IEEE Access (Jan 2024)

Geom-SAC: Geometric Multi-Discrete Soft Actor Critic With Applications in De Novo Drug Design

  • Amgad Abdallah,
  • Nada Adel,
  • A. M. Elkerdawy,
  • Shihori Tanabe,
  • Frederic Andres,
  • Andreas Pester,
  • Hesham H. Ali

DOI
https://doi.org/10.1109/ACCESS.2024.3377289
Journal volume & issue
Vol. 12
pp. 45519 – 45529

Abstract

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Finding new molecules with desirable properties has high computational and overhead costs. Much research has focused on generating candidate molecules in one- and two-dimensional spaces, which has produced some favorable results. However, extending these approaches to molecules in three-dimensional space would be far more useful because the representation of molecules is more realistic, although three-dimensional methods have much higher computational costs. In this work, we developed a geometric deep reinforcement learning agent that generates and optimizes molecules that could interact with a biochemical target. The agent can be used for generating molecules from scratch or for lead optimization when it enhances the properties of a given molecule, whether by enhancing its drug-likeness or increasing its activity toward the target via implicit learning. Thus, the agent works with molecules in three-dimensional space without high computational costs.

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