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一种用于估计意大利高风险地区儿童家庭空气污染暴露情况的贝叶斯克里金模型。

A Bayesian kriging model for estimating residential exposure to air pollution of children living in a high-risk area in Italy.

作者信息

Vicedo-Cabrera Ana M, Biggeri Annibale, Grisotto Laura, Barbone Fabio, Catelan Dolores

出版信息

Geospat Health. 2013 Nov;8(1):87-95. doi: 10.4081/gh.2013.57.

Abstract

A core challenge in epidemiological analysis of the impact of exposure to air pollution on health is assessment of the individual exposure for subjects at risk. Geographical information systems (GIS)-based pollution mapping, such as kriging, has become one of the main tools for evaluating individual exposure to ambient pollutants. We applied universal Bayesian kriging to estimate the residential exposure to gaseous air pollutants for children living in a high-risk area (Milazzo- Valle del Mela in Sicily, Italy). Ad hoc air quality monitoring campaigns were carried out: 12 weekly measurements for sulphur dioxide (SO2) and nitrogen dioxide (NO2) were obtained from 21 passive dosimeters located at each school yard of the study area from November 2007 to April 2008. Universal Bayesian kriging was performed to predict individual exposure levels at each residential address for all 6- to 12-years-old children attending primary school at various locations in the study area. Land use, altitude, distance to main roads and population density were included as covariates in the models. A large geographical heterogeneity in air quality was recorded suggesting complex exposure patterns. We obtained a predicted mean level of 25.78 (± 10.61) µg/m(3) of NO2 and 4.10 (± 2.71) µg/m(3) of SO2 at 1,682 children's residential addresses, with a normalised root mean squared error of 28% and 25%, respectively. We conclude that universal Bayesian kriging approach is a useful tool for the assessment of realistic exposure estimates with regard to ambient pollutants at home addresses. Its prediction uncertainty is highly informative and can be used for both designing subsequent campaigns and for improved modelling of epidemiological associations.

摘要

在空气污染暴露对健康影响的流行病学分析中,一个核心挑战是评估有风险人群的个体暴露情况。基于地理信息系统(GIS)的污染绘图,如克里金法,已成为评估个体对环境污染物暴露的主要工具之一。我们应用通用贝叶斯克里金法来估计居住在高风险地区(意大利西西里岛米拉佐 - 梅拉山谷)儿童的气态空气污染物暴露情况。开展了专门的空气质量监测活动:2007年11月至2008年4月期间,从研究区域各校园内设置的21个被动式剂量计获取了二氧化硫(SO₂)和二氧化氮(NO₂)的12次每周测量数据。运用通用贝叶斯克里金法预测了研究区域内不同地点所有6至12岁上小学儿童在每个居住地址的个体暴露水平。模型中纳入了土地利用、海拔、到主要道路的距离和人口密度作为协变量。记录到空气质量存在很大的地理异质性,表明暴露模式复杂。我们在1682名儿童的居住地址获得了预测的平均二氧化氮水平为25.78(±10.61)μg/m³,二氧化硫水平为4.10(±2.71)μg/m³,归一化均方根误差分别为28%和25%。我们得出结论,通用贝叶斯克里金法是评估家庭住址环境污染物实际暴露估计值的有用工具。其预测不确定性具有很高的参考价值,可用于设计后续活动以及改进流行病学关联的建模。

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