首页> 外文期刊>International Journal of Health Geographics >Statistical air quality predictions for public health surveillance: evaluation and generation of county level metrics of PM2.5 for the environmental public health tracking network
【24h】

Statistical air quality predictions for public health surveillance: evaluation and generation of county level metrics of PM2.5 for the environmental public health tracking network

机译:用于公共卫生监测的统计空气质量预测:用于环境公共卫生跟踪网络的PM 2.5 县级指标的评估和生成

获取原文
           

摘要

Background The Centers for Disease Control and Prevention (CDC) developed county level metrics for the Environmental Public Health Tracking Network (Tracking Network) to characterize potential population exposure to airborne particles with an aerodynamic diameter of 2.5 μm or less (PM2.5). These metrics are based on Federal Reference Method (FRM) air monitor data in the Environmental Protection Agency (EPA) Air Quality System (AQS); however, monitor data are limited in space and time. In order to understand air quality in all areas and on days without monitor data, the CDC collaborated with the EPA in the development of hierarchical Bayesian (HB) based predictions of PM2.5 concentrations. This paper describes the generation and evaluation of HB-based county level estimates of PM2.5. Methods We used three geo-imputation approaches to convert grid-level predictions to county level estimates. We used Pearson (r) and Kendall Tau-B (τ) correlation coefficients to assess the consistency of the relationship, and examined the direct differences (by county) between HB-based estimates and AQS-based concentrations at the daily level. We further compared the annual averages using Tukey mean-difference plots. Results During the year 2005, fewer than 20% of the counties in the conterminous United States (U.S.) had PM2.5 monitoring and 32% of the conterminous U.S. population resided in counties with no AQS monitors. County level estimates resulting from population-weighted centroid containment approach were correlated more strongly with monitor-based concentrations (r?=?0.9; τ = 0.8) than were estimates from other geo-imputation approaches. The median daily difference was ?0.2 μg/m3 with an interquartile range (IQR) of 1.9 μg/m3 and the median relative daily difference was ?2.2% with an IQR of 17.2%. Under-prediction was more prevalent at higher concentrations and for counties in the western U.S. Conclusions While the relationship between county level HB-based estimates and AQS-based concentrations is generally good, there are clear variations in the strength of this relationship for different regions of the U.S. and at various concentrations of PM2.5. This evaluation suggests that population-weighted county centroid containment method is an appropriate geo-imputation approach, and using the HB-based PM2.5 estimates to augment gaps in AQS data provides a more spatially and temporally consistent basis for calculating the metrics deployed on the Tracking Network.
机译:背景技术疾病控制与预防中心(CDC)为环境公共卫生追踪网络(Tracking Network)开发了县级度量标准,以表征潜在人群暴露于空气动力学直径为2.5μm或更小的空气传播颗粒(PM2.5)的特征。这些指标基于环境保护署(EPA)空气质量系统(AQS)中的联邦参考方法(FRM)空气监测器数据;但是,监视数据的空间和时间有限。为了了解所有地区的空气质量,并且在没有监测数据的情况下,CDC与EPA合作开发了基于贝叶斯(HB)的PM2.5浓度预测模型。本文介绍了基于HB的县级PM2.5估算的生成和评估。方法我们使用三种地理输入方法将网格级别的预测转换为县级别的估计。我们使用Pearson(r)和Kendall Tau-B(τ)相关系数来评估关系的一致性,并检查了每天基于HB的估算值与基于AQS的浓度之间的直接差异(按县划分)。我们使用Tukey均值差图进一步比较了年度平均值。结果2005年期间,在美国本土(少于美国)中,只有不到20%的县进行了PM2.5监测,在美国本土的32%人口中,没有AQS监测器。与其他地理输入方法的估计值相比,人口加权质心遏制方法得出的县级估计值与基于监控器的浓度之间的相关性更强(r?=?0.9;τ= 0.8)。日中位数差异为±0.2μg/ m3,四分位间距(IQR)为1.9μg/ m3,中位数相对日差异为±2.2%,IQR为17.2%。在美国西部,较高浓度的郡和郡县的预测不足更为普遍。结论虽然县级基于HB的估计值与基于AQS的浓度之间的关系通常很好,但对于不同地区的人,这种关系的强度存在明显差异美国和不同浓度的PM2.5。该评估表明,人口加权县质心遏制方法是一种适当的地理输入方法,并且使用基于HB的PM2.5估计值来扩大AQS数据中的差距,为计算部署在指标上的度量标准提供了更加时空一致的基础。跟踪网络。

著录项

相似文献

  • 外文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号