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A flexible spatio-temporal model for air pollution with spatial and spatio-temporal covariates

机译:具有空间和时空协变量的灵活的空气污染时空模型

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The development of models that provide accurate spatio-temporal predictions of ambient air pollution at small spatial scales is of great importance for the assessment of potential health effects of air pollution. Here we present a spatio-temporal framework that predicts ambient air pollution by combining data from several different monitoring networks and deterministic air pollution model(s) with geographic information system covariates. The model presented in this paper has been implemented in an R package, SpatioTemporal, available on CRAN. The model is used by the EPA funded Multi-Ethnic Study of Atherosclerosis and Air Pollution (MESA Air) to produce estimates of ambient air pollution; MESA Air uses the estimates to investigate the relationship between chronic exposure to air pollution and cardiovascular disease. In this paper we use the model to predict long-term average concentrations of NO_x in the Los Angeles area during a 10 year period. Predictions are based on measurements from the EPA Air Quality System, MESA Air specific monitoring, and output from a source dispersion model for traffic related air pollution (Caline3QHCR). Accuracy in predicting long-term average concentrations is evaluated using an elaborate crossvalidation setup that accounts for a sparse spatio-temporal sampling pattern in the data, and adjusts for temporal effects. The predictive ability of the model is good with cross-validated R~2 of approximately 0.7 at subject sites. Replacing four geographic covariate indicators of traffic density with the Caline3QHCR dispersion model output resulted in very similar prediction accuracy from a more parsimonious and more interpretable model. Adding traffic-related geographic covariates to the model that included Caline3QHCR did not further improve the prediction accuracy.
机译:在小空间尺度上提供准确的时空预测环境空气污染模型的开发,对于评估空气污染对健康的潜在潜在影响非常重要。在这里,我们提出了一个时空框架,该框架通过将来自几个不同监测网络的数据以及确定性空气污染模型与地理信息系统的协变量相结合,来预测环境空气污染。本文介绍的模型已在R包SpatioTemporal中实现,可在CRAN上获得。 EPA资助的多民族动脉粥样硬化和空气污染研究(MESA Air)使用该模型来估算环境空气污染; MESA Air使用估计值来研究长期暴露于空气污染与心血管疾病之间的关系。在本文中,我们使用该模型预测洛杉矶地区在10年期间的长期平均NO_x浓度。预测基于EPA空气质量系统的测量值,MESA特定于空气的监测以及与交通相关的空气污染的源扩散模型的输出(Caline3QHCR)。使用精心设计的交叉验证设置来评估预测长期平均浓度的准确性,该设置考虑了数据中时空稀疏的采样模式,并针对时间影响进行了调整。该模型的预测能力很好,交叉验证的R〜2在受试者部位约为0.7。用Caline3QHCR离散度模型输出替换交通密度的四个地理协变量指标,从更简约和更易解释的模型中得出非常相似的预测精度。将与交通相关的地理协变量添加到包含Caline3QHCR的模型中并不能进一步提高预测准确性。

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