Abstract
The computational assessment of drug metabolism has gained considerable interest in pharmaceutical research. Amongst others, machine learning techniques have been employed to model relationships between the chemical structure of a compound and its metabolic fate. Examples for these techniques, which were originally developed in fields far from drug discovery, are artificial neural networks or support vector machines. This paper summarizes the application of various machine learning techniques to predict the interaction between organic molecules and metabolic enzymes. More complex endpoints such as metabolic stability or in vivo clearance will also be addressed. It is shown that the prediction of metabolic endpoints with machine learning techniques has made considerable progress over the past few years. Depending on the procedure used, either classification or quantitative prediction is possible for even large and diverse compound sets. Together with the expanding experimental data basis, these in silico methods have become valuable tools in the drug discovery and development process.
Keywords: In silico ADMET, QSAR, classification, drug metabolism, cytochrome P450, machine learning, non-linear models
Current Topics in Medicinal Chemistry
Title: Machine Learning Techniques for In Silico Modeling of Drug Metabolism
Volume: 6 Issue: 15
Author(s): Thomas Fox and Jan M. Kriegl
Affiliation:
Keywords: In silico ADMET, QSAR, classification, drug metabolism, cytochrome P450, machine learning, non-linear models
Abstract: The computational assessment of drug metabolism has gained considerable interest in pharmaceutical research. Amongst others, machine learning techniques have been employed to model relationships between the chemical structure of a compound and its metabolic fate. Examples for these techniques, which were originally developed in fields far from drug discovery, are artificial neural networks or support vector machines. This paper summarizes the application of various machine learning techniques to predict the interaction between organic molecules and metabolic enzymes. More complex endpoints such as metabolic stability or in vivo clearance will also be addressed. It is shown that the prediction of metabolic endpoints with machine learning techniques has made considerable progress over the past few years. Depending on the procedure used, either classification or quantitative prediction is possible for even large and diverse compound sets. Together with the expanding experimental data basis, these in silico methods have become valuable tools in the drug discovery and development process.
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Cite this article as:
Fox Thomas and Kriegl M. Jan, Machine Learning Techniques for In Silico Modeling of Drug Metabolism, Current Topics in Medicinal Chemistry 2006; 6 (15) . https://dx.doi.org/10.2174/156802606778108915
DOI https://dx.doi.org/10.2174/156802606778108915 |
Print ISSN 1568-0266 |
Publisher Name Bentham Science Publisher |
Online ISSN 1873-4294 |
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