4.8 Article

Using Prior Toxicological Data to Support Dose-Response Assessment?Identifying Plausible Prior Distributions for Dichotomous Dose-Response Models

Journal

ENVIRONMENTAL SCIENCE & TECHNOLOGY
Volume 56, Issue 22, Pages 16506-16516

Publisher

AMER CHEMICAL SOC
DOI: 10.1021/acs.est.2c05872

Keywords

benchmark dose; Bayesian statistics; informative prior; dichotomous data

Funding

  1. National Institutes of Health (NIH)
  2. [R41TR002567]
  3. [R42ES032642]

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The study aims to support BMD estimation using informative prior with dichotomous data and provides a practical method for advanced Bayesian BMD modeling. The study found that using informative prior can significantly reduce uncertainty in BMD estimation.
The benchmark dose (BMD) methodology has significantly advanced the practice of dose-response analysis and created substantial opportunities to enhance the plausibility of BMD estimation by synthesizing dose-response information from different sources. Particularly, integrating existing toxicological information via prior distribution in a Bayesian framework is a promising but not well-studied strategy. The study objective is to identify a plausible way to incorporate toxicological information through informative prior to support BMD estimation using dichotomous data. There are four steps in this study: determine appropriate types of distribution for parameters in common dose-response models, estimate the parameters of the determined distributions, investigate the impact of alternative strategies of prior implementation, and derive endpoint-specific priors to examine how prior-eliciting data affect priors and BMD estimates. A plausible distribution was estimated for each parameter in the common dichotomous dose-response models using a general database. Alternative strategies for implementing informative prior have a limited impact on BMD estimation, but using informative prior can significantly reduce uncertainty in BMD estimation. Endpoint-specific informative priors are substantially different from the general one, highlighting the necessity for guidance on prior elicitation. The study developed a practical way to employ informative prior and laid a foundation for advanced Bayesian BMD modeling.

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