A network approach to understanding obesogenic environments for children in Pennsylvania

Emily A. Knapp, U. Bilal, B. T. Burke, Geoff B. Dougherty, T. Glass
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引用次数: 2

Abstract

Abstract Network methods have been applied to obesity to map connections between obesity-related genes, model biological feedback mechanisms and potential interventions, and to understand the spread of obesity through social networks. However, network methods have not been applied to understanding the obesogenic environment. Here, we created a network of 32 features of communities hypothesized to be related to obesity. Data from an existing study of determinants of obesity among 1,288 communities in Pennsylvania were used. Spearman correlation coefficients were used to describe the bivariate association between each pair of features. These correlations were used to create a network in which the nodes are community features and weighted edges are the strength of the correlations among those nodes. Modules of clustered features were identified using the walktrap method. This network was plotted, and then examined separately for communities stratified by quartiles of child obesity prevalence. We also examined the relationship between measures of network centrality and child obesity prevalence. The overall structure of the network suggests that environmental features geographically co-occur, and features of the environment that were more highly correlated with body mass index were more central to the network. Three clusters were identified: a crime-related cluster, a food-environment and land use-related cluster, and a physical activity-related cluster. The structure of connections between features of the environment differed between communities with the highest and lowest burden of childhood obesity, and a higher degree of average correlation was observed in the heaviest communities. Network methods may help to explicate the concept of the obesogenic environment, and ultimately to illuminate features of the environment that may serve as levers of community-level intervention.
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了解宾夕法尼亚州儿童致肥环境的网络方法
摘要网络方法已被应用于肥胖,以绘制肥胖相关基因之间的联系,建模生物反馈机制和潜在干预措施,并了解肥胖通过社交网络的传播。然而,网络方法尚未被应用于了解致油环境。在这里,我们创建了一个由32个假设与肥胖有关的社区特征组成的网络。使用了宾夕法尼亚州1288个社区肥胖决定因素的现有研究数据。Spearman相关系数用于描述每对特征之间的二元关联。这些相关性被用来创建一个网络,其中节点是社区特征,加权边是这些节点之间相关性的强度。聚类特征的模块使用walktrap方法进行识别。绘制了这个网络,然后对按儿童肥胖患病率四分位数分层的社区进行了单独检查。我们还研究了网络中心性指标与儿童肥胖患病率之间的关系。网络的总体结构表明,环境特征在地理上是共同存在的,与体重指数相关性更高的环境特征在网络中更为核心。确定了三个集群:与犯罪有关的集群、与粮食环境和土地利用有关的集群以及与体育活动有关的集群。儿童肥胖负担最高和最低的社区之间的环境特征之间的联系结构不同,在最重的社区中观察到更高程度的平均相关性。网络方法可能有助于解释肥胖环境的概念,并最终阐明可能作为社区干预杠杆的环境特征。
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