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SHARP: Generating Synthesizable Molecules via Fragment-Based Hierarchical Action-Space Reinforcement Learning for

Jeonghyeon Kim1, Seongok Ryu2, Woohyeong Lee3

  • 1Department of Chemistry, Seoul National University, Seoul 08826, Republic of Korea.

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|October 24, 2025
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Synthesizable Hierarchical Action-space Reinforcement learning for Pareto optimization (SHARP) generates drug molecules by optimizing binding affinity and synthesizability. This AI approach overcomes limitations of existing models, enabling efficient and rational molecular design for drug discovery.

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Area of Science:

  • Medicinal Chemistry
  • Computational Chemistry
  • Artificial Intelligence in Drug Discovery

Background:

  • Designing molecules with multiple properties like high binding affinity and synthesizability is a complex optimization challenge.
  • Current deep learning models often fail to generate valid, synthetically feasible molecules due to limitations in optimization feedback.

Purpose of the Study:

  • To introduce a novel molecular generator, SHARP, that addresses limitations in AI-driven drug discovery.
  • To improve the generation of drug-like molecules with high affinity and synthetic accessibility.

Main Methods:

  • Developed Synthesizable Hierarchical Action-space Reinforcement learning for Pareto optimization (SHARP), a fragment-based hierarchical reinforcement learning model.
  • Integrated a Synthesizability Estimation Model (SEM) for action masking to ensure synthetic accessibility.
  • Employed a composite reward function including docking scores, pharmacophore matching, and solvent accessibility for RL policy training.

Main Results:

  • SHARP consistently outperformed existing methods in generating high-affinity molecules with good synthesizability across four lead optimization tasks.
  • The model successfully addressed issues of invalid structures, local optima, and synthetic infeasibility.
  • Demonstrated effectiveness in fragment growing, linker design, scaffold hopping, and side chain decoration.

Conclusions:

  • Reinforcement learning with a chemically intuitive action space is a powerful approach for AI-driven drug discovery.
  • SHARP offers a robust framework for rational molecular design in structure-based applications.
  • The method enhances the generation of functionally relevant and experimentally tractable drug candidates.