Accounting for spatial confounding in epidemiological studies with individual-level exposures: An exposure-penalized spline approach

07/16/2021
by   Jennifer F. Bobb, et al.
0

In the presence of unmeasured spatial confounding, spatial models may actually increase (rather than decrease) bias, leading to uncertainty as to how they should be applied in practice. We evaluated spatial modeling approaches through simulation and application to a big data electronic health record study. Whereas the risk of bias was high for purely spatial exposures (e.g., built environment), we found very limited potential for increased bias for individual-level exposures that cluster spatially (e.g., smoking status). We also proposed a novel exposure-penalized spline approach that selects the degree of spatial smoothing to explain spatial variability in the exposure. This approach appeared promising for efficiently reducing spatial confounding bias.

READ FULL TEXT

page 13

page 15

page 29

page 41

research
09/20/2020

Spatial+: a novel approach to spatial confounding

In spatial regression models, collinearity between covariates and spatia...
research
03/14/2023

Spatial causal inference in the presence of unmeasured confounding and interference

Causal inference in spatial settings is met with unique challenges and o...
research
08/23/2023

Consistency of common spatial estimators under spatial confounding

This paper addresses the asymptotic performance of popular spatial regre...
research
09/24/2019

Selecting a Scale for Spatial Confounding Adjustment

Unmeasured, spatially-structured factors can confound associations betwe...
research
09/05/2019

Reduced-bias estimation of spatial econometric models with incompletely geocoded data

The application of state-of-the-art spatial econometric models requires ...

Please sign up or login with your details

Forgot password? Click here to reset