University of New Mexico School of Medicine, Department of Internal Medicine, Division of Epidemiology and Preventive Medicine, Albuquerque, NM 97101-0001, USA.
Sci Total Environ. 2012 Aug 15;432:135-42. doi: 10.1016/j.scitotenv.2012.05.062. Epub 2012 Jun 21.
Developing suitable exposure estimates for air pollution health studies is problematic due to spatial and temporal variation in concentrations and often limited monitoring data. Though land use regression models (LURs) are often used for this purpose, their applicability to later periods of time, larger geographic areas, and seasonal variation is largely untested. We evaluate a series of mixed model LURs to describe the spatial-temporal gradients of NO(2) across El Paso County, Texas based on measurements collected during cool and warm seasons in 2006-2007 (2006-7). We also evaluated performance of a general additive model (GAM) developed for central El Paso in 1999 to assess spatial gradients across the County in 2006-7. Five LURs were developed iteratively from the study data and their predictions were averaged to provide robust nitrogen dioxide (NO(2)) concentration gradients across the county. Despite differences in sampling time frame, model covariates and model estimation methods, predicted NO(2) concentration gradients were similar in the current study as compared to the 1999 study. Through a comprehensive LUR modeling campaign, it was shown that the nature of the most influential predictive variables remained the same for El Paso between 1999 and 2006-7. The similar LUR results obtained here demonstrate that, at least for El Paso, LURs developed from prior years may still be applicable to assess exposure conditions in subsequent years and in different seasons when seasonal variation is taken into consideration.
由于浓度在空间和时间上的变化以及监测数据通常有限,因此为空气污染健康研究制定合适的暴露估计值存在问题。尽管土地利用回归模型(LUR)常用于此目的,但它们在以后的时间段、更大的地理区域和季节性变化方面的适用性在很大程度上未经测试。我们评估了一系列混合模型 LUR,以根据 2006-2007 年(2006-7)凉爽和温暖季节收集的测量数据描述德克萨斯州埃尔帕索县的 NO(2)时空梯度。我们还评估了为 1999 年中埃尔帕索中心开发的广义相加模型(GAM)在 2006-7 年评估全县空间梯度的性能。从研究数据中迭代开发了五个 LUR,并对它们的预测值进行了平均处理,以提供全县范围内稳健的二氧化氮(NO(2))浓度梯度。尽管采样时间框架、模型协变量和模型估计方法存在差异,但与 1999 年的研究相比,当前研究中的预测 NO(2)浓度梯度相似。通过全面的 LUR 建模活动,表明在 1999 年至 2006-7 年期间,埃尔帕索的最具影响力预测变量的性质保持不变。这里获得的相似 LUR 结果表明,至少对于埃尔帕索而言,从前几年开发的 LUR 仍然可用于评估后续年份和不同季节的暴露条件,同时考虑季节性变化。