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Exploring the forest instead of the trees: An innovative method for defining obesogenic and obesoprotective environments

机译:探索森林而不是树木:定义致肥胖和肥胖保护环境的创新方法

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摘要

Past research has assessed the association of single community characteristics with obesity, ignoring the spatial co-occurrence of multiple community-level risk factors. We used conditional random forests (CRF), a non-parametric machine learning approach to identify the combination of community features that are most important for the prediction of obesegenic and obesoprotective environments for children. After examining 44 community characteristics, we identified 13 features of the social, food, and physical activity environment that in combination correctly classified 67% of communities as obesoprotective or obesogenic using mean BMI-z as a surrogate. Social environment characteristics emerged as most important classifiers and might provide leverage for intervention. CRF allows consideration of the neighborhood as a system of risk factors.
机译:过去的研究评估了单个社区特征与肥胖的关联,而忽略了多个社区级风险因素的空间共存。我们使用条件随机森林(CRF)(一种非参数机器学习方法)来识别对于预测肥胖和肥胖保护儿童环境最重要的社区特征的组合。在检查了44个社区特征之后,我们确定了13个社交,饮食和体育活动环境特征,这些特征结合使用平均BMI-z作为替代将67%的社区正确分类为具有肥胖保护性或致肥胖性。社会环境特征已成为最重要的分类器,并可能提供干预手段。 CRF允许将邻域视为风险因素系统。

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