Di Junrui, Spira Adam, Bai Jiawei, Urbanek Jacek, Leroux Andrew, Wu Mark, Resnick Susan, Simonsick Eleanor, Ferrucci Luigi, Schrack Jennifer, Zipunnikov Vadim
Department of Biostatistics, Johns Hopkins Bloomberg School of Public Health.
Johns Hopkins Center on Aging and Health.
Stat Biosci. 2019 Jul;11(2):371-402. doi: 10.1007/s12561-019-09236-4. Epub 2019 Apr 15.
Developments in wearable technology have enabled researchers to continuously and objectively monitor various aspects and physiological domains of real-life including levels of physical activity, quality of sleep, and strength of circadian rhythm in many epidemiological and clinical studies. Current analytical practice is to summarize each of these three domains individually via a standard inventory of interpretable features, and explore individual associations between the features and clinical variables. However, the features often exhibit significant interaction and correlation both within and between domains. Integration of features across multiple domains remains methodologically challenging. To address this problem, we propose to use joint and individual variation explained (JIVE), a dimension reduction technique that efficiently deals with multivariate data representing multiple domains. In this paper, we review the most frequently used features to characterize the domains of physical activity, sleep, and circadian rhythniicity and illustrate the approach using wrist-worn actigraphy data from 198 participants of the Baltimore Longitudinal Study of Aging.
可穿戴技术的发展使研究人员能够在许多流行病学和临床研究中持续、客观地监测现实生活的各个方面和生理领域,包括身体活动水平、睡眠质量和昼夜节律强度。当前的分析方法是通过可解释特征的标准清单分别总结这三个领域中的每一个,并探索这些特征与临床变量之间的个体关联。然而,这些特征在领域内和领域间往往表现出显著的相互作用和相关性。跨多个领域的特征整合在方法上仍然具有挑战性。为了解决这个问题,我们建议使用联合和个体变异解释(JIVE),这是一种降维技术,能够有效地处理代表多个领域的多变量数据。在本文中,我们回顾了用于表征身体活动、睡眠和昼夜节律领域的最常用特征,并使用来自巴尔的摩纵向衰老研究的198名参与者的手腕活动记录仪数据说明了该方法。