|Title||A Global Land Use Regression Model for Nitrogen Dioxide Air Pollution.|
|Publication Type||Journal Article|
|Year of Publication||2017|
|Authors||Larkin, A, Geddes, JA, Martin, RV, Xiao, Q, Liu, Y, Marshall, JD, Brauer, M, Hystad, P|
|Journal||Environ Sci Technol|
|Date Published||2017 May 18|
Nitrogen dioxide is a common air pollutant with growing evidence of health impacts independent of other common pollutants such as ozone and particulate matter. However, the global distribution of NO2 exposure and associated impacts on global health is still largely uncertain. To advance global exposure estimates we created a global nitrogen dioxide (NO2) land use regression model for 2011 using annual measurements from 5,220 air monitors in 58 countries. The model captured 54% of global NO2 variation, with a mean absolute error of 3.7 ppb. Regional performance varied from R2 = 0.42 (Africa) to 0.67 (South America). Repeated 10% cross-validation using bootstrap sampling (n=10,000) demonstrated robust performance with respect to air monitor sampling in North America, Europe, and Asia (adjusted R2 within 2%) but not for Africa and Oceania (adjusted R2 within 11%) where NO2 monitoring data are sparse. The final model included 10 variables that captured both between and within-city spatial gradients in NO2 concentrations. Variable contributions differed between continental regions but major roads within 100m and satellite-derived NO2 were consistently the strongest predictors. The resulting model can be used for global risk assessments as well as be applied to health studies in countries without existing NO2 monitoring data or models.
|Alternate Journal||Environ. Sci. Technol.|