Centre for Occupational and Environmental Health, School of Community Based Medicine, Manchester Academic Health Science Centre, The University of Manchester, Oxford Road, Manchester, M13 9PL, UK.
Sci Total Environ. 2010 Nov 1;408(23):5862-9. doi: 10.1016/j.scitotenv.2010.08.027. Epub 2010 Sep 16.
A common limitation of epidemiological studies on health effects of air pollution is the quality of exposure data available for study participants. Exposure data derived from urban monitoring networks is usually not adequately representative of the spatial variation of pollutants, while personal monitoring campaigns are often not feasible, due to time and cost restrictions. Therefore, many studies now rely on empirical modelling techniques, such as land use regression (LUR), to estimate pollution exposure. However, LUR still requires a quantity of specifically measured data to develop a model, which is usually derived from a dedicated monitoring campaign. A dedicated air dispersion modelling exercise is also possible but is similarly resource and data intensive. This study adopted a novel approach to LUR, which utilised existing data from an air dispersion model rather than monitored data. There are several advantages to such an approach such as a larger number of sites to develop the LUR model compared to monitored data. Furthermore, through this approach the LUR model can be adapted to predict temporal variation as well as spatial variation. The aim of this study was to develop two LUR models for an epidemiologic study based in Greater Manchester by using modelled NO(2) and PM(10) concentrations as dependent variables, and traffic intensity, emissions, land use and physical geography as potential predictor variables. The LUR models were validated through a set aside "validation" dataset and data from monitoring stations. The final models for PM(10) and NO(2) comprised nine and eight predictor variables respectively and had determination coefficients (R²) of 0.71 (PM(10): Adj. R²=0.70, F=54.89, p<0.001, NO(2): Adj. R²=0.70, F=62.04, p<0.001). Validation of the models using the validation data and measured data showed that the R² decreases compared to the final models, except for NO(2) validation in the measured data (validation data: PM(10): R²=0.33, NO(2): R²=0.62; measured data: PM(10): R²=0.56, NO(2): R²=0.86). The validation further showed low mean prediction errors and root mean squared errors for both models.
空气污染对健康影响的流行病学研究的一个常见局限性是可用于研究参与者的暴露数据的质量。城市监测网络得出的暴露数据通常不能充分代表污染物的空间变化,而个人监测活动由于时间和成本限制通常不可行。因此,许多研究现在依赖于经验模型技术,例如基于土地利用的回归(LUR),来估计污染暴露。然而,LUR 仍然需要一定数量的特定测量数据来开发模型,这些数据通常是从专门的监测活动中得出的。专门的空气扩散建模活动也是可能的,但同样需要大量的资源和数据。本研究采用了一种新颖的 LUR 方法,该方法利用空气扩散模型中的现有数据而不是监测数据。与监测数据相比,这种方法有几个优点,例如可以有更多的站点来开发 LUR 模型。此外,通过这种方法,LUR 模型可以适应预测时间变化以及空间变化。本研究的目的是通过使用作为因变量的模型化 NO₂和 PM₁₀浓度以及交通强度、排放、土地利用和自然地理作为潜在预测变量,为大曼彻斯特地区的一项流行病学研究开发两个 LUR 模型。通过预留的“验证”数据集和监测站的数据对 LUR 模型进行了验证。PM₁₀和 NO₂的最终模型分别包含九个和八个预测变量,其决定系数(R²)分别为 0.71(PM₁₀:调整 R²=0.70,F=54.89,p<0.001,NO₂:调整 R²=0.70,F=62.04,p<0.001)。使用验证数据和实测数据验证模型表明,与最终模型相比,R²有所降低,但实测数据中 NO₂的验证除外(验证数据:PM₁₀:R²=0.33,NO₂:R²=0.62;实测数据:PM₁₀:R²=0.56,NO₂:R²=0.86)。验证还表明,两个模型的平均预测误差和均方根误差都很低。