STAGAN: An approach for improve the stability of molecular graph generation based on generative adversarial networks.

Journal: Computers in biology and medicine
Published Date:

Abstract

With the wide application of deep learning in Drug Discovery, deep generative model has shown its advantages in drug molecular generation. Generative adversarial networks can be used to learn the internal structure of molecules, but the training process may be unstable, such as gradient disappearance and model collapse, which may lead to the generation of molecules that do not conform to chemical rules or a single style. In this paper, a novel method called STAGAN was proposed to solve the difficulty of model training, by adding a new gradient penalty term in the discriminator and designing a parallel layer of batch normalization used in generator. As an illustration of method, STAGAN generated higher valid and unique molecules than previous models in training datasets from QM9 and ZINC-250K. This indicates that the proposed method can effectively solve the instability problem in the model training process, and can provide more instructive guidance for the further study of molecular graph generation.

Authors

  • Jinping Zou
    Department of Mathematics, School of Mathematics and Computer Sciences, Nanchang University, Nanchang, 330031, China.
  • Jialin Yu
    Department of Mathematics and Numerical Simulation and High-Performance Computing Laboratory, School of Sciences, Nanchang University, Nanchang 330031, China.
  • Pengwei Hu
    The Xinjiang Technical Institute of Physics and Chemistry, Chinese Academy of Sciences, Ürümqi, China.
  • Long Zhao
    Department of Respiratory Medicine and Intensive Care Unit.Peking University People's Hospital, Beijing 100044, China.
  • Shaoping Shi
    Department of Mathematics and Numerical Simulation and High-Performance Computing Laboratory, School of Sciences, Nanchang University, Nanchang 330031, China. Electronic address: shishaoping@ncu.edu.cn.