BACKGROUND: The prediction of sites and products of metabolism in xenobiotic compounds is key to the development of new chemical entities, where screening potential metabolites for toxicity or unwanted side-effects is of crucial importance. In this work 2D topological fingerprints are used to encode atomic sites and three probabilistic machine learning methods are applied: Parzen-Rosenblatt Window (PRW), Naive Bayesian (NB) and a novel approach called RASCAL (Random Attribute Subsampling Classification ALgorithm). These are implemented by randomly subsampling descriptor space to alleviate the problem often suffered by data mining methods of having to exactly match fingerprints, and in the case of PRW by measuring a distance between feature ...
In this work we present the third generation of FAst MEtabolizer (FAME 3), a collection of extra tre...
A new ligand-based method for the prediction of sites of metabolism (SOMs) for xenobiotics has been ...
In this review, we present important, recent developments in the computational prediction of cytochr...
Background The prediction of sites and products of metabolism in xenobiotic compounds is key to the...
MetaPrint2D, a new software tool implementing a data-mining approach for predicting sites of xenobio...
P450 3A4, the most important human CYP enzyme, is responsible for the metabolism of more than 50%-60...
MetaPrint2D, a new software tool implementing a data-mining approach for predicting sites of xenobio...
We report on the further development of FAst MEtabolizer (FAME; <i>J. Chem. Inf. Model.</i> <b>2013<...
Motivation: Cytochrome P450s are a family of enzymes responsible for the metabolism of approximately...
Motivation: Cytochrome P450s are a family of enzymes responsible for the metabolism of approxi-matel...
Metabolism of xenobiotics (Greek xenos: exogenous substances) plays an essential role in the predict...
The investigation of metabolically liable sites of xenobiotics mediated by UDP-glucuronosyltransfera...
Computational prediction of xenobiotic metabolism can provide valuable information to guide the deve...
Abstract—Quantitative structure activity relationship (QSAR) modeling using high-throughput screenin...
In this work we present the third generation of FAst MEtabolizer (FAME 3), a collection of extra tre...
In this work we present the third generation of FAst MEtabolizer (FAME 3), a collection of extra tre...
A new ligand-based method for the prediction of sites of metabolism (SOMs) for xenobiotics has been ...
In this review, we present important, recent developments in the computational prediction of cytochr...
Background The prediction of sites and products of metabolism in xenobiotic compounds is key to the...
MetaPrint2D, a new software tool implementing a data-mining approach for predicting sites of xenobio...
P450 3A4, the most important human CYP enzyme, is responsible for the metabolism of more than 50%-60...
MetaPrint2D, a new software tool implementing a data-mining approach for predicting sites of xenobio...
We report on the further development of FAst MEtabolizer (FAME; <i>J. Chem. Inf. Model.</i> <b>2013<...
Motivation: Cytochrome P450s are a family of enzymes responsible for the metabolism of approximately...
Motivation: Cytochrome P450s are a family of enzymes responsible for the metabolism of approxi-matel...
Metabolism of xenobiotics (Greek xenos: exogenous substances) plays an essential role in the predict...
The investigation of metabolically liable sites of xenobiotics mediated by UDP-glucuronosyltransfera...
Computational prediction of xenobiotic metabolism can provide valuable information to guide the deve...
Abstract—Quantitative structure activity relationship (QSAR) modeling using high-throughput screenin...
In this work we present the third generation of FAst MEtabolizer (FAME 3), a collection of extra tre...
In this work we present the third generation of FAst MEtabolizer (FAME 3), a collection of extra tre...
A new ligand-based method for the prediction of sites of metabolism (SOMs) for xenobiotics has been ...
In this review, we present important, recent developments in the computational prediction of cytochr...