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首页> 外文期刊>Epidemiology >Traffic-related air pollution and socioeconomic status: a spatial autocorrelation study to assess environmental equity on a small-area scale.
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Traffic-related air pollution and socioeconomic status: a spatial autocorrelation study to assess environmental equity on a small-area scale.

机译:与交通有关的空气污染和社会经济状况:一项空间自相关研究,以小规模评估环境公平。

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摘要

BACKGROUND:: Most ecologic studies of environmental equity show that groups with lower socioeconomic status (SES) are more likely to be exposed to higher air pollution levels than groups of higher SES. However, these studies rarely consider spatial autocorrelation in the data. We investigated the associations between traffic-related air pollution and SES on a small-area level in Strasbourg (France) and assessed the impact of spatial autocorrelation on the results. METHODS:: We used a deprivation index, constructed from census data, to estimate SES at the block level. Average ambient nitrogen dioxide (NO2) levels during year 2000, modeled at the block level by a dispersion model, served as a marker of traffic exhaust. We estimated the association between exposure to NO2 and the deprivation index by using an ordinary least squares model and a simultaneous autoregressive model that controls for the spatial autocorrelation of data. RESULTS:: The association between the deprivation index and NO2 levels was positive and nonlinear with both regression models; the midlevel deprivation areas were the most exposed. Control of spatial autocorrelation strongly reduced the strength of the association but clearly improved the model's goodness-of-fit; the most pronounced reduction was observed for the midlevel deprivation areas (regression coefficients decreased by 67%). CONCLUSIONS:: This study confirms the need to take spatial autocorrelation into account in ecologic studies and shows that failure to do so may lead to biased and unreliable estimates and thus to erroneous conclusions. This may be especially important in studying the role of air pollution on social inequalities in health.
机译:背景:大多数关于环境公平的生态学研究表明,社会经济地位(SES)较低的群体比社会经济地位较高的群体更容易受到较高的空气污染水平。但是,这些研究很少考虑数据中的空间自相关。我们在法国斯特拉斯堡的一个小区域范围内调查了与交通有关的空气污染与SES之间的关联,并评估了空间自相关对结果的影响。方法::我们使用了从人口普查数据构建的剥夺指数来估计区块级别的SES。 2000年期间的平均二氧化氮(NO2)水平是通过弥散模型在区块水平上建模的,可作为交通尾气的标志。我们通过使用普通最小二乘法模型和控制数据空间自相关的同时自回归模型,估算了NO2暴露与贫困指数之间的关联。结果:两种回归模型的剥夺指数与NO2水平之间的相关性均为正相关且呈非线性关系。中部贫困地区是最容易受到威胁的地区。空间自相关的控制大大降低了关联的强度,但明显改善了模型的拟合优度;在中部贫困地区观察到最明显的减少(回归系数下降了67%)。结论:该研究证实了生态研究中必须考虑空间自相关,并表明如果不这样做,可能会导致有偏倚和不可靠的估计,从而得出错误的结论。这对于研究空气污染对健康中的社会不平等的作用尤其重要。

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