Jingjing Zou, Tuo Lin, Chongzhi Di, John Bellettiere, Marta M Jankowska, Sheri J Hartman, Dorothy D Sears, Andrea Z LaCroix, Cheryl L Rock, Loki Natarajan
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引用次数: 0
Abstract
Physical activity (PA) is significantly associated with many health outcomes. The wide usage of wearable accelerometer-based activity trackers in recent years has provided a unique opportunity for in-depth research on PA and its relations with health outcomes and interventions. Past analysis of activity tracker data relies heavily on aggregating minute-level PA records into day-level summary statistics in which important information of PA temporal/diurnal patterns is lost. In this paper we propose a novel functional data analysis approach based on Riemann manifolds for modeling PA and its longitudinal changes. We model smoothed minute-level PA of a day as one-dimensional Riemann manifolds and longitudinal changes in PA in different visits as deformations between manifolds. The variability in changes of PA among a cohort of subjects is characterized via variability in the deformation. Functional principal component analysis is further adopted to model the deformations, and PC scores are used as a proxy in modeling the relation between changes in PA and health outcomes and/or interventions. We conduct comprehensive analyses on data from two clinical trials: Reach for Health (RfH) and Metabolism, Exercise and Nutrition at UCSD (MENU), focusing on the effect of interventions on longitudinal changes in PA patterns and how different modes of changes in PA influence weight loss, respectively. The proposed approach reveals unique modes of changes, including overall enhanced PA, boosted morning PA, and shifts of active hours specific to each study cohort. The results bring new insights into the study of longitudinal changes in PA and health and have the potential to facilitate designing of effective health interventions and guidelines.
体力活动(PA)与许多健康结果密切相关。近年来,基于加速度计的可穿戴活动追踪器的广泛使用为深入研究体力活动及其与健康结果和干预措施的关系提供了一个独特的机会。以往对活动追踪器数据的分析主要依赖于将分钟级的活动量记录汇总成天级的汇总统计数据,这就失去了活动量时间/昼夜模式的重要信息。在本文中,我们提出了一种基于黎曼流形的新型功能数据分析方法,用于模拟 PA 及其纵向变化。我们将一天中平滑的分钟级 PA 建模为一维黎曼流形,并将不同访问中 PA 的纵向变化建模为流形之间的变形。一组受试者之间 PA 变化的变异性通过变形的变异性来表征。我们进一步采用功能主成分分析法对变形进行建模,并将 PC 分数作为代理变量,对 PA 变化与健康结果和/或干预措施之间的关系进行建模。我们对两项临床试验的数据进行了综合分析:我们对两项临床试验的数据进行了综合分析:Reach for Health (RfH) 和 Metabolism, Exercise and Nutrition at UCSD (MENU),分别侧重于干预措施对 PA 模式纵向变化的影响,以及 PA 的不同变化模式如何影响体重减轻。所提出的方法揭示了独特的变化模式,包括整体增强的活动量、增强的晨间活动量以及每个研究队列特有的活动时间变化。这些结果为研究运动量和健康的纵向变化带来了新的见解,并有可能促进设计有效的健康干预措施和指南。
期刊介绍:
Statistical research spans an enormous range from direct subject-matter collaborations to pure mathematical theory. The Annals of Applied Statistics, the newest journal from the IMS, is aimed at papers in the applied half of this range. Published quarterly in both print and electronic form, our goal is to provide a timely and unified forum for all areas of applied statistics.