Centre for Research in Environmental Epidemiology (CREAL), Parc de Recerca Biomèdica de Barcelona, Doctor Aiguader 88, 08003 Barcelona, Spain; IMIM (Hospital del Mar Research Institute), Passeig Marítim 25-29, 08003 Barcelona, Spain; CIBER Epidemiologia y Salud Pública (CIBERESP), Spain; INSERM, U823, Team of Environmental Epidemiology Applied to Reproduction and Respiratory Health, Institute Albert Bonniot, 38042 Grenoble, France.
Environ Int. 2013 Oct;60:23-30. doi: 10.1016/j.envint.2013.07.005. Epub 2013 Aug 28.
Spatially-resolved air pollution models can be developed in large areas. The resulting increased exposure contrasts and population size offer opportunities to better characterize the effect of atmospheric pollutants on respiratory health. However the heterogeneity of these areas may also enhance the potential for confounding. We aimed to discuss some analytical approaches to handle this trade-off.
We modeled NO2 and PM10 concentrations at the home addresses of 1082 pregnant mothers from EDEN cohort living in and around urban areas, using ADMS dispersion model. Simulations were performed to identify the best strategy to limit confounding by unmeasured factors varying with area type. We examined the relation between modeled concentrations and respiratory health in infants using regression models with and without adjustment or interaction terms with area type.
Simulations indicated that adjustment for area limited the bias due to unmeasured confounders varying with area at the costs of a slight decrease in statistical power. In our cohort, rural and urban areas differed for air pollution levels and for many factors associated with respiratory health and exposure. Area tended to modify effect measures of air pollution on respiratory health.
Increasing the size of the study area also increases the potential for residual confounding. Our simulations suggest that adjusting for type of area is a good option to limit residual confounding due to area-associated factors without restricting the area size. Other statistical approaches developed in the field of spatial epidemiology are an alternative to control for poorly-measured spatially-varying confounders.
空间分辨率空气污染模型可在大面积区域中建立。由此产生的对比暴露增加和人口规模提供了更好地描述大气污染物对呼吸道健康影响的机会。然而,这些区域的异质性也可能增强混杂的可能性。我们旨在讨论一些分析方法来处理这种权衡。
我们使用 ADMS 扩散模型,对 EDEN 队列中居住在城市及其周边地区的 1082 名孕妇的家庭住址中的 NO2 和 PM10 浓度进行建模。模拟旨在确定最佳策略,以限制因区域类型而异的未测量因素引起的混杂。我们使用带有和不带有与区域类型的调整或交互项的回归模型,检查模型浓度与婴儿呼吸道健康之间的关系。
模拟表明,区域调整会以牺牲统计学功效的轻微降低为代价,减少因区域而异的未测量混杂因素的偏差。在我们的队列中,农村和城市地区的空气污染水平以及与呼吸道健康和暴露相关的许多因素存在差异。区域往往会改变空气污染对呼吸道健康的影响度量。
研究区域的扩大也会增加残留混杂的可能性。我们的模拟表明,调整区域类型是限制因区域相关因素引起的残留混杂而不限制区域大小的一个很好的选择。空间流行病学领域开发的其他统计方法是控制未充分测量的空间变化混杂因素的另一种选择。