CERENA, Instituto Superior Técnico, Universidade de Lisboa, Av. Rovisco Pais, 1049-001, Lisbon, Portugal.
CERENA, DECivil, Instituto Superior Técnico, Universidade de Lisboa, Av. Rovisco Pais, 1049-001, Lisbon, Portugal.
Environ Sci Pollut Res Int. 2018 Sep;25(26):25942-25954. doi: 10.1007/s11356-018-2614-x. Epub 2018 Jul 1.
In this study, we combine known methods to present a new approach to assess local distributions of estimated parameters measuring associations between air quality and birth weight in the urban area of Sines (Portugal). To model exposure and capture short-distance variations in air quality, we use a Regression Kriging estimator combining air quality point data with land use auxiliary data. To assess uncertainty of exposure, the Kriging estimator is incorporated in a sequential Gaussian simulation algorithm (sGs) providing a set of simulated exposure maps with similar spatial structural dependence and statistical properties of observed data. Following the completion of the simulation runs, we fit a geographically weighted generalized linear model (GWGLM) for each mother's place of residence, using observed health data and simulated exposure data, and repeat this procedure for each simulated map. Once the fit of GWGLM with all exposure maps is finished, we take the distribution of local estimated parameters measuring associations between exposure and birth weight, thus providing a measure of uncertainty in the local estimates. Results reveal that the distribution of local parameters did not vary substantially. Combining both methods (GWGLM and sGs), however, we are able to incorporate local uncertainty on the estimated associations providing an additional tool for analysis of the impacts of place in health.
在这项研究中,我们结合了已知的方法,提出了一种新的方法来评估空气质量和出生体重之间关联的局部分布的估计参数,该研究的对象是葡萄牙西尼什市的城区。为了模拟暴露情况并捕捉空气质量的短距离变化,我们使用了一种回归克里金估计器,该估计器将空气质量点数据与土地利用辅助数据相结合。为了评估暴露的不确定性,克里金估计器被纳入序贯高斯模拟算法(sGs)中,该算法为一组具有相似空间结构依赖性和观测数据统计特性的模拟暴露图提供了一个集合。在完成模拟运行后,我们为每个母亲的居住地拟合了一个地理加权广义线性模型(GWGLM),使用观测到的健康数据和模拟暴露数据,并对每个模拟图重复此过程。一旦完成了所有暴露图的 GWGLM 拟合,我们就可以获取暴露与出生体重之间关联的局部估计参数的分布,从而为局部估计的不确定性提供了一种衡量标准。结果表明,局部参数的分布没有发生实质性变化。然而,通过结合这两种方法(GWGLM 和 sGs),我们能够将局部不确定性纳入到估计的关联中,为健康中地点影响的分析提供了一个额外的工具。