Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

Quantum-inspired Reinforcement Learning for Synthesizable Drug Design

About

Synthesizable molecular design (also known as synthesizable molecular optimization) is a fundamental problem in drug discovery, and involves designing novel molecular structures to improve their properties according to drug-relevant oracle functions (i.e., objective) while ensuring synthetic feasibility. However, existing methods are mostly based on random search. To address this issue, in this paper, we introduce a novel approach using the reinforcement learning method with quantum-inspired simulated annealing policy neural network to navigate the vast discrete space of chemical structures intelligently. Specifically, we employ a deterministic REINFORCE algorithm using policy neural networks to output transitional probability to guide state transitions and local search using genetic algorithm to refine solutions to a local optimum within each iteration. Our methods are evaluated with the Practical Molecular Optimization (PMO) benchmark framework with a 10K query budget. We further showcase the competitive performance of our method by comparing it against the state-of-the-art genetic algorithms-based method.

Dannong Wang, Jintai Chen, Yingzhou Lu, Minjie Shen, Lulu Chen, Zhiding Liang, Tianfan Fu, Xiao-Yang Liu• 2024

Related benchmarks

TaskDatasetResultRank
Goal-directed molecular optimizationPMO
Amlodipine MPO2.885
24
Molecular OptimizationPMO
DRD2 Diversity Score0.744
2
Molecular OptimizationPMO (Practical Molecular Optimization) v1 (test)
DRD2 Score79.5
2
Molecular OptimizationPMO (Practical Molecular Optimization) v1 (test)
DRD2 Score98.8
2
Molecular OptimizationPMO (Practical Molecular Optimization)
Albuterol Similarity0.438
2
Showing 5 of 5 rows

Other info

Follow for update