In this article we report about a successful application of modern machine learning technology, namely Support Vector Machines, to the problem of assessing the 'drug-likeness' of a chemical from a given set of descriptors of the Substance. We were able to drastically improve the recent result by Byvatov et al. (2003) on this task and achieved an error rate of about 7% on unseen compounds using Support Vector Machines. We see a very high potential of such machine learning techniques for a variety of computational chemistry problems that occur in the drug discovery and drug design process
Over the last two decades, data-powered machine learning (ML) tools have profoundly transformed nume...
The high-throughput technologies of combinatorial chemistry and high-throughput screening have cause...
ABSTRACT The characterization of pharmacological properties from their chemical structure has become...
In this article we report about a successful application of modern machine learning technology, name...
Probabilistic support vector machine (SVM) in combination with ECFP_4 (Extended Connectivity Fingerp...
Support vector machines (SVMs) have displayed good predictive accuracy on a wide range of classifica...
Molecular similarity is an impressively broad topic with many implications in several areas of chemi...
Data mining approaches can uncover underlying patterns in chemical and pharmacological property spac...
We investigate the utility of modern kernel-based machine learning methods for ligand-based virtual ...
Triaging unpromising lead molecules early in the drug discovery process is essential for acceleratin...
In drug discovery, domain experts from different fields such as medicinal chemistry, biology, and co...
International audienceSupport vector machines and kernel methods have recently gained considerable a...
In conjunction with the advance in computer technology, virtual screening of small molecules has bee...
Poster presentation In pharmaceutical research and drug development, machine learning methods play a...
Abstract—Compounds from discovery are often poor candidates for lead optimization or preclinical tes...
Over the last two decades, data-powered machine learning (ML) tools have profoundly transformed nume...
The high-throughput technologies of combinatorial chemistry and high-throughput screening have cause...
ABSTRACT The characterization of pharmacological properties from their chemical structure has become...
In this article we report about a successful application of modern machine learning technology, name...
Probabilistic support vector machine (SVM) in combination with ECFP_4 (Extended Connectivity Fingerp...
Support vector machines (SVMs) have displayed good predictive accuracy on a wide range of classifica...
Molecular similarity is an impressively broad topic with many implications in several areas of chemi...
Data mining approaches can uncover underlying patterns in chemical and pharmacological property spac...
We investigate the utility of modern kernel-based machine learning methods for ligand-based virtual ...
Triaging unpromising lead molecules early in the drug discovery process is essential for acceleratin...
In drug discovery, domain experts from different fields such as medicinal chemistry, biology, and co...
International audienceSupport vector machines and kernel methods have recently gained considerable a...
In conjunction with the advance in computer technology, virtual screening of small molecules has bee...
Poster presentation In pharmaceutical research and drug development, machine learning methods play a...
Abstract—Compounds from discovery are often poor candidates for lead optimization or preclinical tes...
Over the last two decades, data-powered machine learning (ML) tools have profoundly transformed nume...
The high-throughput technologies of combinatorial chemistry and high-throughput screening have cause...
ABSTRACT The characterization of pharmacological properties from their chemical structure has become...