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Assessing the cumulative health effect following short term exposure to multiple pollutants: An evaluation of methodological approaches using simulations and real data

机译:评估短期暴露于多种污染物后的累积健康影响:使用模拟和真实数据对方法论的评估

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Background: Assessment of the cumulative effect of correlated exposures is an open methodological issue in environmental epidemiology. Most previous studies have applied regression models with interaction terms or dimension reduction methods. The combined effect of pollutants has been also evaluated through the use of exposure scores that incorporate weights based on the strength of the component-specific associations with health outcomes.Methods: We compared three approaches addressing multi-pollutant exposures in epidemiological models: main effects models, the adaptive least absolute shrinkage and selection operator (LASSO) and a weighted exposure score. We assessed the performance of the methods by simulations under various scenarios for the pollutants' correlations. We further applied these methods to time series data from Athens, Greece in 2007-12 to investigate the combined effect of short-term exposure to six regulated pollutants on all-cause and respiratory mortality.Results: The exposure score provided the least biased estimate under all correlation scenarios for both mortality outcomes. The adaptive LASSO performed well in the case of low and medium correlation between exposures while the main effect model resulted in severe bias. In the real data application, the cumulative effect estimate was similar between approaches for all-cause mortality ranging from 0.7% increase per interquartile range (IQR) (score) to 1.1% (main effects), while for respiratory mortality conclusions were contradictive and ranged from - 0.6% (adaptive LASSO) to 2.8% (score).Conclusions: The use of a weighted exposure score to address cumulative effects of correlated metrics may perform well under different exposure correlation and variability in the health outcomes.
机译:背景:相关暴露累积效应的评估是环境流行病学中一个开放的方法论问题。以前的大多数研究已将回归模型与交互作用项或降维方法一起应用。污染物的综合影响也已通过使用暴露评分法进行了评估,该评分方法基于特定成分与健康结局之间的关联强度来权重。方法:我们比较了三种在流行病学模型中解决多种污染物暴露的方法:主要影响模型,自适应最小绝对收缩和选择算子(LASSO)和加权曝光分数。我们通过模拟在各种情景下污染物的相关性评估了方法的性能。我们将这些方法进一步应用于2007-12年希腊雅典的时间序列数据,以调查短期暴露于六种受管制污染物对全因和呼吸道死亡率的综合影响。结果:暴露分数在以下条件下提供了最小的偏向估计两种死亡率结果的所有相关情景。在曝光之间的相关性较低和中等的情况下,自适应LASSO表现良好,而主效应模型会导致严重的偏差。在实际数据应用中,两种全因死亡率方法的累积效应估计值相似,范围从每四分位间距(IQR)提高0.7%(得分)到1.1%(主要效应),而对于呼吸道死亡率,结论却相互矛盾且范围很广。从-0.6%(自适应LASSO)到2.8%(分数)。结论:在不同的暴露相关性和健康结果的可变性下,使用加权暴露评分来解决相关指标的累积影响可能效果很好。

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