Protein–ligand docking is a process of searching for the optimal binding conformation between the receptor and the ligand. Automated docking plays an important role in drug design, and an efficient search algorithm is needed to tackle the docking problem. To tackle the protein–ligand docking problem more efficiently, An ABC_DE_based hybrid algorithm (ADHDOCK), integrating artificial bee colony (ABC) algorithm and differential evolution (DE) algorithm, is proposed in the article. ADHDOCK applies an adaptive population partition (APP) mechanism to reasonably allocate the computational resources of the population in each iteration process, which helps the novel method make better use of the advantages of ABC and DE. The experiment ...
leipzig.de The identification of protein binding sites and the prediction of protein-ligand complexe...
Ligand docking is the computational prediction of the bound conformation of a small molecule in a co...
We analyzed the performance of a real coded "steady-state" genetic algorithm (SSGA) using a grid-bas...
Protein–ligand docking is a process of searching for the optimal binding conformation between ...
Protein-ligand docking is an essential part of computer-aided drug design, and it identifies the bin...
ABSTRACT: A novel and robust automated docking method that predicts the bound conformations of flexi...
AutoDock is a widely used automated protein docking program in structure-based drug-design. Differen...
The prediction of the complex structure of a small ligand with a protein, the so-called protein-liga...
Three heuristic algorithms: simulated annealing, genetic algorithm, and Tabu search were compared to...
Protein–ligand docking is a molecular modeling technique that is used to predict the conformat...
The main objective of the molecular docking problem is to find a conformation between a small molecu...
Abstract: Genetic Algorithm is an indispensible tool in molecular docking for studying binding inter...
Abstract Protein–ligand docking plays an important role in computer-aided pharmaceutical development...
A genetic algorithm (GA) combined with a tabu search (TA) has been applied as a minimization method ...
Protein-ligand interactions are a necessary prerequisite for signal transduction, immunoreaction, an...
leipzig.de The identification of protein binding sites and the prediction of protein-ligand complexe...
Ligand docking is the computational prediction of the bound conformation of a small molecule in a co...
We analyzed the performance of a real coded "steady-state" genetic algorithm (SSGA) using a grid-bas...
Protein–ligand docking is a process of searching for the optimal binding conformation between ...
Protein-ligand docking is an essential part of computer-aided drug design, and it identifies the bin...
ABSTRACT: A novel and robust automated docking method that predicts the bound conformations of flexi...
AutoDock is a widely used automated protein docking program in structure-based drug-design. Differen...
The prediction of the complex structure of a small ligand with a protein, the so-called protein-liga...
Three heuristic algorithms: simulated annealing, genetic algorithm, and Tabu search were compared to...
Protein–ligand docking is a molecular modeling technique that is used to predict the conformat...
The main objective of the molecular docking problem is to find a conformation between a small molecu...
Abstract: Genetic Algorithm is an indispensible tool in molecular docking for studying binding inter...
Abstract Protein–ligand docking plays an important role in computer-aided pharmaceutical development...
A genetic algorithm (GA) combined with a tabu search (TA) has been applied as a minimization method ...
Protein-ligand interactions are a necessary prerequisite for signal transduction, immunoreaction, an...
leipzig.de The identification of protein binding sites and the prediction of protein-ligand complexe...
Ligand docking is the computational prediction of the bound conformation of a small molecule in a co...
We analyzed the performance of a real coded "steady-state" genetic algorithm (SSGA) using a grid-bas...