Machine learning scoring functions for protein-ligand binding affinity prediction have been found to consistently outperform classical scoring functions. Structure-based scoring functions for universal affinity prediction typically use features describing interactions derived from the protein-ligand complex, with limited information about the chemical or topological properties of the ligand itself. We demonstrate that the performance of machine learning scoring functions are consistently improved by the inclusion of diverse ligand-based features. For example, a Random Forest combining the features of RF-Score v3 with RDKit molecular descriptors achieved Pearson correlation coefficients of up to 0.831, 0.785, and 0.821 on the PDBbind 2007, 2...
International audienceBackground: State-of-the-art protein-ligand docking methods are generally limi...
International audienceBackground: State-of-the-art protein-ligand docking methods are generally limi...
It has recently been claimed that the outstanding performance of machine-learning scoring functions ...
Motivation: Accurately predicting the binding affinities of large sets of diverse protein-ligand com...
Structure-based drug discovery uses information about the structure of a protein to identify novel l...
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...
International audienceDocking scoring functions can be used to predict the strength of protein-ligan...
International audienceDocking scoring functions can be used to predict the strength of protein-ligan...
Motivation: In structure-based virtual screening, machine learning based scoring function gained pop...
International audienceDocking scoring functions can be used to predict the strength of protein-ligan...
International audienceBackground: State-of-the-art protein-ligand docking methods are generally limi...
International audienceBackground: State-of-the-art protein-ligand docking methods are generally limi...
International audienceBackground: State-of-the-art protein-ligand docking methods are generally limi...
Motivation: In structure-based virtual screening, machine learning based scoring function gained pop...
International audienceBackground: State-of-the-art protein-ligand docking methods are generally limi...
International audienceBackground: State-of-the-art protein-ligand docking methods are generally limi...
It has recently been claimed that the outstanding performance of machine-learning scoring functions ...
Motivation: Accurately predicting the binding affinities of large sets of diverse protein-ligand com...
Structure-based drug discovery uses information about the structure of a protein to identify novel l...
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...
International audienceDocking scoring functions can be used to predict the strength of protein-ligan...
International audienceDocking scoring functions can be used to predict the strength of protein-ligan...
Motivation: In structure-based virtual screening, machine learning based scoring function gained pop...
International audienceDocking scoring functions can be used to predict the strength of protein-ligan...
International audienceBackground: State-of-the-art protein-ligand docking methods are generally limi...
International audienceBackground: State-of-the-art protein-ligand docking methods are generally limi...
International audienceBackground: State-of-the-art protein-ligand docking methods are generally limi...
Motivation: In structure-based virtual screening, machine learning based scoring function gained pop...
International audienceBackground: State-of-the-art protein-ligand docking methods are generally limi...
International audienceBackground: State-of-the-art protein-ligand docking methods are generally limi...
It has recently been claimed that the outstanding performance of machine-learning scoring functions ...