International audienceClassical scoring functions have reached a plateau in their performance in virtual screening and binding affinity prediction. Recently, machine-learning scoring functions trained on protein-ligand complexes have shown great promise in small tailored studies. They have also raised controversy, specifically concerning model overfitting and applicability to novel targets. Here we provide a new ready-to-use scoring function (RF-Score-VS) trained on 15 426 active and 893 897 inactive molecules docked to a set of 102 targets. We use the full DUD-E data sets along with three docking tools, five classical and three machine-learning scoring functions for model building and performance assessment. Our results show RF-Score-VS ca...
In this study, we aimed to develop a new ligand-based virtual screening approach using an effective ...
Virtual screening is an essential part of the modern drug design pipeline, which significantly accel...
Virtual screening is becoming an important tool for drug discovery. However, the application of virt...
International audienceClassical scoring functions have reached a plateau in their performance in vir...
International audienceDocking tools to predict whether and how a small molecule binds to a target ca...
Leveraging machine learning has been shown to improve the accuracy of structure-based virtual screen...
Machine learning scoring functions for protein-ligand binding affinity prediction have been found to...
Motivation: Accurately predicting the binding affinities of large sets of diverse protein-ligand com...
It has recently been claimed that the outstanding performance of machine-learning scoring functions ...
Computer-aided drug discovery has truly revolutionised the way we think about and how we develop new...
Motivation: In structure-based virtual screening, machine learning based scoring function gained pop...
Structure-based virtual screening (VS) is a widely used approach that employs the knowledge of the t...
Abstract — Virtual Screening (VS) methods can considerably aid clinical research, predicting how lig...
In this study, we aimed to develop a new ligand-based virtual screening approach using an effective ...
Virtual screening is an essential part of the modern drug design pipeline, which significantly accel...
Virtual screening is becoming an important tool for drug discovery. However, the application of virt...
International audienceClassical scoring functions have reached a plateau in their performance in vir...
International audienceDocking tools to predict whether and how a small molecule binds to a target ca...
Leveraging machine learning has been shown to improve the accuracy of structure-based virtual screen...
Machine learning scoring functions for protein-ligand binding affinity prediction have been found to...
Motivation: Accurately predicting the binding affinities of large sets of diverse protein-ligand com...
It has recently been claimed that the outstanding performance of machine-learning scoring functions ...
Computer-aided drug discovery has truly revolutionised the way we think about and how we develop new...
Motivation: In structure-based virtual screening, machine learning based scoring function gained pop...
Structure-based virtual screening (VS) is a widely used approach that employs the knowledge of the t...
Abstract — Virtual Screening (VS) methods can considerably aid clinical research, predicting how lig...
In this study, we aimed to develop a new ligand-based virtual screening approach using an effective ...
Virtual screening is an essential part of the modern drug design pipeline, which significantly accel...
Virtual screening is becoming an important tool for drug discovery. However, the application of virt...