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A multicity study of air pollution and cardiorespiratory emergency department visits: Comparing approaches for combining estimates across cities

机译:空气污染和心肺急诊就诊的多城市研究:比较将城市之间的估算结合起来的方法

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Determining how associations between ambient air pollution and health vary by specific outcome is important for developing public health interventions. We estimated associations between twelve ambient air pollutants of both primary (e.g. nitrogen oxides) and secondary (e.g. ozone and sulfate) origin and cardiorespiratory emergency department (ED) visits for 8 specific outcomes in five U.S. cities including Atlanta, GA; Birmingham, AL; Dallas, TX; Pittsburgh, PA; St. Louis, MO. For each city, we fitted overdispersed Poisson time-series models to estimate associations between each pollutant and specific outcome. To estimate multicity and posterior city-specific associations, we developed a Bayesian multicity multi-outcome (MCM) model that pools information across cities using data from all specific outcomes. We fitted single pollutant models as well as models with multipollutant components using a two-stage chemical mixtures approach. Posterior city-specific associations from the MCM models were somewhat attenuated, with smaller standard errors, compared to associations from time-series regression models. We found positive associations of both primary and secondary pollutants with respiratory disease ED visits. There was some indication that primary pollutants, particularly nitrogen oxides, were also associated with cardiovascular disease ED visits. Bayesian models can help to synthesize findings across multiple outcomes and cities by providing posterior city-specific associations building on variation and similarities across the multiple sources of available information.
机译:确定环境空气污染与健康之间的关联如何随特定结果而变化对于开发公共卫生干预措施非常重要。我们估算了美国五个城市(包括乔治亚州亚特兰大)的12种主要(例如氮氧化物)和次要(例如臭氧和硫酸盐)来源的环境空气污染物与心脏呼吸急诊科(ED)的就诊次数之间的关联,以得出8种具体结果。阿拉巴马州伯明翰;德克萨斯州达拉斯;宾夕法尼亚州匹兹堡;密苏里州圣路易斯对于每个城市,我们拟合了过度分散的Poisson时间序列模型,以估计每种污染物与特定结果之间的关联。为了估计多城市和后城市的特定关联,我们开发了一种贝叶斯多城市多结果(MCM)模型,该模型使用来自所有特定结果的数据来汇总城市间的信息。我们使用两阶段化学混合物方法拟合了单一污染物模型以及具有多污染物成分的模型。与时间序列回归模型的关联相比,MCM模型的后城市特定关联有所减弱,标准误差较小。我们发现一级和二级污染物与呼吸道疾病急诊就诊呈正相关。有迹象表明,主要污染物,尤其是氮氧化物也与心血管疾病急诊就诊有关。贝叶斯模型可以通过提供多种可用信息源之间的变异和相似性来提供特定于城市的后验关联,从而有助于综合多个结果和多个城市的发现。

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