5. Predictive Toxicogenomics in Preclinical Discovery
| Abstract |
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The failure of drug candidates during clinical trials due to toxicity, especially hepatotoxicity, is an important and continuing
problem in the pharmaceutical industry.
This chapter explores new predictive toxicogenomics approaches to better understand the hepatotoxic potential of human drug
candidates and to assess their toxicity earlier in the drug development process. The underlying data consisted of two commercial
knowledgebases that employed a hybrid experimental design in which human drug-toxicity information was extracted from the
literature, dichotomized, and merged with rat-based gene expression measures (primary isolated hepatocytes and whole liver).
Toxicity classification rules were built using a stochastic gradient boosting machine learner, with classification error estimated
using a modified bootstrap estimate of true error. Several types of clustering methods were also applied, based on sets of
compounds and genes. Robust classification rules were constructed for both in vitro (hepatocytes) and in vivo (liver) data, based on a high-dose, 24-h design. There appeared to be little overlap between the two classifiers, at least
in terms of their gene lists. Robust classifiers could not be fitted when earlier time points and/or low-dose data were included,
indicating that experimental design is important for these systems. Our results suggest development of a compound screening
assay based on these toxicity classifiers appears feasible, with classifier operating characteristics\break used to tune a
screen for a specific implementation within preclinical testing paradigms.
Affiliation(s): (4) Toxicology, Archemix Corp., Cambridge, Massachusetts
(5) Drug Safety and Disposition, Millennium
(5) Drug Safety and Disposition, Millennium
Book Title: Essential Concepts in Toxicogenomics
Series: Methods in Molecular Biology | Volume: 460 | Pub. Date: Oct-01-2008 | Page Range: 89-112 | DOI: 10.1007/978-1-60327-048-9_5
Subject: Pharmacology/Toxicology
Key Words: classification rule -
in vitro
-
in vivo
- machine learning - stochastic gradient boosting - toxicity - toxicogenomics
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