TL;DR
This paper introduces a Bayesian semiparametric regression method with sparsity priors to estimate health effects of environmental mixtures, capturing nonlinearities and interactions, demonstrated through simulations and real data applications.
Contribution
It presents a novel flexible Bayesian framework that models complex, nonlinear, and interactive effects of environmental exposures with sparsity for variable selection.
Findings
Successfully estimates complex exposure-response relationships
Identifies key pollutants and interactions affecting health
Demonstrates effectiveness through simulations and real studies
Abstract
Humans are routinely exposed to mixtures of chemical and other environmental factors, making the quantification of health effects associated with environmental mixtures a critical goal for establishing environmental policy sufficiently protective of human health. The quantification of the effects of exposure to an environmental mixture poses several statistical challenges. It is often the case that exposure to multiple pollutants interact with each other to affect an outcome. Further, the exposure-response relationship between an outcome and some exposures, such as some metals, can exhibit complex, nonlinear forms, since some exposures can be beneficial and detrimental at different ranges of exposure. To estimate the health effects of complex mixtures we propose a flexible Bayesian approach that allows exposures to interact with each other and have nonlinear relationships with the…
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