The discovery of drugs that can effectively treat disease and alleviate pain is one of the core challenges facing modern medicine. The tools and techniques of machine learning have perhaps the greatest potential to provide a fast and efficient route toward the fabrication of novel and effective drugs. In particular, modern structured kernel methods have been successfully applied to range of problem domains and have been recently adapted for graph structures making them directly applicable to pharmaceutical drug discovery. Specifically graph structures have a natural fit with molecular data, in that a graph consists of a set of nodes that represent atoms that are connected by bonds. In this thesis we use graph kernels that utilize three diff...
International audienceChemoinformatics is a well established research field concerned with the disco...
This work deals with the application of graph kernel methods to the prediction of molecular properti...
International audienceChemoinformatics aim to predict molecule's prop- erties through informational ...
The discovery of drugs that can effectively treat disease and alleviate pain is one of the core chal...
Increased availability of large repositories of chemical compounds is creating new challenges and op...
Motivated by chemical applications, we revisit and extend a family of positive definite kernels for ...
The key motivation for the study of virtual screening is to reduce the time and cost requirement of ...
Molecular similarity measures are important for many cheminformatics applications like ligand-based ...
We explore two avenues where machine learning can help drug discovery: predictive models of in vivo ...
Positive denite kernels between labeled graphs have recently been proposed. They enable the applicat...
Drug discovery is an expensive and labor-intensive process, typically taking an average of 10–15 yea...
We investigate the utility of modern kernel-based machine learning methods for ligand-based virtual ...
We present a unified framework to study graph kernels, special cases of which include the random wa...
In many application areas, graphs are a very natural way of representing structural aspects of a dom...
International audienceChemoinformatics is a well established research eld concerned with the discove...
International audienceChemoinformatics is a well established research field concerned with the disco...
This work deals with the application of graph kernel methods to the prediction of molecular properti...
International audienceChemoinformatics aim to predict molecule's prop- erties through informational ...
The discovery of drugs that can effectively treat disease and alleviate pain is one of the core chal...
Increased availability of large repositories of chemical compounds is creating new challenges and op...
Motivated by chemical applications, we revisit and extend a family of positive definite kernels for ...
The key motivation for the study of virtual screening is to reduce the time and cost requirement of ...
Molecular similarity measures are important for many cheminformatics applications like ligand-based ...
We explore two avenues where machine learning can help drug discovery: predictive models of in vivo ...
Positive denite kernels between labeled graphs have recently been proposed. They enable the applicat...
Drug discovery is an expensive and labor-intensive process, typically taking an average of 10–15 yea...
We investigate the utility of modern kernel-based machine learning methods for ligand-based virtual ...
We present a unified framework to study graph kernels, special cases of which include the random wa...
In many application areas, graphs are a very natural way of representing structural aspects of a dom...
International audienceChemoinformatics is a well established research eld concerned with the discove...
International audienceChemoinformatics is a well established research field concerned with the disco...
This work deals with the application of graph kernel methods to the prediction of molecular properti...
International audienceChemoinformatics aim to predict molecule's prop- erties through informational ...