Rory Myers College of Nursing, New York University, New York, NY, USA.
Department of Behavioral Health and Nutrition, College of Health Sciences, University of Delaware, Newark, DE, USA.
Transl Behav Med. 2021 Mar 16;11(2):332-341. doi: 10.1093/tbm/ibaa002.
Physical inactivity is a leading determinant of noncommunicable diseases. Yet, many adults remain physically inactive. Physical activity guidelines do not account for the multidimensionality of physical activity, such as the type or variety of physical activity behaviors. This study identified patterns of physical activity across multiple dimensions (e.g., frequency, duration, and variety) using a nationally representative sample of adults. Sociodemographic characteristics, health behaviors, and clinical characteristics associated with each physical activity pattern were defined. Multivariate finite mixture modeling was used to identify patterns of physical activity among 2003-2004 and 2005-2006 adult National Health and Nutrition Examination Survey participants. Chi-square tests were used to identify sociodemographic differences within each physical activity cluster and test associations between the physical activity clusters with health behaviors and clinical characteristics. Five clusters of physical activity patterns were identified: (a) low frequency, short duration (n = 730, 13%); (b) low frequency, long duration (n = 392, 7%); (c) daily frequency, short duration (n = 3,011, 55%); (d) daily frequency, long duration (n = 373, 7%); and (e) high frequency, average duration (n = 964, 18%). Walking was the most common form of activity; highly active adults engaged in more varied types of activity. High-activity clusters were comprised of a greater proportion of younger, White, nonsmoking adult men reporting moderate alcohol use without mobility problems or chronic health conditions. Active females engaged in frequent short bouts of activity. Data-driven approaches are useful for identifying clusters of physical activity that encompass multiple dimensions of activity. These activity clusters vary across sociodemographic and clinical subgroups.
身体活动不足是非传染性疾病的一个主要决定因素。然而,许多成年人仍然缺乏身体活动。身体活动指南没有考虑身体活动的多维性,例如身体活动行为的类型或多样性。本研究使用全国代表性成年人样本,确定了跨越多个维度(例如频率、持续时间和多样性)的身体活动模式。定义了与每种身体活动模式相关的社会人口统计学特征、健康行为和临床特征。使用多元有限混合模型对 2003-2004 年和 2005-2006 年成人国家健康和营养调查参与者的身体活动模式进行了识别。卡方检验用于识别每个身体活动组中的社会人口统计学差异,并检验身体活动组与健康行为和临床特征之间的关联。确定了五种身体活动模式聚类:(a) 低频率、短持续时间(n = 730,13%);(b) 低频率、长持续时间(n = 392,7%);(c) 每日频率、短持续时间(n = 3011,55%);(d) 每日频率、长持续时间(n = 373,7%);(e) 高频率、平均持续时间(n = 964,18%)。步行是最常见的活动形式;高度活跃的成年人从事更多种类的活动。高活动聚类由更多比例的年轻、白人、不吸烟的成年男性组成,他们报告适量饮酒,没有行动障碍或慢性健康问题。活跃的女性经常进行短暂的活动。数据驱动的方法可用于识别包含多种活动维度的活动聚类。这些活动聚类在社会人口统计学和临床亚组之间存在差异。