Evaluation of a Published in Silico Model and Construction of a Novel Bayesian Model for Predicting Phospholipidosis Inducing Potential

Journal of Chemical Information and Modeling
2007.0

Abstract

The identification of phospholipidosis (PPL) during preclinical testing in animals is a recognized problem in the pharmaceutical industry. Depending on the intended indication and dosing regimen, PPL can delay or stop development of a compound in the drug discovery process. Therefore, for programs and projects where a PPL finding would have adverse impact on the success of the project, it would be desirable to be able to rapidly identify and screen out those compounds with the potential to induce PPL as early as possible. Currently, electron microscopy is the gold standard method for identifying phospholipidosis, but it is low-throughput and resource-demanding. Therefore, a low-cost, high-throughput screening strategy is required to overcome these limitations and be applicable in the drug discovery cycle. A recent publication by Ploemen et al. (Exp. Toxicol. Pathol. 2004, 55, 347-55) describes a method using the computed physicochemical properties pKa and ClogP as part of a simple calculation to determine a compound's potential to induce PPL. We have evaluated this method using a set of 201 compounds, both public and proprietary, with known in vivo PPL-inducing ability and have found the overall concordance to be 75%. We have proposed simple modifications to the model rules, which improve the model's concordance to 80%. Finally, we describe the development of a Bayesian model using the same compound set and found its overall concordance to be 83%.

Knowledge Graph

Similar Paper

Evaluation of a Published in Silico Model and Construction of a Novel Bayesian Model for Predicting Phospholipidosis Inducing Potential
Journal of Chemical Information and Modeling 2007.0
In Silico Assay for Assessing Phospholipidosis Potential of Small Druglike Molecules: Training, Validation, and Refinement Using Several Data Sets
Journal of Medicinal Chemistry 2012.0
Development of a Phospholipidosis Database and Predictive Quantitative Structure-Activity Relationship (QSAR) Models
Toxicology Mechanisms and Methods 2008.0
Predicting Phospholipidosis Using Machine Learning
Molecular Pharmaceutics 2010.0
A Predictive Ligand-Based Bayesian Model for Human Drug-Induced Liver Injury
Drug Metabolism and Disposition 2010.0
Pharmacophore modeling and virtual screening for designing potential PLK1 inhibitors
Bioorganic & Medicinal Chemistry Letters 2008.0
In Silico Prediction of Volume of Distribution in Human Using Linear and Nonlinear Models on a 669 Compound Data Set
Journal of Medicinal Chemistry 2009.0
De Novo Prediction of P-Glycoprotein-Mediated Efflux Liability for Druglike Compounds
ACS Medicinal Chemistry Letters 2013.0
Mitigating the Inhibition of Human Bile Salt Export Pump by Drugs: Opportunities Provided by Physicochemical Property Modulation, In Silico Modeling, and Structural Modification
Drug Metabolism and Disposition 2012.0
Development of an In Silico Prediction Model for P-glycoprotein Efflux Potential in Brain Capillary Endothelial Cells toward the Prediction of Brain Penetration
Journal of Medicinal Chemistry 2021.0