TL;DR
This paper introduces a Bayesian model that links chemical structure to toxicity responses, enabling improved toxicity prediction and chemical similarity assessment without extensive in vivo testing.
Contribution
The novel BS3FA model jointly learns chemical toxicity-related distances and predicts dose-response curves from structure alone, advancing in silico toxicity assessment methods.
Findings
Superior distance learning performance in simulations
Modest to large improvements in toxicity prediction accuracy
Insights into chemical structure-toxicity relationships
Abstract
Today there are approximately 85,000 chemicals regulated under the Toxic Substances Control Act, with around 2,000 new chemicals introduced each year. It is impossible to screen all of these chemicals for potential toxic effects either via full organism in vivo studies or in vitro high-throughput screening (HTS) programs. Toxicologists face the challenge of choosing which chemicals to screen, and predicting the toxicity of as-yet-unscreened chemicals. Our goal is to describe how variation in chemical structure relates to variation in toxicological response to enable in silico toxicity characterization designed to meet both of these challenges. With our Bayesian partially Supervised Sparse and Smooth Factor Analysis () model, we learn a distance between chemicals targeted to toxicity, rather than one based on molecular structure alone. Our model also enables the…
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