Does It Measure Up? A Comparison of Pollution Exposure Assessment Techniques Applied across Hospitals in England
- Spatial heterogeneity is important to account for when investigating impacts of air pollution
- Traditional use of inverse distance weighting or nearest neighbour matching introduces bias and exposure misclassification
- Present an alternative approach to exposure assignment that balances the need for efficient policy evaluation and analysis against the need for spatial and temporal accuracy in the mapping of air pollution
Weighted averages of air pollution measurements from monitoring stations are commonly assigned as air pollution exposures to specific locations. However, monitoring networks are spatially sparse and fail to adequately capture the spatial variability. This may introduce bias and exposure misclassification. Advanced methods of exposure assessment are rarely practicable in estimating daily concentrations over large geographical areas. We propose an accessible method using temporally adjusted land use regression models (daily LUR). We applied this to produce daily concentration estimates for nitrogen dioxide, ozone, and particulate matter in a healthcare setting across England and compared them against geographically extrapolated measurements (inverse distance weighting) from air pollution monitors. The daily LUR estimates outperformed IDW. The precision gains varied across air pollutants, suggesting that, for nitrogen dioxide and particulate matter, the health effects may be underestimated. The results emphasised the importance of spatial heterogeneity in investigating the societal impacts of air pollution, illustrating improvements achievable at a lower computational cost.
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