Controlling for unmeasured confounding and spatial misalignment in long-term air pollution and health studies
Duncan Lee, Christophe Sarran

TL;DR
This paper introduces a novel Bayesian hierarchical model to address unmeasured confounding and spatial misalignment in long-term air pollution and health studies, improving estimation accuracy.
Contribution
The paper develops a new Bayesian model that simultaneously controls for spatial autocorrelation and adjusts for spatial misalignment, filling gaps in existing methods.
Findings
Model outperforms existing methods in simulations
Provides new estimates of pollution effects on respiratory health in England
Offers software for broader application of the methodology
Abstract
The health impact of long-term exposure to air pollution is now routinely estimated using spatial ecological studies, due to the recent widespread availability of spatial referenced pollution and disease data. However, this areal unit study design presents a number of statistical challenges, which if ignored have the potential to bias the estimated pollution-health relationship. One such challenge is how to control for the spatial autocorrelation present in the data after accounting for the known covariates, which is caused by unmeasured confounding. A second challenge is how to adjust the functional form of the model to account for the spatial misalignment between the pollution and disease data, which causes within-area variation in the pollution data. These challenges have largely been ignored in existing long-term spatial air pollution and health studies, so here we propose a novel…
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Taxonomy
TopicsAir Quality and Health Impacts · Economic and Environmental Valuation · Urban Transport and Accessibility
