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How robust are the estimated effects of air pollution on health? Accounting for model uncertainty using Bayesian model averaging

机译:空气污染对健康的估计影响有多强?使用贝叶斯模型平均法考虑模型不确定性

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摘要

The long-term impact of air pollution on human health can be estimated from small-area ecological studies in which the health outcome is regressed against air pollution concentrations and other covariates, such as socio-economic deprivation. Socio-economic deprivation is multi-factorial and difficult to measure, and includes aspects of income, education, and housing as well as others. However, these variables are potentially highly correlated, meaning one can either create an overall deprivation index, or use the individual characteristics, which can result in a variety of pollution-health effects. Other aspects of model choice may affect the pollution-health estimate, such as the estimation of pollution, and spatial autocorrelation model. Therefore, we propose a Bayesian model averaging approach to combine the results from multiple statistical models to produce a more robust representation of the overall pollution-health effect. We investigate the relationship between nitrogen dioxide concentrations and cardio-respiratory mortality in West Central Scotland between 2006 and 2012.
机译:空气污染对人类健康的长期影响可以从小区域生态研究中估算出来,在该研究中,健康结果针对空气污染浓度和其他协变量(如社会经济剥夺)进行回归分析。社会经济剥夺是多方面的,难以衡量,包括收入,教育,住房以及其他方面。但是,这些变量可能具有高度相关性,这意味着可以创建一个整体的剥夺指数,也可以使用各个特征,从而导致多种污染健康影响。模型选择的其他方面可能会影响污染健康评估,例如污染评估和空间自相关模型。因此,我们提出了一种贝叶斯模型平均方法,将来自多个统计模型的结果进行组合,以产生更健壮的整体污染健康影响表示。我们调查了2006年至2012年之间苏格兰中西部的二氧化氮浓度与心脏呼吸死亡率之间的关系。

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