MNCE-RL Reinforced Molecular Optimization with Neighborhood-Controlled Grammars

Introduction

A major challenge in the pharmaceutical industry is to design novel molecules with specific desired properties, especially when the property evaluation is costly. Here, we propose MNCE-RL, a graph convolutional policy network for molecular optimization with molecular neighborhood-controlled embedding grammars through reinforcement learning. We extend the original neighborhood-controlled embedding grammars to make them applicable to molecular graph generation and design an efficient algorithm to infer grammatical production rules from given molecules. The use of grammars guarantees the validity of the generated molecular structures. By transforming molecular graphs to parse trees with the inferred grammars, the molecular structure generation task is modeled as a Markov decision process where a policy gradient strategy is utilized. In a series of experiments, we demonstrate that our approach achieves state-of-the-art performance in a diverse range of molecular optimization tasks and exhibits significant superiority in optimizing molecular properties with a limited number of property evaluations.

Publications

  1. Reinforced Molecular Optimization with Neighborhood-Controlled Grammars.
    Chencheng Xu, Qiao Liu, Minlie Huang, Tao Jiang, - Advances in Neural Information Processing Systems
    Cited by 1 (Google Schoolar as of May 24, 2021)

Credits

  1. Chencheng Xu xucc18@mails.tsinghua.edu.cn
    Investigator

    Department of Computer Science and Technology, Tsinghua University, China

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Summary
AccessionBT007103
Tool TypeApplication
Category
PlatformsLinux/Unix
TechnologiesPython3
User InterfaceTerminal Command Line
Download Count0
Country/RegionChina
Submitted ByChencheng Xu
Fundings

2018YFC0910400