A hybrid approach to estimating national scale spatiotemporal variability of PM2.5 in the contiguous United States

Bernardo S Beckerman, Michael Jerrett, Marc Serre, Randall V Martin, Seung-Jae Lee, Aaron van Donkelaar, Zev Ross, Jason Su, Richard T Burnett, Bernardo S Beckerman, Michael Jerrett, Marc Serre, Randall V Martin, Seung-Jae Lee, Aaron van Donkelaar, Zev Ross, Jason Su, Richard T Burnett

Abstract

Airborne fine particulate matter exhibits spatiotemporal variability at multiple scales, which presents challenges to estimating exposures for health effects assessment. Here we created a model to predict ambient particulate matter less than 2.5 μm in aerodynamic diameter (PM2.5) across the contiguous United States to be applied to health effects modeling. We developed a hybrid approach combining a land use regression model (LUR) selected with a machine learning method, and Bayesian Maximum Entropy (BME) interpolation of the LUR space-time residuals. The PM2.5 data set included 104,172 monthly observations at 1464 monitoring locations with approximately 10% of locations reserved for cross-validation. LUR models were based on remote sensing estimates of PM2.5, land use and traffic indicators. Normalized cross-validated R(2) values for LUR were 0.63 and 0.11 with and without remote sensing, respectively, suggesting remote sensing is a strong predictor of ground-level concentrations. In the models including the BME interpolation of the residuals, cross-validated R(2) were 0.79 for both configurations; the model without remotely sensed data described more fine-scale variation than the model including remote sensing. Our results suggest that our modeling framework can predict ground-level concentrations of PM2.5 at multiple scales over the contiguous U.S.

Figures

Figure 1
Figure 1
Cross-validation (CV) risk plots as a function of model size
Figure 2
Figure 2
Comparison of cross-validation prediction for LUR models and combined LUR-BME models
Figure 3
Figure 3
Maps illustrating differences in spatial variability of LUR-BME exposure models averaged over the study time period: model using remote sensing (top), model without remote sensing (bottom).

Source: PubMed

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