Reanalysis of the association between reduction in long-term PM2.5 concentrations and improved life expectancy.

Sun-Young Kim, Arden C Pope, Julian D Marshall, Neal Fann, Lianne Sheppard
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引用次数: 3

Abstract

Background: Much of the current evidence of associations between long-term PM2.5 and health outcomes relies on national or regional analyses using exposures derived directly from regulatory monitoring data. These findings could be affected by limited spatial coverage of monitoring data, particularly for time periods before spatially extensive monitoring began in the late 1990s. For instance, Pope et al. (2009) showed that between 1980 and 2000 a 10 μg/m3 reduction in PM2.5 was associated with an average 0.61 year (standard error (SE) = 0.20) longer life expectancy. That analysis used 1979-1983 averages of PM2.5 across 51 U.S. Metropolitan Statistical Areas (MSAs) computed from about 130 monitoring sites. Our reanalysis re-examines this association using modeled PM2.5 in order to assess population- or spatially-representative exposure. We hypothesized that modeled PM2.5 with finer spatial resolution provides more accurate health effect estimates compared to limited monitoring data.

Methods: We used the same data for life expectancy and confounders, as well as the same analysis models, and investigated the same 211 continental U.S. counties, as Pope et al. (2009). For modeled PM2.5, we relied on a previously-developed point prediction model based on regulatory monitoring data for 1999-2015 and back-extrapolation to 1979. Using this model, we predicted annual average concentrations at centroids of all 72,271 census tracts and 12,501 25-km national grid cells covering the contiguous U.S., to represent population and space, respectively. We averaged these predictions to the county for the two time periods (1979-1983 and 1999-2000), whereas the original analysis used MSA averages given limited monitoring data. Finally, we estimated regression coefficients for PM2.5 reduction on life expectancy improvement over the two periods, adjusting for area-level confounders.

Results: A 10 μg/m3 decrease in modeled PM2.5 based on census tract and national grid predictions was associated with 0.69 (standard error (SE) = 0.31) and 0.81 (0.29) -year increases in life expectancy. These estimates are higher than the estimate of Pope et al. (2009); they also have larger SEs likely because of smaller variability in exposure predictions, a standard property of regression. Two sets of effect estimates, however, had overlapping confidence intervals.

Conclusions: Our approach for estimating population- and spatially-representative PM2.5 concentrations based on census tract and national grid predictions, respectively, provided generally consistent findings to the original findings using limited monitoring data. This finding lends additional support to the evidence that reduced fine particulate matter contributes to extended life expectancy.

Abstract Image

Abstract Image

重新分析长期PM2.5浓度降低与预期寿命提高之间的关系。
背景:目前关于长期PM2.5与健康结果之间关联的许多证据依赖于国家或区域分析,这些分析使用的暴露量直接来自监管监测数据。这些发现可能受到监测数据空间覆盖范围有限的影响,特别是在1990年代后期开始进行空间广泛监测之前的时期。例如,Pope等人(2009)表明,1980年至2000年间,PM2.5浓度每降低10 μg/m3,预期寿命平均延长0.61年(标准误差(SE) = 0.20)。该分析使用了从大约130个监测点计算的美国51个大都市统计区(msa) 1979-1983年的PM2.5平均值。我们的再分析使用模拟PM2.5重新检验了这种关联,以评估具有人群或空间代表性的暴露。我们假设,与有限的监测数据相比,更精细的空间分辨率PM2.5模型提供了更准确的健康影响估计。方法:我们使用了相同的预期寿命数据和混杂因素,以及相同的分析模型,并调查了相同的211个美国大陆县,如Pope等人(2009)。对于PM2.5模型,我们依赖于先前开发的基于1999-2015年监管监测数据和1979年反向外推的点预测模型。利用该模型,我们预测了覆盖美国的所有72,271个人口普查区和12,501个25公里国家网格单元的质心的年平均浓度,分别代表人口和空间。我们对两个时间段(1979-1983年和1999-2000年)的预测进行了平均,而最初的分析使用的是MSA平均值,因为监测数据有限。最后,我们估计了两个时期PM2.5减少对预期寿命改善的回归系数,并对区域水平的混杂因素进行了调整。结果:基于人口普查区和国家电网预测的PM2.5模型每降低10 μg/m3,预期寿命分别增加0.69(标准误差(SE) = 0.31)和0.81(0.29)年。这些估计高于Pope等人(2009)的估计;它们也有较大的se,可能是因为暴露预测的变异性较小,这是回归的标准属性。然而,两组效应估计有重叠的置信区间。结论:我们分别基于人口普查区和国家电网预测估算人口和空间代表性PM2.5浓度的方法,与使用有限监测数据的原始研究结果大致一致。这一发现进一步支持了减少细颗粒物有助于延长预期寿命的证据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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