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Characterization of Ambient Air Pollution Measurement Error in a Time-Series Health Study using a Geostatistical Simulation Approach

机译:利用地统计模拟方法表征时序健康研究中的环境空气污染测量误差

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摘要

In recent years, geostatistical modeling has been used to inform air pollution health studies. In this study, distributions of daily ambient concentrations were modeled over space and time for 12 air pollutants. Simulated pollutant fields were produced for a 6-year time period over the 20-county metropolitan Atlanta area using the Stanford Geostatistical Modeling Software (SGeMS). These simulations incorporate the temporal and spatial autocorrelation structure of ambient pollutants, as well as season and day-of-week temporal and spatial trends; these fields were considered to be the true ambient pollutant fields for the purposes of the simulations that followed. Simulated monitor data at the locations of actual monitors were then generated that contain error representative of instrument imprecision. From the simulated monitor data, four exposure metrics were calculated: central monitor and unweighted, population-weighted, and area-weighted averages. For each metric, the amount and type of error relative to the simulated pollutant fields are characterized and the impact of error on an epidemiologic time-series analysis is predicted. The amount of error, as indicated by a lack of spatial autocorrelation, is greater for primary pollutants than for secondary pollutants and is only moderately reduced by averaging across monitors; more error will result in less statistical power in the epidemiologic analysis. The type of error, as indicated by the correlations of error with the monitor data and with the true ambient concentration, varies with exposure metric, with error in the central monitor metric more of the classical type (i.e., independent of the monitor data) and error in the spatial average metrics more of the Berkson type (i.e., independent of the true ambient concentration). Error type will affect the bias in the health risk estimate, with bias toward the null and away from the null predicted depending on the exposure metric; population-weighting yielded the least bias.
机译:近年来,地统计学建模已被用于通知空气污染健康研究。在该研究中,日常环境浓度的分布在12空气污染物的空间和时间上进行了建模。使用斯坦福地质地统计学建模软件(SGEM),在20县大都市亚特兰大地区为期6年期间生产了模拟污染领域。这些模拟包括环境污染物的时间和空间自相关结构,以及季节和一周的时间和空间趋势;为了遵循模拟的目的,这些字段被认为是真正的环境污染物领域。然后生成模拟实际监视器位置的监视器数据,其中包含仪器不精确代表的错误。从模拟的监视器数据中,计算了四个曝光度量:中央监测和未加权,人口加权和面积加权平均值。对于每个度量,对模拟污染物字段的误差量和类型的特征在于,并且预测了对流行病学时间序列分析的误差的影响。由于缺乏空间自相关的误差量大于初级污染物而不是二级污染物,并且仅通过对监视器进行平均时适度降低;更多错误将导致流行病学分析中较少的统计功率。如误差与监视器数据和真正的环境浓度的相关性所指示的错误类型随着曝光度量而变化,中央监视器的误差是经典类型的误差(即,独立于监视器数据)和空间平均指标中的错误更多伯克逊类型(即,与真正的环境浓度无关)。错误类型将影响健康风险估计的偏差,偏向无效,远离根据曝光度量预测的空值;人口加权产生了最少的偏差。

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