Many chemoinformatics applications, including high-throughput virtual screening, benefit from being able to rapidly predict the physical, chemical, and biological properties of small molecules to screen large repositories and identify suitable candidates. When training sets are available, machine learning methods provide an effective alternative to ab initio methods for these predictions. Here, we leverage rich molecular representations including 1D SMILES strings, 2D graphs of bonds, and 3D coordinates to derive efficient machine learning kernels to address regression problems. We further expand the library of available spectral kernels for small molecules developed for classification problems to include 2.5D surface and 3D kernels using D...
Quantum mechanical predictive modelling in chemistry and biology is often hindered by the long time ...
Additional resources and features associated with this article are available within the HTML version...
Density and refractive index (nD) are two important properties related to van der Waals energy of a ...
AbstractMotivation: Several kernel-based methods have been recently introduced for the classificatio...
Over the last two decades, data-powered machine learning (ML) tools have profoundly transformed nume...
International audienceSupport vector machines and kernel methods have recently gained considerable a...
We investigate the utility of modern kernel-based machine learning methods for ligand-based virtual ...
We introduce a family of positive definite kernels specifically optimized for the manipulation of 3D...
The high-throughput technologies of combinatorial chemistry and high-throughput screening have cause...
Increased availability of large repositories of chemical compounds is creating new challenges and op...
We explore two avenues where machine learning can help drug discovery: predictive models of in vivo ...
One of the widely discussed problems in the feld of chemoinformatics is the prediction of molecular ...
We introduce property-independent kernels for machine learning models of arbitrarily many molecular ...
Machine-learning methods can be used for virtual screening by analysing the structural characteristi...
Machine learning has been used for estimation of potential energy surfaces to speed up molecular dyn...
Quantum mechanical predictive modelling in chemistry and biology is often hindered by the long time ...
Additional resources and features associated with this article are available within the HTML version...
Density and refractive index (nD) are two important properties related to van der Waals energy of a ...
AbstractMotivation: Several kernel-based methods have been recently introduced for the classificatio...
Over the last two decades, data-powered machine learning (ML) tools have profoundly transformed nume...
International audienceSupport vector machines and kernel methods have recently gained considerable a...
We investigate the utility of modern kernel-based machine learning methods for ligand-based virtual ...
We introduce a family of positive definite kernels specifically optimized for the manipulation of 3D...
The high-throughput technologies of combinatorial chemistry and high-throughput screening have cause...
Increased availability of large repositories of chemical compounds is creating new challenges and op...
We explore two avenues where machine learning can help drug discovery: predictive models of in vivo ...
One of the widely discussed problems in the feld of chemoinformatics is the prediction of molecular ...
We introduce property-independent kernels for machine learning models of arbitrarily many molecular ...
Machine-learning methods can be used for virtual screening by analysing the structural characteristi...
Machine learning has been used for estimation of potential energy surfaces to speed up molecular dyn...
Quantum mechanical predictive modelling in chemistry and biology is often hindered by the long time ...
Additional resources and features associated with this article are available within the HTML version...
Density and refractive index (nD) are two important properties related to van der Waals energy of a ...