Predicting Protein-Ligand Docking Structure with Graph Neural Network.

Journal: Journal of chemical information and modeling
Published Date:

Abstract

Modern day drug discovery is extremely expensive and time consuming. Although computational approaches help accelerate and decrease the cost of drug discovery, existing computational software packages for docking-based drug discovery suffer from both low accuracy and high latency. A few recent machine learning-based approaches have been proposed for virtual screening by improving the ability to evaluate protein-ligand binding affinity, but such methods rely heavily on conventional docking software to sample docking poses, which results in excessive execution latencies. Here, we propose and evaluate a novel graph neural network (GNN)-based framework, MedusaGraph, which includes both pose-prediction (sampling) and pose-selection (scoring) models. Unlike the previous machine learning-centric studies, MedusaGraph generates the docking poses directly and achieves from 10 to 100 times speedup compared to state-of-the-art approaches, while having a slightly better docking accuracy.

Authors

  • Huaipan Jiang
    Department of Computer Science and Engineering, Pennsylvania State University, State College 16802, United States.
  • Jian Wang
    Veterinary Diagnostic Center, Shanghai Animal Disease Control Center, Shanghai, China.
  • Weilin Cong
    Department of Computer Science and Engineering, Pennsylvania State University, State College, Pennsylvania 16802, United States.
  • Yihe Huang
    Department of Computer Science and Engineering, Pennsylvania State University, State College, Pennsylvania 16802, United States.
  • Morteza Ramezani
    Department of Computer Science and Engineering, Pennsylvania State University, State College, Pennsylvania 16802, United States.
  • Anup Sarma
    Department of Computer Science and Engineering, Pennsylvania State University, State College 16802, United States.
  • Nikolay V Dokholyan
    Department of Pharmacology, Penn State College of Medicine, Hershey, PA 17033, USA.
  • Mehrdad Mahdavi
    Department of Computer Science and Engineering, Pennsylvania State University, State College 16802, United States.
  • Mahmut T Kandemir
    Department of Computer Science and Engineering, Pennsylvania State University, State College 16802, United States.