Deep inverse reinforcement learning for structural evolution of small molecules

Brief Bioinform. 2021 Jul 20;22(4):bbaa364. doi: 10.1093/bib/bbaa364.

Abstract

The size and quality of chemical libraries to the drug discovery pipeline are crucial for developing new drugs or repurposing existing drugs. Existing techniques such as combinatorial organic synthesis and high-throughput screening usually make the process extraordinarily tough and complicated since the search space of synthetically feasible drugs is exorbitantly huge. While reinforcement learning has been mostly exploited in the literature for generating novel compounds, the requirement of designing a reward function that succinctly represents the learning objective could prove daunting in certain complex domains. Generative adversarial network-based methods also mostly discard the discriminator after training and could be hard to train. In this study, we propose a framework for training a compound generator and learn a transferable reward function based on the entropy maximization inverse reinforcement learning (IRL) paradigm. We show from our experiments that the IRL route offers a rational alternative for generating chemical compounds in domains where reward function engineering may be less appealing or impossible while data exhibiting the desired objective is readily available.

Keywords: de novo drug design; inverse reinforcement learning; recurrent neural networks; reinforcement learning.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Deep Learning*
  • Drug Design*
  • Drug Discovery*
  • High-Throughput Screening Assays
  • Small Molecule Libraries*

Substances

  • Small Molecule Libraries