...
首页> 外文期刊>American Journal of Epidemiology >Multicollinearity in associations between multiple environmental features and body weight and abdominal fat: Using matching techniques to assess whether the associations are separable
【24h】

Multicollinearity in associations between multiple environmental features and body weight and abdominal fat: Using matching techniques to assess whether the associations are separable

机译:多个环境特征与体重和腹部脂肪之间关联的多重共线性:使用匹配技术评估关联是否可分离

获取原文
获取原文并翻译 | 示例
           

摘要

Because of the strong correlations among neighborhoods' characteristics, it is not clear whether the associations of specific environmental exposures (e.g., densities of physical features and services) with obesity can be disentangled. Using data from the RECORD (Residential Environment and Coronary Heart Disease) Cohort Study (Paris, France, 20072008), the authors investigated whether neighborhood characteristics related to the sociodemographic, physical, service-related, and social-interactional environments were associated with body mass index and waist circumference. The authors developed an original neighborhood characteristic-matching technique (analyses within pairs of participants similarly exposed to an environmental variable) to assess whether or not these associations could be disentangled. After adjustment for individualeighborhood socioeconomic variables, body mass index/waist circumference was negatively associated with characteristics of the physical/service environments reflecting higher densities (e.g., proportion of built surface, densities of shops selling fruits/vegetables, and restaurants). Multiple adjustment models and the neighborhood characteristic-matching technique were unable to identify which of these neighborhood variables were driving the associations because of high correlations between the environmental variables. Overall, beyond the socioeconomic environment, the physical and service environments may be associated with weight status, but it is difficult to disentangle the effects of strongly correlated environmental dimensions, even if they imply different causal mechanisms and interventions.
机译:由于邻里特征之间的密切相关性,尚不清楚是否可以消除特定环境暴露(例如,身体特征和服务密度)与肥胖之间的联系。利用RECORD(居住环境和冠心病)队列研究(法国巴黎,20072008)的数据,作者调查了与社会人口统计学,身体,服务相关和社会互动环境有关的邻里特征是否与体重相关指数和腰围。作者开发了一种原始的邻域特征匹配技术(对成对的参与者进行相似地暴露于环境变量的分析),以评估这些关联是否可以消除。在对个人/社区的社会经济变量进行调整之后,体重指数/腰围与反映较高密度(例如,建筑面积的比例,出售水果/蔬菜的商店的密度以及餐厅的密度)的物理/服务环境的特征呈负相关。由于环境变量之间的高度相关性,多重调整模型和邻域特征匹配技术无法确定这些邻域变量中的哪些驱动了关联。总体而言,除了社会经济环境以外,物理和服务环境可能与体重状况相关,但是很难区分高度相关的环境维度的影响,即使它们暗示不同的因果机制和干预措施也是如此。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号