Krafty Robert T, Hall Martica
Department of Statistics, University of Pittsburgh, 2702 Cathedral of Learning, Pittsburgh, Pennsylvania 15260, USA,
Department of Psychiatry, University of Pittsburgh, 3811 O'Hara Street, Pittsburgh, Pennsylvania 15213, USA,
Ann Appl Stat. 2013 Mar 1;7(1):570-587. doi: 10.1214/12-aoas601.
Although many studies collect biomedical time series signals from multiple subjects, there is a dearth of models and methods for assessing the association between frequency domain properties of time series and other study outcomes. This article introduces the random Cramér representation as a joint model for collections of time series and static outcomes where power spectra are random functions that are correlated with the outcomes. A canonical correlation analysis between cepstral coefficients and static outcomes is developed to provide a flexible yet interpretable measure of association. Estimates of the canonical correlations and weight functions are obtained from a canonical correlation analysis between the static outcomes and maximum Whittle likelihood estimates of truncated cepstral coefficients. The proposed methodology is used to analyze the association between the spectrum of heart rate variability and measures of sleep duration and fragmentation in a study of older adults who serve as the primary caregiver for their ill spouse.
尽管许多研究从多个受试者收集生物医学时间序列信号,但缺乏用于评估时间序列频域特性与其他研究结果之间关联的模型和方法。本文介绍了随机克拉默表示法,作为时间序列集合和静态结果的联合模型,其中功率谱是与结果相关的随机函数。开发了倒谱系数与静态结果之间的典型相关分析,以提供灵活且可解释的关联度量。典型相关系数和权重函数的估计值是通过静态结果与截断倒谱系数的最大惠特尔似然估计之间的典型相关分析获得的。在一项针对作为患病配偶主要照料者的老年人的研究中,所提出的方法用于分析心率变异性频谱与睡眠时间和睡眠片段化测量值之间的关联。