Department of Nutrition, Gillings School of Global Public Health, University of North Carolina at Chapel Hill, North Carolina, USA.
Int J Behav Nutr Phys Act. 2010 May 20;7:45. doi: 10.1186/1479-5868-7-45.
Inter-relationships among built and socioeconomic environmental characteristics may result in confounding of associations between environment exposure measures and health behaviors or outcomes, but traditional multivariate adjustment can be inappropriate due to collinearity.
We used principal factor analysis to describe inter-relationships between a large set of Geographic Information System-derived built and socioeconomic environment measures for adolescents in the National Longitudinal Study of Adolescent Health (Wave I, 1995-96, n = 17,294). Using resulting factors in sex-stratified multivariate negative binomial regression models, we tested for confounding of associations between built and socioeconomic environment characteristics and moderate to vigorous physical activity (MVPA). Finally, we used knowledge gained from factor analysis to construct replicable environmental measures that account for inter-relationships and avoid collinearity.
Using factor analysis, we identified three built environment constructs [(1) homogenous landscape; 2) development intensity with high pay facility count; 3) development intensity with high public facility count] and two socioeconomic environment constructs [1) advantageous economic environment, 2) disadvantageous social environment]. In regression analysis, confounding of built environment-MVPA associations by socioeconomic environment factors was stronger than among built environment factors. In fully adjusted models, MVPA was negatively associated with the highest (versus lowest) quartile of homogenous land cover in males [exp(coeff) (95% CI): 0.91 (0.86, 0.96)] and intensity (pay facilities) [exp(coeff) (95% CI): 0.92 (0.85, 0.99)] in females. Single proxy measures (Simpson's diversity index, count of pay facilities, count of public facilities, median household income, and crime rate) representing each environmental construct replicated associations with MVPA.
Environmental characteristics are inter-related. Both built and SES environments should be incorporated into analysis in order to minimize confounding. Single environmental measures may be useful proxies for environmental constructs in longitudinal analysis and replication in external populations, but more research is needed to better understand mechanisms of action, and ultimately identify policy-relevant environmental determinants of physical activity.
建筑和社会经济环境特征之间的相互关系可能导致环境暴露测量值与健康行为或结果之间的关联受到混淆,但由于共线性,传统的多元调整可能不适用。
我们使用主成分分析来描述青少年国家青少年健康纵向研究(第 I 波,1995-96 年,n=17294)中大量地理信息系统衍生的建筑和社会经济环境测量值之间的相互关系。我们在按性别分层的多元负二项式回归模型中使用得到的因子,测试了建筑和社会经济环境特征与中度至剧烈体力活动(MVPA)之间关联的混杂。最后,我们利用因子分析获得的知识构建可复制的环境测量值,这些测量值考虑到相互关系并避免共线性。
使用因子分析,我们确定了三个建筑环境结构[(1)同质景观;(2)高薪酬设施数量的发展强度;(3)高公共设施数量的发展强度]和两个社会经济环境结构[(1)有利的经济环境;(2)不利的社会环境)。在回归分析中,社会经济环境因素对建筑环境-MVPA 关联的混杂作用强于建筑环境因素。在完全调整的模型中,MVPA 与男性中同质土地覆盖的最高(与最低)四分位数呈负相关[(exp(系数)(95%CI):0.91(0.86,0.96)]和女性中的强度(薪酬设施)[(exp(系数)(95%CI):0.92(0.85,0.99)]。代表每个环境结构的单个代理测量值(辛普森多样性指数、薪酬设施数量、公共设施数量、家庭中位数收入和犯罪率)复制了与 MVPA 的关联。
环境特征是相互关联的。为了最大限度地减少混杂,应该将建筑和 SES 环境都纳入分析中。在纵向分析和外部人群的复制中,单个环境措施可能是环境结构的有用代理,但需要进一步研究以更好地了解作用机制,并最终确定与身体活动相关的政策相关环境决定因素。