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首页> 外文期刊>Environmental Health: A Global Access Science Source >Spatio-temporal modeling of particulate air pollution in the conterminous United States using geographic and meteorological predictors
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Spatio-temporal modeling of particulate air pollution in the conterminous United States using geographic and meteorological predictors

机译:使用地理和气象预报器对美国本土的微粒空气污染进行时空建模

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Background Exposure to atmospheric particulate matter (PM) remains an important public health concern, although it remains difficult to quantify accurately across large geographic areas with sufficiently high spatial resolution. Recent epidemiologic analyses have demonstrated the importance of spatially- and temporally-resolved exposure estimates, which show larger PM-mediated health effects as compared to nearest monitor or county-specific ambient concentrations. Methods We developed generalized additive mixed models that describe regional and small-scale spatial and temporal gradients (and corresponding uncertainties) in monthly mass concentrations of fine (PM2.5), inhalable (PM10), and coarse mode particle mass (PM2.5–10) for the conterminous United States (U.S.). These models expand our previously developed models for the Northeastern and Midwestern U.S. by virtue of their larger spatial domain, their inclusion of an additional 5 years of PM data to develop predictions through 2007, and their use of refined geographic covariates for population density and point-source PM emissions. Covariate selection and model validation were performed using 10-fold cross-validation (CV). Results The PM2.5 models had high predictive accuracy (CV R2=0.77 for both 1988–1998 and 1999–2007). While model performance remained strong, the predictive ability of models for PM10 (CV R2=0.58 for both 1988–1998 and 1999–2007) and PM2.5–10 (CV R2=0.46 and 0.52 for 1988–1998 and 1999–2007, respectively) was somewhat lower. Regional variation was found in the effects of geographic and meteorological covariates. Models generally performed well in both urban and rural areas and across seasons, though predictive performance varied somewhat by region (CV R2=0.81, 0.81, 0.83, 0.72, 0.69, 0.50, and 0.60 for the Northeast, Midwest, Southeast, Southcentral, Southwest, Northwest, and Central Plains regions, respectively, for PM2.5 from 1999–2007). Conclusions Our models provide estimates of monthly-average outdoor concentrations of PM2.5, PM10, and PM2.5–10 with high spatial resolution and low bias. Thus, these models are suitable for estimating chronic exposures of populations living in the conterminous U.S. from 1988 to 2007.
机译:背景技术暴露于大气颗粒物(PM)仍然是一个重要的公共健康问题,尽管仍然难以在足够高的空间分辨率下在较大的地理区域内准确量化。最近的流行病学分析表明,在空间和时间上可分辨的接触估计值的重要性,与最近的监测人员或特定于县域的环境浓度相比,PM介导的健康影响更大。方法我们开发了广义的加性混合模型,描述了精细(PM2.5),可吸入(PM10)和粗模式颗粒质量(PM2.5-)的每月质量浓度中的区域和小范围的时空梯度(以及相应的不确定性)。 10)表示相邻的美国(US)。这些模型凭借其更大的空间范围,包括另外5年的PM数据以发展到2007年的预测,以及对人口密度和点的精确地理协变量的使用,扩展了我们先前为美国东北和中西部开发的模型。源PM排放。使用10倍交叉验证(CV)进行协变量选择和模型验证。结果PM2.5模型具有较高的预测准确性(1988-1998年和1999-2007年的CV R2 = 0.77)。尽管模型的性能仍然很强,但模型对PM10(1988–1998和1999–2007的CV R2 = 0.58)和PM2.5–10(1988–1998和1999–2007的CV R2 = 0.46和0.52)的预测能力,分别较低)。在地理和气象协变量的影响中发现了区域差异。尽管各地区的预测表现有所不同,但模型在城市和农村地区以及整个季节的表现都很好(东北,中西部,东南部,中南部,西南部的CV R2 = 0.81、0.81、0.83、0.72、0.69、0.50和0.60) ,西北和中原地区的PM2.5(从1999年至2007年)。结论我们的模型提供了具有高空间分辨率和低偏差的PM2.5,PM10和PM2.5-10每月平均室外浓度的估计值。因此,这些模型适用于估算1988年至2007年间居住在美国本土的人口的长期暴露情况。

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