MOTIVATION: Molecular docking is a commonly used approach for estimating binding conformations and their resultant binding affinities. Machine learning has been successfully deployed to enhance such affinity estimations. Many methods of varying complexity have been developed making use of some or all the spatial and categorical information available in these structures. The evaluation of such methods has mainly been carried out using datasets from PDBbind. Particularly the Comparative Assessment of Scoring Functions (CASF) 2007, 2013, and 2016 datasets with dedicated test sets. This work demonstrates that only a small number of simple descriptors is necessary to efficiently estimate binding affinity for these complexes without the need to k...
The design of an ideal scoring function for protein-protein docking that would also predict the bind...
The design of an ideal scoring function for protein-protein docking that would also predict the bind...
ABSTRACT: Predicting the binding affinities of large sets of diverse molecules against a range of ma...
MOTIVATION: Molecular docking is a commonly used approach for estimating binding conformations and t...
MOTIVATION: Molecular docking is a commonly used approach for estimating binding conformations and t...
Motivation: Accurately predicting the binding affinities of large sets of diverse protein-ligand com...
Predicting protein-ligand binding affinities constitutes a key computational method in the early sta...
Predicting protein-ligand binding affinities constitutes a key computational method in the early sta...
Structure-based drug discovery uses information about the structure of a protein to identify novel l...
Machine learning scoring functions for protein-ligand binding affinity prediction have been found to...
Motivation: In structure-based virtual screening, machine learning based scoring function gained pop...
Motivation: In structure-based virtual screening, machine learning based scoring function gained pop...
Accurate determination of protein-ligand binding affinity is a fundamental problem in biochemistry u...
The design of an ideal scoring function for protein-protein docking that would also predict the bind...
The design of an ideal scoring function for protein-protein docking that would also predict the bind...
The design of an ideal scoring function for protein-protein docking that would also predict the bind...
The design of an ideal scoring function for protein-protein docking that would also predict the bind...
ABSTRACT: Predicting the binding affinities of large sets of diverse molecules against a range of ma...
MOTIVATION: Molecular docking is a commonly used approach for estimating binding conformations and t...
MOTIVATION: Molecular docking is a commonly used approach for estimating binding conformations and t...
Motivation: Accurately predicting the binding affinities of large sets of diverse protein-ligand com...
Predicting protein-ligand binding affinities constitutes a key computational method in the early sta...
Predicting protein-ligand binding affinities constitutes a key computational method in the early sta...
Structure-based drug discovery uses information about the structure of a protein to identify novel l...
Machine learning scoring functions for protein-ligand binding affinity prediction have been found to...
Motivation: In structure-based virtual screening, machine learning based scoring function gained pop...
Motivation: In structure-based virtual screening, machine learning based scoring function gained pop...
Accurate determination of protein-ligand binding affinity is a fundamental problem in biochemistry u...
The design of an ideal scoring function for protein-protein docking that would also predict the bind...
The design of an ideal scoring function for protein-protein docking that would also predict the bind...
The design of an ideal scoring function for protein-protein docking that would also predict the bind...
The design of an ideal scoring function for protein-protein docking that would also predict the bind...
ABSTRACT: Predicting the binding affinities of large sets of diverse molecules against a range of ma...