Abstract Molecular docking computationally predicts the conformation of a small molecule when binding to a receptor. Scoring functions are a vital piece of any molecular docking pipeline as they determine the fitness of sampled poses. Here we describe and evaluate the 1.0 release of the Gnina docking software, which utilizes an ensemble of convolutional neural networks (CNNs) as a scoring function. We also explore an array of parameter values for Gnina 1.0 to optimize docking performance and computational cost. Docking performance, as evaluated by the percentage of targets where the top pose is better than 2Å root mean square deviation (Top1), is compared to AutoDock Vina scoring when utilizing explicitly defined binding pockets or whole pr...
Computational approaches to drug discovery can reduce the time and cost associated with experimental...
There is a tendency in the literature to be critical of scoring functions when docking programs perf...
The identification of promising lead compounds showing pharmacological activities toward a biologica...
While a plethora of different protein–ligand docking protocols have been developed over the past twe...
This project aims at exploring the applicability of the Convolutional Neural Networks (CNN) for solv...
In drug discovery, where a model of the protein structure is known, molecular docking is a well-esta...
Abstract For ligand binding prediction, it is crucial for molecular docking programs to integrate te...
ABSTRACT: We compare established docking programs, AutoDock Vina and Schrödinger’s Glide, to the re...
We compare established docking programs, AutoDock Vina and Schrödinger's Glide, to the recently publ...
Motivation: Bringing a new drug to the market is expensive and time-consuming. To cut the costs and ...
We compare established docking programs, AutoDock Vina and Schrödinger’s Glide, to the recently pub...
Abstract Structure-based drug design depends on the detailed knowledge of the three-dimensional (3D)...
While a plethora of different protein–ligand docking protocols have been developed over the past twe...
The process of screening molecules for desirable properties is a key step in several applications, r...
Molecular docking is a computational tool commonly applied in drug discovery projects and fundament...
Computational approaches to drug discovery can reduce the time and cost associated with experimental...
There is a tendency in the literature to be critical of scoring functions when docking programs perf...
The identification of promising lead compounds showing pharmacological activities toward a biologica...
While a plethora of different protein–ligand docking protocols have been developed over the past twe...
This project aims at exploring the applicability of the Convolutional Neural Networks (CNN) for solv...
In drug discovery, where a model of the protein structure is known, molecular docking is a well-esta...
Abstract For ligand binding prediction, it is crucial for molecular docking programs to integrate te...
ABSTRACT: We compare established docking programs, AutoDock Vina and Schrödinger’s Glide, to the re...
We compare established docking programs, AutoDock Vina and Schrödinger's Glide, to the recently publ...
Motivation: Bringing a new drug to the market is expensive and time-consuming. To cut the costs and ...
We compare established docking programs, AutoDock Vina and Schrödinger’s Glide, to the recently pub...
Abstract Structure-based drug design depends on the detailed knowledge of the three-dimensional (3D)...
While a plethora of different protein–ligand docking protocols have been developed over the past twe...
The process of screening molecules for desirable properties is a key step in several applications, r...
Molecular docking is a computational tool commonly applied in drug discovery projects and fundament...
Computational approaches to drug discovery can reduce the time and cost associated with experimental...
There is a tendency in the literature to be critical of scoring functions when docking programs perf...
The identification of promising lead compounds showing pharmacological activities toward a biologica...