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Autori principali: Prim, Shih-Ni, Guan, Yawen, Yang, Shu, Rappold, Ana G, Hill, K. Lloyd, Tsai, Wei-Lun, Keeler, Corinna, Reich, Brian J
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2506.09325
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author Prim, Shih-Ni
Guan, Yawen
Yang, Shu
Rappold, Ana G
Hill, K. Lloyd
Tsai, Wei-Lun
Keeler, Corinna
Reich, Brian J
author_facet Prim, Shih-Ni
Guan, Yawen
Yang, Shu
Rappold, Ana G
Hill, K. Lloyd
Tsai, Wei-Lun
Keeler, Corinna
Reich, Brian J
contents Unmeasured spatial confounding complicates exposure effect estimation in environmental health studies. This problem is exacerbated in studies with multiple health outcomes and environmental exposure variables, as the source and magnitude of confounding bias may differ across exposure/outcome pairs. We propose to mitigate the effects of spatial confounding in multivariate studies by projecting to the spectral domain to separate relationships by the spatial scale and assuming that the confounding bias dissipates at more local scales. Under this assumption and some reasonable conditions, the random effect is uncorrelated with the exposures in local scales, ensuring causal interpretation of the regression coefficients. Our model for the exposure effects is a three-way tensor over exposure, outcome, and spatial scale. We use a canonical polyadic decomposition and shrinkage priors to encourage sparsity and borrow strength across the dimensions of the tensor. We demonstrate the performance of our method in an extensive simulation study and data analysis to understand the relationship between disaster resilience and the incidence of chronic diseases.
format Preprint
id arxiv_https___arxiv_org_abs_2506_09325
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle A Spectral Confounder Adjustment for Spatial Regression with Multiple Exposures and Outcomes
Prim, Shih-Ni
Guan, Yawen
Yang, Shu
Rappold, Ana G
Hill, K. Lloyd
Tsai, Wei-Lun
Keeler, Corinna
Reich, Brian J
Methodology
Unmeasured spatial confounding complicates exposure effect estimation in environmental health studies. This problem is exacerbated in studies with multiple health outcomes and environmental exposure variables, as the source and magnitude of confounding bias may differ across exposure/outcome pairs. We propose to mitigate the effects of spatial confounding in multivariate studies by projecting to the spectral domain to separate relationships by the spatial scale and assuming that the confounding bias dissipates at more local scales. Under this assumption and some reasonable conditions, the random effect is uncorrelated with the exposures in local scales, ensuring causal interpretation of the regression coefficients. Our model for the exposure effects is a three-way tensor over exposure, outcome, and spatial scale. We use a canonical polyadic decomposition and shrinkage priors to encourage sparsity and borrow strength across the dimensions of the tensor. We demonstrate the performance of our method in an extensive simulation study and data analysis to understand the relationship between disaster resilience and the incidence of chronic diseases.
title A Spectral Confounder Adjustment for Spatial Regression with Multiple Exposures and Outcomes
topic Methodology
url https://arxiv.org/abs/2506.09325