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1.
J Chem Inf Model ; 57(9): 2294-2308, 2017 09 25.
Article in English | MEDLINE | ID: mdl-28776988

ABSTRACT

Cytochrome P450 aromatase (CYP19A1) plays a key role in the development of estrogen dependent breast cancer, and aromatase inhibitors have been at the front line of treatment for the past three decades. The development of potent, selective and safer inhibitors is ongoing with in silico screening methods playing a more prominent role in the search for promising lead compounds in bioactivity-relevant chemical space. Here we present a set of comprehensive binding affinity prediction models for CYP19A1 using our automated Linear Interaction Energy (LIE) based workflow on a set of 132 putative and structurally diverse aromatase inhibitors obtained from a typical industrial screening study. We extended the workflow with machine learning methods to automatically cluster training and test compounds in order to maximize the number of explained compounds in one or more predictive LIE models. The method uses protein-ligand interaction profiles obtained from Molecular Dynamics (MD) trajectories to help model search and define the applicability domain of the resolved models. Our method was successful in accounting for 86% of the data set in 3 robust models that show high correlation between calculated and observed values for ligand-binding free energies (RMSE < 2.5 kJ mol-1), with good cross-validation statistics.


Subject(s)
Aromatase Inhibitors/metabolism , Aromatase/metabolism , Computational Biology/methods , Aromatase/chemistry , Aromatase Inhibitors/pharmacology , Automation , Ligands , Linear Models , Molecular Dynamics Simulation , Protein Binding , Protein Conformation , Thermodynamics
2.
Food Chem Toxicol ; 106(Pt B): 595-599, 2017 Aug.
Article in English | MEDLINE | ID: mdl-27979779

ABSTRACT

The in silico prediction of genotoxicity has made considerable progress during the last years. The main driver for the pharmaceutical industry is the ICH M7 guideline about the assessment of DNA reactive impurities. An important component of this guideline is the use of in silico models as an alternative approach to experimental testing. The in silico prediction of genotoxicity provides an established and accepted method that defines the first step in the assessment of DNA reactive impurities. This was made possible by the growing amount of reliable Ames screening data, the attempts to understand the activity pathways and the subsequent development of computer-based prediction systems. This paper gives an overview of how the in silico prediction of genotoxicity is performed under the ICH M7 guideline.


Subject(s)
Mutagenicity Tests/methods , Mutagens/toxicity , Animals , Computer Simulation , DNA/analysis , DNA/genetics , DNA Contamination , DNA Damage/drug effects , Humans , Mutagenicity Tests/standards
3.
Int J Mol Sci ; 13(3): 3820-3846, 2012.
Article in English | MEDLINE | ID: mdl-22489185

ABSTRACT

There is a widespread awareness that the wealth of preclinical toxicity data that the pharmaceutical industry has generated in recent decades is not exploited as efficiently as it could be. Enhanced data availability for compound comparison ("read-across"), or for data mining to build predictive tools, should lead to a more efficient drug development process and contribute to the reduction of animal use (3Rs principle). In order to achieve these goals, a consortium approach, grouping numbers of relevant partners, is required. The eTOX ("electronic toxicity") consortium represents such a project and is a public-private partnership within the framework of the European Innovative Medicines Initiative (IMI). The project aims at the development of in silico prediction systems for organ and in vivo toxicity. The backbone of the project will be a database consisting of preclinical toxicity data for drug compounds or candidates extracted from previously unpublished, legacy reports from thirteen European and European operation-based pharmaceutical companies. The database will be enhanced by incorporation of publically available, high quality toxicology data. Seven academic institutes and five small-to-medium size enterprises (SMEs) contribute with their expertise in data gathering, database curation, data mining, chemoinformatics and predictive systems development. The outcome of the project will be a predictive system contributing to early potential hazard identification and risk assessment during the drug development process. The concept and strategy of the eTOX project is described here, together with current achievements and future deliverables.


Subject(s)
Databases, Factual , Drug-Related Side Effects and Adverse Reactions , Expert Systems , Knowledge Bases , Animals , Data Mining , Drug Evaluation, Preclinical , Humans , Information Dissemination , Risk Assessment
4.
PLoS One ; 6(2): e16811, 2011 Feb 04.
Article in English | MEDLINE | ID: mdl-21326864

ABSTRACT

Understanding the molecular mechanism of signalling in the important super-family of G-protein-coupled receptors (GPCRs) is causally related to questions of how and where these receptors can be activated or inhibited. In this context, it is of great interest to unravel the common molecular features of GPCRs as well as those related to an active or inactive state or to subtype specific G-protein coupling. In our underlying chemogenomics study, we analyse for the first time the statistical link between the properties of G-protein-coupled receptors and GPCR ligands. The technique of mutual information (MI) is able to reveal statistical inter-dependence between variations in amino acid residues on the one hand and variations in ligand molecular descriptors on the other. Although this MI analysis uses novel information that differs from the results of known site-directed mutagenesis studies or published GPCR crystal structures, the method is capable of identifying the well-known common ligand binding region of GPCRs between the upper part of the seven transmembrane helices and the second extracellular loop. The analysis shows amino acid positions that are sensitive to either stimulating (agonistic) or inhibitory (antagonistic) ligand effects or both. It appears that amino acid positions for antagonistic and agonistic effects are both concentrated around the extracellular region, but selective agonistic effects are cumulated between transmembrane helices (TMHs) 2, 3, and ECL2, while selective residues for antagonistic effects are located at the top of helices 5 and 6. Above all, the MI analysis provides detailed indications about amino acids located in the transmembrane region of these receptors that determine G-protein signalling pathway preferences.


Subject(s)
Ligands , Receptors, G-Protein-Coupled/agonists , Receptors, G-Protein-Coupled/antagonists & inhibitors , Receptors, G-Protein-Coupled/genetics , Signal Transduction/genetics , Algorithms , Amino Acid Sequence/genetics , Amino Acid Sequence/physiology , Crystallography, X-Ray , Humans , Models, Biological , Models, Molecular , Molecular Sequence Data , Pharmacogenetics/methods , Protein Binding/drug effects , Protein Binding/genetics , Protein Binding/physiology , Protein Interaction Domains and Motifs/genetics , Protein Interaction Domains and Motifs/physiology , Protein Interaction Mapping , Receptors, G-Protein-Coupled/chemistry , Sequence Analysis, Protein , Signal Transduction/drug effects , Signal Transduction/physiology
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