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首页> 外文期刊>Biometrics: Journal of the Biometric Society : An International Society Devoted to the Mathematical and Statistical Aspects of Biology >Bayesian distributed lag models: estimating effects of particulate matter air pollution on daily mortality.
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Bayesian distributed lag models: estimating effects of particulate matter air pollution on daily mortality.

机译:贝叶斯分布滞后模型:估计颗粒物空气污染对每日死亡率的影响。

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A distributed lag model (DLagM) is a regression model that includes lagged exposure variables as covariates; its corresponding distributed lag (DL) function describes the relationship between the lag and the coefficient of the lagged exposure variable. DLagMs have recently been used in environmental epidemiology for quantifying the cumulative effects of weather and air pollution on mortality and morbidity. Standard methods for formulating DLagMs include unconstrained, polynomial, and penalized spline DLagMs. These methods may fail to take full advantage of prior information about the shape of the DL function for environmental exposures, or for any other exposure with effects that are believed to smoothly approach zero as lag increases, and are therefore at risk of producing suboptimal estimates. In this article, we propose a Bayesian DLagM (BDLagM) that incorporates prior knowledge about the shape of the DL function and also allows the degree of smoothness of the DL function to be estimated from the data. We apply our BDLagM to its motivating data from the National Morbidity, Mortality, and Air Pollution Study to estimate the short-term health effects of particulate matter air pollution on mortality from 1987 to 2000 for Chicago, Illinois. In a simulation study, we compare our Bayesian approach with alternative methods that use unconstrained, polynomial, and penalized spline DLagMs. We also illustrate the connection between BDLagMs and penalized spline DLagMs. Software for fitting BDLagM models and the data used in this article are available online.
机译:分布滞后模型(DLagM)是一种回归模型,其中包括滞后的暴露变量作为协变量;其相应的分布滞后(DL)函数描述了滞后与滞后曝光变量系数之间的关系。 DLagMs最近已在环境流行病学中用于量化天气和空气污染对死亡率和发病率的累积影响。制定DLagM的标准方法包括无约束,多项式和罚样条DLagM。这些方法可能无法充分利用有关DL函数形状的先验信息用于环境暴露,或用于任何其他暴露,其影响被认为随着滞后的增加而平滑地趋近于零,因此有产生次优估计的风险。在本文中,我们提出了一种贝叶斯DLagM(BDLagM),它融合了有关DL函数形状的先验知识,并且还允许从数据中估计DL函数的平滑度。我们将BDLagM应用于其来自国家发病率,死亡率和空气污染研究的动力数据,以估计1987年至2000年伊利诺伊州芝加哥市颗粒物空气污染对死亡率的短期健康影响。在模拟研究中,我们将贝叶斯方法与使用无约束,多项式和罚样条DLagM的替代方法进行了比较。我们还说明了BDLagM和惩罚样条DLagM之间的联系。可在线获得用于拟合BDLagM模型的软件和本文中使用的数据。

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