Cheung Ying Kuen, Yu Gary, Wall Melanie M, Sacco Ralph L, Elkind Mitchell S V, Willey Joshua Z
Department of Biostatistics, Mailman School of Public Health, Columbia University, New York, NY.
Department of Biostatistics, Mailman School of Public Health, Columbia University, New York, NY.
Ann Epidemiol. 2015 Jul;25(7):469-74. doi: 10.1016/j.annepidem.2015.03.003. Epub 2015 Mar 23.
Physical activity is currently commonly summarized by simple composite scores of total activity, such as total metabolic equivalent score (METS), without further information about the many specific aspects of activities. We sought to identify more comprehensive physical activity patterns, and their association with cardiovascular disease risk factors.
The Northern Manhattan Study is a multiethnic cohort of stroke-free individuals. Questionnaires were used to capture multiple dimensions of leisure-time physical activity. Participants were grouped into METS categories and also into clusters by multivariate mixture modeling of activity frequency, duration, energy expenditure, and number of activity types. Associations between clusters and risk factors were assessed using χ(2) tests.
Using data available in 3293 participants, we identified six model-based clusters that were differentiated by frequency and diversity of activities, rather than activity duration. High activity clusters had lower prevalence of the risk factors compared with those with lower activity; associations with obesity and hypertension remained significant after adjusting for METS (P = .027, .043). METS and risk factors were not significantly associated after adjusting for the clusters.
Data-driven clustering method is a principled, generalizable approach to depict physical activity and form subgroups associated with cardiovascular risk factors independently of METS.
目前,体力活动通常通过总活动量的简单综合评分来概括,如总代谢当量评分(METS),而没有关于活动许多具体方面的更多信息。我们试图确定更全面的体力活动模式及其与心血管疾病危险因素的关联。
北曼哈顿研究是一个无中风个体的多民族队列研究。通过问卷调查来获取休闲时间体力活动的多个维度。参与者被分为METS类别,并通过对活动频率、持续时间、能量消耗和活动类型数量进行多变量混合建模聚类。使用χ²检验评估聚类与危险因素之间的关联。
利用3293名参与者的可用数据,我们确定了六个基于模型的聚类,这些聚类是根据活动的频率和多样性而非活动持续时间来区分的。与低活动水平的聚类相比,高活动水平聚类的危险因素患病率较低;在调整METS后,与肥胖和高血压的关联仍然显著(P = 0.027,0.043)。在调整聚类后,METS与危险因素之间无显著关联。
数据驱动的聚类方法是一种有原则的、可推广的方法,用于描述体力活动并形成与心血管危险因素相关的亚组,且独立于METS。