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Activity Number: 299 - Risk Analysis: New Data, New Approaches, and New Interfaces
Type: Invited
Date/Time: Wednesday, August 11, 2021 : 3:30 PM to 5:20 PM
Sponsor: Section on Risk Analysis
Abstract #316706
Title: Predicting Dose-Response Using Constrained Density Regression
Author(s): Michael L. Pennell* and Matthew Wheeler
Companies: The Ohio State University and National Institute of Environmental Health Sciences
Keywords: Count Data; Nonparametric Bayes; Order Restrictions; Stick-breaking process; Toxicogenomics; Toxicological Risk Assessment
Abstract:

Models capable of predicting dose-response curves have several potential applications in toxicological risk assessment. For instance, such models could be used to examine relationships between different assays or predict toxicity based on chemical properties. In toxicogenomic studies, one might be interested in a model that can predict the impact of chemical exposure on certain genes based on their function. However, constructing prediction models can be challenging because the shape of outcome distributions often change with dose thus violating assumptions of standard parametric models. Thus, motivated by data from toxicogenomic studies, we propose a Bayesian nonparametric approach for predicting the shape of a dose-response function. A stick-breaking process is used to relax distribution assumptions and cluster dose-response curves from different genes based on shape. Cluster-specific curves are modeled using regression splines subject to an umbrella ordering constraint. A logistic regression model is used for the "stick-breaks" to predict dose-response based gene-specific covariates (e.g., gene function). The method is applied to a recent National Toxicology Program study.


Authors who are presenting talks have a * after their name.

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