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Measurement error in a multi-level analysis of air pollution and health: a simulation study

机译:空气污染与健康多级分析中的测量误差:仿真研究

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摘要

Abstract Background Spatio-temporal models are increasingly being used to predict exposure to ambient outdoor air pollution at high spatial resolution for inclusion in epidemiological analyses of air pollution and health. Measurement error in these predictions can nevertheless have impacts on health effect estimation. Using statistical simulation we aim to investigate the effects of such error within a multi-level model analysis of long and short-term pollutant exposure and health. Methods Our study was based on a theoretical sample of 1000 geographical sites within Greater London. Simulations of “true” site-specific daily mean and 5-year mean NO2 and PM10 concentrations, incorporating both temporal variation and spatial covariance, were informed by an analysis of daily measurements over the period 2009–2013 from fixed location urban background monitors in the London area. In the context of a multi-level single-pollutant Poisson regression analysis of mortality, we investigated scenarios in which we specified: the Pearson correlation between modelled and “true” data and the ratio of their variances (model versus “true”) and assumed these parameters were the same spatially and temporally. Results In general, health effect estimates associated with both long and short-term exposure were biased towards the null with the level of bias increasing to over 60% as the correlation coefficient decreased from 0.9 to 0.5 and the variance ratio increased from 0.5 to 2. However, for a combination of high correlation (0.9) and small variance ratio (0.5) non-trivial bias (> 25%) away from the null was observed. Standard errors of health effect estimates, though unaffected by changes in the correlation coefficient, appeared to be attenuated for variance ratios > 1 but inflated for variance ratios < 1. Conclusion While our findings suggest that in most cases modelling errors result in attenuation of the effect estimate towards the null, in some situations a non-trivial bias away from the null may occur. The magnitude and direction of bias appears to depend on the relationship between modelled and “true” data in terms of their correlation and the ratio of their variances. These factors should be taken into account when assessing the validity of modelled air pollution predictions for use in complex epidemiological models.
机译:摘要背景时空模型越来越多地用于预测高空间分辨率暴露于环境室外空气污染,以包含空气污染和健康的流行病学分析。然而,这些预测中的测量误差可能会影响健康效果估计。使用统计模拟,我们的目标是调查这种误差在长期污染物暴露和健康的多级模型分析中的影响。方法我们的研究基于大伦敦1000个地理位置的理论样本。仿真“真实”特定的每日平均值和5年的平均NO2和PM10浓度,通过从固定地点城市背景监视器中的2009 - 2013年期间的日常测量分析了日常测量来了解情况下的时间变化和空间协方差伦敦地区。在多级单污染物泊松回归分析死亡率的上下文中,我们调查了我们指定的情景:建模和“真实”数据之间的Pearson相关性以及其差异的比例(型号与“真”)和假设这些参数在空间和时间上相同。结果一般来说,与长期暴露的估计有关的健康效应估计,随着相关系数从0.9到0.5减小,偏差水平增加到超过60%的偏置率为60%,方差比从0.5增加到2。然而,对于高相关(0.9)和小方差比(0.5)离线的小差异(0.5)的组合被观察到远离零核的偏差偏差(> 25%)。健康效果估计的标准误差虽然不受相关系数的变化影响,但似乎衰减为方差比例> 1,但为方差比率膨胀<1.结论,虽然我们的研究结果表明,在大多数情况下,建模错误导致效果的衰减导致效果的衰减导致效果的衰减在某些情况下估算零核,可能发生远离空的偏差。偏差的幅度和方向似乎取决于它们在它们的相关性和差异的比例方面之间建模和“真实”数据之间的关系。在评估复杂流行病学模型中建模的空气污染预测的有效性时,应考虑这些因素。

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