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基于剖面回归分析易感亚人群进行多污染物建模。

Multi-pollutant Modeling Through Examination of Susceptible Subpopulations Using Profile Regression.

机构信息

School of Public Health, University of California at Berkeley, Berkeley, CA, USA.

School of Mathematical Sciences, Queen Mary University of London, Mile End Road, London, E1 4NS, UK.

出版信息

Curr Environ Health Rep. 2018 Mar;5(1):59-69. doi: 10.1007/s40572-018-0177-0.

Abstract

PURPOSE OF REVIEW

The inter-correlated nature of exposure-based risk factors in environmental health studies makes it a challenge to determine their combined effect on health outcomes. As such, there has been much research of late regarding the development and utilization of methods in the field of multi-pollutant modeling. However, much of this work has focused on issues related to variable selection in a regression context, with the goal of identifying which exposures are the "bad actors" most responsible for affecting the health outcome of interest. However, the question addressed by these approaches does not necessarily represent the only or most important questions of interest in a multi-pollutant modeling context, where researchers may be interested in health effects from co-exposure patterns and in identifying subpopulations associated with patterns defined by different levels of constituent exposures.

RECENT FINDINGS

One approach to analyzing multi-pollutant data is to use a method known as Bayesian profile regression, which aids in identifying susceptible subpopulations associated with exposure mixtures defined by different levels of each exposure. Identification of exposure-level patterns that correspond to a location may provide a starting point for policy-based exposure reduction. Also, in a spatial context, identification of locations with the most health-relevant exposure-mixture profiles might provide further policy relevant information. In this brief report, we review and describe an approach that can be used to identify exposures in subpopulations or locations known as Bayesian profile regression. An example is provided in which we examine associations between air pollutants, an indicator of healthy food retailer availability, and indicators of poverty in Los Angeles County. A general tread suggesting that vulnerable individuals are more highly exposed and have limited access to healthy food retailers is observed, though the associations are complex and non-linear.

摘要

综述目的

环境健康研究中暴露风险因素的相互关联性质使得确定它们对健康结果的综合影响具有挑战性。因此,最近有很多关于多污染物建模领域开发和利用方法的研究。然而,这项工作的大部分都集中在回归背景下变量选择的相关问题上,目的是确定哪些暴露因素是最容易影响感兴趣的健康结果的“不良因素”。然而,这些方法所解决的问题并不一定代表多污染物建模背景下唯一或最重要的问题,研究人员可能对共同暴露模式的健康影响以及识别与不同水平的成分暴露相关的亚群感兴趣。

最近的发现

一种分析多污染物数据的方法是使用一种称为贝叶斯轮廓回归的方法,该方法有助于识别与不同水平的每种暴露定义的暴露混合物相关的易感亚群。识别与特定位置对应的暴露水平模式可为基于政策的暴露减少提供起点。此外,在空间背景下,识别具有最相关健康暴露混合特征的位置可能会提供进一步的政策相关信息。在这份简短的报告中,我们回顾并描述了一种可用于识别亚群或位置中的暴露的方法,称为贝叶斯轮廓回归。提供了一个示例,我们研究了洛杉矶县的空气污染物、健康食品零售商供应指标和贫困指标之间的关联。观察到一个普遍的趋势,即脆弱个体的暴露水平更高,获得健康食品零售商的机会有限,尽管关联是复杂和非线性的。

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