Buteau Stephane, Hatzopoulou Marianne, Crouse Dan L, Smargiassi Audrey, Burnett Richard T, Logan Travis, Cavellin Laure Deville, Goldberg Mark S
Department of Medicine, McGill University, Montreal, Quebec, Canada; Institut national de sante publique du Quebec (INSPQ), Montreal, Quebec, Canada.
Department of Civil Engineering, University of Toronto, Toronto, Ontario, Canada.
Environ Res. 2017 Jul;156:201-230. doi: 10.1016/j.envres.2017.03.017. Epub 2017 Mar 28.
In previous studies investigating the short-term health effects of ambient air pollution the exposure metric that is often used is the daily average across monitors, thus assuming that all individuals have the same daily exposure. Studies that incorporate space-time exposures of individuals are essential to further our understanding of the short-term health effects of ambient air pollution.
As part of a longitudinal cohort study of the acute effects of air pollution that incorporated subject-specific information and medical histories of subjects throughout the follow-up, the purpose of this study was to develop and compare different prediction models using data from fixed-site monitors and other monitoring campaigns to estimate daily, spatially-resolved concentrations of ozone (O) and nitrogen dioxide (NO) of participants' residences in Montreal, 1991-2002.
We used the following methods to predict spatially-resolved daily concentrations of O and NO for each geographic region in Montreal (defined by three-character postal code areas): (1) assigning concentrations from the nearest monitor; (2) spatial interpolation using inverse-distance weighting; (3) back-extrapolation from a land-use regression model from a dense monitoring survey, and; (4) a combination of a land-use and Bayesian maximum entropy model. We used a variety of indices of agreement to compare estimates of exposure assigned from the different methods, notably scatterplots of pairwise predictions, distribution of differences and computation of the absolute agreement intraclass correlation (ICC). For each pairwise prediction, we also produced maps of the ICCs by these regions indicating the spatial variability in the degree of agreement.
We found some substantial differences in agreement across pairs of methods in daily mean predicted concentrations of O and NO. On a given day and postal code area the difference in the concentration assigned could be as high as 131ppb for O and 108ppb for NO. For both pollutants, better agreement was found between predictions from the nearest monitor and the inverse-distance weighting interpolation methods, with ICCs of 0.89 (95% confidence interval (CI): 0.89, 0.89) for O and 0.81 (95%CI: 0.80, 0.81) for NO, respectively. For this pair of methods the maximum difference on a given day and postal code area was 36ppb for O and 74ppb for NO. The back-extrapolation method showed a higher degree of disagreement with the nearest monitor approach, inverse-distance weighting interpolation, and the Bayesian maximum entropy model, which were strongly constrained by the sparse monitoring network. The maps showed that the patterns of agreement differed across the postal code areas and the variability depended on the pair of methods compared and the pollutants. For O, but not NO, postal areas showing greater disagreement were mostly located near the city centre and along highways, especially in maps involving the back-extrapolation method.
In view of the substantial differences in daily concentrations of O and NO predicted by the different methods, we suggest that analyses of the health effects from air pollution should make use of multiple exposure assessment methods. Although we cannot make any recommendations as to which is the most valid method, models that make use of higher spatially resolved data, such as from dense exposure surveys or from high spatial resolution satellite data, likely provide the most valid estimates.
在以往调查环境空气污染短期健康影响的研究中,常用的暴露指标是各监测点的日均值,即假定所有人的日暴露量相同。纳入个体时空暴露情况的研究对于深化我们对环境空气污染短期健康影响的理解至关重要。
作为一项空气污染急性影响纵向队列研究的一部分,该研究在整个随访过程中纳入了受试者的特定信息和病史,其目的是利用固定监测点及其他监测活动的数据,开发并比较不同的预测模型,以估算1991 - 2002年蒙特利尔参与者住所的每日空间分辨臭氧(O)和二氧化氮(NO)浓度。
我们采用以下方法预测蒙特利尔每个地理区域(由三位邮政编码区域定义)的O和NO的空间分辨日浓度:(1)采用最近监测点的浓度;(2)使用距离反比加权法进行空间插值;(3)根据密集监测调查的土地利用回归模型进行反向推算;(4)土地利用与贝叶斯最大熵模型相结合。我们使用多种一致性指标比较不同方法得出的暴露估计值,特别是成对预测的散点图、差异分布以及绝对一致性组内相关系数(ICC)的计算。对于每一对预测,我们还绘制了这些区域的ICC地图,以显示一致性程度的空间变异性。
我们发现,在O和NO的日平均预测浓度方面,各方法对之间的一致性存在显著差异。在给定的一天和邮政编码区域,O的浓度差异可达131 ppb,NO的浓度差异可达108 ppb。对于这两种污染物,最近监测点预测值与距离反比加权插值法之间的一致性较好,O的ICC为0.89(95%置信区间(CI):0.89,0.89),NO的ICC为0.81(95%CI:0.80,0.81)。对于这一对方法,在给定的一天和邮政编码区域,O的最大差异为36 ppb,NO的最大差异为74 ppb。反向推算方法与最近监测点方法、距离反比加权插值法以及贝叶斯最大熵模型之间的不一致程度较高,后几种方法受到稀疏监测网络的强烈限制。地图显示,邮政编码区域的一致性模式各不相同,变异性取决于所比较的方法对和污染物。对于O而非NO,一致性较差的邮政区域大多位于市中心附近和高速公路沿线,尤其是在涉及反向推算方法的地图中。
鉴于不同方法预测的O和NO日浓度存在显著差异,我们建议空气污染健康影响分析应采用多种暴露评估方法。虽然我们无法就哪种方法最有效提出任何建议,但利用更高空间分辨数据的模型,如来自密集暴露调查或高空间分辨率卫星数据的模型,可能提供最有效的估计值。