应地划分为数量未知的近似平稳块,并通过惩罚样条在块内非参数估计局部谱。CABS是在完全贝叶斯框架下制定的,其中分割点的数量和位置是随机的,并使用可逆跳跃马尔可夫链蒙特卡罗技术进行拟合。对分割分布进行平均的估计和推断能够对具有平滑和突变的谱进行准确分析。在一项关于老年配偶主要照顾患病配偶的研究中,所提出的方法用于分析心率变异性的时变谱与自我报告的睡眠质量之间的关联。