Prediction of the effect of formulation on the toxicity of chemicals†
Abstract
Two approaches for the prediction of which of two vehicles will result in lower toxicity for anticancer agents are presented. Machine-learning models are developed using decision tree, random forest and partial least squares methodologies and statistical evidence is presented to demonstrate that they represent valid models. Separately, a clustering method is presented that allows the ordering of vehicles by the toxicity they show for chemically-related compounds.
- This article is part of the themed collection: Toxicology Research 2017 Most Downloaded Articles