A reinforcement learning approach for protein–ligand binding pose prediction

被引:0
作者
Chenran Wang
Yang Chen
Yuan Zhang
Keqiao Li
Menghan Lin
Feng Pan
Wei Wu
Jinfeng Zhang
机构
[1] Florida State University,Department of Statistics
来源
BMC Bioinformatics | / 23卷
关键词
Protein ligand docking; Reinforcement learning; A3C; Asynchronous advantage actor-critic model; Protein ligand binding mode prediction; Protein ligand binding;
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摘要
Protein ligand docking is an indispensable tool for computational prediction of protein functions and screening drug candidates. Despite significant progress over the past two decades, it is still a challenging problem, characterized by the still limited understanding of the energetics between proteins and ligands, and the vast conformational space that has to be searched to find a satisfactory solution. In this project, we developed a novel reinforcement learning (RL) approach, the asynchronous advantage actor-critic model (A3C), to address the protein ligand docking problem. The overall framework consists of two models. During the search process, the agent takes an action selected by the actor model based on the current location. The critic model then evaluates this action and predict the distance between the current location and true binding site. Experimental results showed that in both single- and multi-atom cases, our model improves binding site prediction substantially compared to a naïve model. For the single-atom ligand, copper ion (Cu2+), the model predicted binding sites have a median root-mean-square-deviation (RMSD) of 2.39 Å to the true binding sites when starting from random starting locations. For the multi-atom ligand, sulfate ion (SO42−), the predicted binding sites have a median RMSD of 3.82 Å to the true binding sites. The ligand-specific models built in this study can be used in solvent mapping studies and the RL framework can be readily scaled up to larger and more diverse sets of ligands.
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  • [1] Zhang W(2020)EDock: blind protein–ligand docking by replica-exchange monte carlo simulation J Cheminform 12 1-17
  • [2] Bell EW(2020)ProDCoNN: protein design using a convolutional neural network Proteins Struct Funct Bioinform 88 819-829
  • [3] Yin M(2014)Challenges, applications, and recent advances of protein-ligand docking in structure-based drug design Molecules 19 10150-10176
  • [4] Zhang Y(2019)Progress in molecular docking Quant Biol 7 83-89
  • [5] Zhang Y(1982)A geometric approach to macromolecule-ligand interactions J Mol Biol 161 269-288
  • [6] Chen Y(2008)MS-DOCK: accurate multiple conformation generator and rigid docking protocol for multi-step virtual ligand screening BMC Bioinform 9 1-12
  • [7] Wang C(2003)ZDOCK: an initial-stage protein-docking algorithm Proteins Struct Funct Bioinform 52 80-87
  • [8] Lo CC(1996)Automated docking of flexible ligands: applications of AutoDock J Mol Recognit 9 1-5
  • [9] Liu X(2010)AutoDock vina: improving the speed and accuracy of docking with a new scoring function, efficient optimization, and multithreading J Comput Chem 31 455-461
  • [10] Wu W(1997)Development and validation of a genetic algorithm for flexible docking J Mol Biol 267 727-748