首页> 外文会议>Joint annual meeting of the International Society of Exposure Science and the International Society for Environmental Epidemiology >National PM2.S and NO2 Spatiotemporal Models Integrating Intensive Monitoring Data and Satellite-Derived Land Use Regression in a Universal Kriging Framework in the United States: 1999-2016
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National PM2.S and NO2 Spatiotemporal Models Integrating Intensive Monitoring Data and Satellite-Derived Land Use Regression in a Universal Kriging Framework in the United States: 1999-2016

机译:在美国通用克里金框架中将密集监控数据和卫星衍生土地利用回归整合的国家PM2.S和NO2时空模型:1999-2016年

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Background: Recent nationwide PM2.5 and NO2 exposure models increasingly incorporate land-use regression, satellite-derived observations and spatial smoothing to improve prediction accuracy for epidemiological studies. However, those studies exclusively relied on exposure data from routine monitoring sites that could be less useful for small spatial-scale predictions. Objectives: To develop regionalized national models in estimating PM2.5 and NO2 exposures with high spatiotemporal resolution from 1999 to 2016 in the United States. Methods: We collected monitoring data from numerous regulatory (number of monitors: 1495 [PM2.5], 754 [NO2]) and cohort-specific monitors (939 [PM2.5], 2573 [NO2]) that captured fine-scale residential and roadway exposure gradients. We established a novel modeling framework that incorporated all of the unbalanced monitoring data with land use regression and universal kriging using dimension-reduced predictor variables from satellite observations and a large geographic database. Results: Ten-fold cross-validations showed good model performances with total spatiotemporal R2s of 0.82 and 0.81 for PM2.5 and NO2 using the left out routine monitors. We observed larger within-city spatial variations (coefficient of variation [CV]) from the best models that accounted for cohort-specific monitors than the models that completely relied on routine monitoring sites (increased % of CV: 20-27% for PM2.5, 23-32% for NO2). Regional spatial R2 was highest in the southeast region (0.91) for PM2.5 and lowest in the northwest region (0.71), but was generally the same for NO2 across regions (0.84-0.87). Including satellite PM2.5 or NO2 data moderately improved predictions for points far from monitoring locations. Conclusion: Our models can make accurate point predictions of PM2.5 and NO2 concentrations at both short and long time scales when utilizing additional data from a large number of fine-scale monitors and satellite technology.
机译:背景:最近的全国PM2.5和NO2暴露模型越来越多地结合了土地利用回归,卫星观测和空间平滑化,以提高流行病学研究的预测准确性。但是,这些研究仅依赖于常规监测站点的暴露数据,这些数据对于小型空间尺度的预测可能没有多大用处。目标:从1999年到2016年,在美国以较高的时空分辨率建立区域性国家模型,以估算PM2.5和NO2的暴露量。方法:我们收集了许多监管机构(监视器数量:1495 [PM2.5],754 [NO2])和针对特定人群的监视器(939 [PM2.5],2573 [NO2])的监测数据,这些数据捕获了小型住宅和巷道暴露梯度。我们建立了一个新颖的建模框架,该模型将所有不平衡的监测数据与土地利用回归和通用克里金法结合起来,使用了来自卫星观测和大型地理数据库的降维后的预测变量。结果:十倍交叉验证显示出良好的模型性能,使用常规监测仪,PM2.5和NO2的总时空R2分别为0.82和0.81。与完全依赖常规监测点的模型(CV的增加百分比:PM2的20%到27%)相比,我们从观察到最佳队列模型的最佳模型中观察到更大的城市内部空间变化(变异系数[CV])。 5,对于NO2为23-32%)。区域空间R2在PM2.5的东南地区最高(0.91),而在西北地区的最低(0.71),但跨区域的NO2总体上相同(0.84-0.87)。包括卫星PM2.5或NO2数据在内,对于远离监视位置的点的预测得到了适度的改进。结论:当利用来自大量精细监测仪和卫星技术的附加数据时,我们的模型可以在短期和长期尺度上对PM2.5和NO2浓度进行准确的点预测。

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