Longitudinal Associations Between Timing of Physical Activity Accumulation and Health: Application of Functional Data Methods.

Pub Date : 2023-07-01 Epub Date: 2022-09-29 DOI:10.1007/s12561-022-09359-1
Wenyi Lin, Jingjing Zou, Chongzhi Di, Dorothy D Sears, Cheryl L Rock, Loki Natarajan
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Abstract

Accelerometers are widely used for tracking human movement and provide minute-level (or even 30 Hz level) physical activity (PA) records for detailed analysis. Instead of using day-level summary statistics to assess these densely sampled inputs, we implement functional principal component analysis (FPCA) approaches to study the temporal patterns of PA data from 245 overweight/obese women at three visits over a 1-year period. We apply longitudinal FPCA to decompose PA inputs, incorporating subject-specific variability, and then test the association between these patterns and obesity-related health outcomes by multiple mixed effect regression models. With the proposed methods, the longitudinal patterns in both densely sampled inputs and scalar outcomes are investigated and connected. The results show that the health outcomes are strongly associated with PA variation, in both subject and visit-level. In addition, we reveal that timing of PA during the day can impact changes in outcomes, a finding that would not be possible with day-level PA summaries. Thus, our findings imply that the use of longitudinal FPCA can elucidate temporal patterns of multiple levels of PA inputs. Furthermore, the exploration of the relationship between PA patterns and health outcomes can be useful for establishing weight-loss guidelines.

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体育锻炼时间与健康之间的纵向联系:功能数据方法的应用
加速度计被广泛用于追踪人体运动,并提供分钟级(甚至 30 Hz 级)的体力活动(PA)记录以供详细分析。我们采用功能主成分分析 (FPCA) 方法来研究 245 名超重/肥胖女性在一年内三次访问中的体力活动数据的时间模式,而不是使用日级汇总统计来评估这些密集采样的输入数据。我们采用纵向功能主成分分析法对 PA 输入进行分解,将特定受试者的变异性纳入其中,然后通过多重混合效应回归模型检验这些模式与肥胖相关健康结果之间的关联。利用所提出的方法,对密集采样输入和标量结果的纵向模式进行了研究和连接。结果表明,在受试者和访问水平上,健康结果与 PA 变化密切相关。此外,我们还揭示了一天中锻炼的时间会对结果的变化产生影响,而这一发现在一天的锻炼总结中是不可能出现的。因此,我们的研究结果表明,使用纵向 FPCA 可以阐明多层次 PA 输入的时间模式。此外,探索活动量模式与健康结果之间的关系有助于制定减肥指南。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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