Integrating Biological Knowledge in Kernel-Based Analyses of Environmental Mixtures and Health
Glen McGee, Ander Wilson, Brent A Coull, Thomas F Webster

TL;DR
This paper enhances Bayesian models for environmental health risk assessment by integrating prior toxicological knowledge into kernel-based analyses of pollutant mixtures, improving inference accuracy and interpretability.
Contribution
It introduces three strategies for incorporating toxicological prior knowledge into the Bayesian multiple index model, including a novel prior combining spike-and-slab and Dirichlet distributions.
Findings
Proposed priors improve inference when prior info is correct.
Methods protect against misspecification with incorrect prior info.
Application to NHANES data demonstrates practical utility.
Abstract
A key goal of environmental health research is to assess the risk posed by mixtures of pollutants. As epidemiologic studies of mixtures can be expensive to conduct, it behooves researchers to incorporate prior knowledge about mixtures into their analyses. This work extends the Bayesian multiple index model (BMIM), which assumes the exposure-response function is a non-parametric function of a set of linear combinations of pollutants formed with a set of exposure-specific weights. The framework is attractive because it combines the flexibility of response-surface methods with the interpretability of linear index models. We propose three strategies to incorporate prior toxicological knowledge into construction of indices in a BMIM: (a) constraining index weights, (b) structuring index weights by exposure transformations, and (c) placing informative priors on the index weights. We propose a…
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Taxonomy
TopicsStatistical Methods and Bayesian Inference · Bayesian Methods and Mixture Models
