A predictive ligand-based Bayesian model for human drug-induced liver injury.

Sean Ekins, Antony J Williams, Jinghai J Xu

Collaborations in Chemistry, 601 Runnymede Ave., Jenkintown, PA 19046, USA.

Journal Article: Drug metabolism and disposition: the biological fate of chemicals (impact factor: 3.74). 12/2010; 38(12):2302-8. DOI: 10.1124/dmd.110.035113

Abstract

Drug-induced liver injury (DILI) is one of the most important reasons for drug development failure at both preapproval and postapproval stages. There has been increased interest in developing predictive in vivo, in vitro, and in silico models to identify compounds that cause idiosyncratic hepatotoxicity. In the current study, we applied machine learning, a Bayesian modeling method with extended connectivity fingerprints and other interpretable descriptors. The model that was developed and internally validated (using a training set of 295 compounds) was then applied to a large test set relative to the training set (237 compounds) for external validation. The resulting concordance of 60%, sensitivity of 56%, and specificity of 67% were comparable to results for internal validation. The Bayesian model with extended connectivity functional class fingerprints of maximum diameter 6 (ECFC_6) and interpretable descriptors suggested several substructures that are chemically reactive and may also be important for DILI-causing compounds, e.g., ketones, diols, and α-methyl styrene type structures. Using Smiles Arbitrary Target Specification (SMARTS) filters published by several pharmaceutical companies, we evaluated whether such reactive substructures could be readily detected by any of the published filters. It was apparent that the most stringent filters used in this study, such as the Abbott alerts, which captures thiol traps and other compounds, may be of use in identifying DILI-causing compounds (sensitivity 67%). A significant outcome of the present study is that we provide predictions for many compounds that cause DILI by using the knowledge we have available from previous studies. These computational models may represent cost-effective selection criteria before in vitro or in vivo experimental studies.

Source: PubMed

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Keywords

237 compounds
 
295 compounds
 
Abbott alerts
 
Bayesian model
 
Bayesian modeling method
 
captures thiol traps
 
computational models
 
cost-effective selection criteria
 
DILI-causing compounds
 
drug development failure
 
Drug-induced liver injury
 
maximum diameter 6
 
published filters
 
reactive substructures
 
sensitivity 67%
 
significant outcome
 
silico models
 
stringent filters
 
vivo experimental studies
 
α-methyl styrene type structures