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Guiding Deep Molecular Optimization with Genetic Exploration

About

De novo molecular design attempts to search over the chemical space for molecules with the desired property. Recently, deep learning has gained considerable attention as a promising approach to solve the problem. In this paper, we propose genetic expert-guided learning (GEGL), a simple yet novel framework for training a deep neural network (DNN) to generate highly-rewarding molecules. Our main idea is to design a "genetic expert improvement" procedure, which generates high-quality targets for imitation learning of the DNN. Extensive experiments show that GEGL significantly improves over state-of-the-art methods. For example, GEGL manages to solve the penalized octanol-water partition coefficient optimization with a score of 31.40, while the best-known score in the literature is 27.22. Besides, for the GuacaMol benchmark with 20 tasks, our method achieves the highest score for 19 tasks, in comparison with state-of-the-art methods, and newly obtains the perfect score for three tasks.

Sungsoo Ahn, Junsu Kim, Hankook Lee, Jinwoo Shin• 2020

Related benchmarks

TaskDatasetResultRank
Molecular Generationfa7
Top-Hit 5% Docking Score (kcal/mol)-7.47
27
Molecular Generation5ht1b
Docking Score (Top-Hit 5%, kcal/mol)-9.086
27
Molecular Generationjak2
Top-Hit 5% Docking Score (kcal/mol)-8.601
27
Molecular Generationparp1
Top-Hit 5% Docking Score (kcal/mol)-9.329
27
Molecular OptimizationPractical Molecular Optimization (PMO)
Sum AUC top-1014.354
26
Molecular Generationbraf
Top-Hit 5% Docking Score (kcal/mol)-9.073
26
de novo molecular designGuacaMol goal-directed tasks
Osimertinib MPO Score1
23
Molecular Dockingjak2
Mean Docking Score-8.601
18
Molecular Dockingfa7
Mean Docking Score-7.47
18
Molecular Docking5ht1b
Mean Docking Score-9.086
18
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