Generative and reinforcement learning approaches for the automated de novo design of bioactive compounds

被引:0
|
作者
Maria Korshunova
Niles Huang
Stephen Capuzzi
Dmytro S. Radchenko
Olena Savych
Yuriy S. Moroz
Carrow I. Wells
Timothy M. Willson
Alexander Tropsha
Olexandr Isayev
机构
[1] Carnegie Mellon University,Department of Chemistry, Mellon College of Science
[2] Carnegie Mellon University,Computational Biology Department, School of Computer Science
[3] University of Oxford,Department of Biochemistry
[4] University of North Carolina at Chapel Hill,Laboratory for Molecular Modeling, UNC Eshelman School of Pharmacy
[5] Enamine Ltd,Structual Genomics Consortium, UNC Eshelman School of Pharmacy
[6] Taras Shevchenko National University of Kyiv,undefined
[7] Chemspace LLC,undefined
[8] University of North Carolina at Chapel Hill,undefined
来源
关键词
D O I
暂无
中图分类号
学科分类号
摘要
Deep generative neural networks have been used increasingly in computational chemistry for de novo design of molecules with desired properties. Many deep learning approaches employ reinforcement learning for optimizing the target properties of the generated molecules. However, the success of this approach is often hampered by the problem of sparse rewards as the majority of the generated molecules are expectedly predicted as inactives. We propose several technical innovations to address this problem and improve the balance between exploration and exploitation modes in reinforcement learning. In a proof-of-concept study, we demonstrate the application of the deep generative recurrent neural network architecture enhanced by several proposed technical tricks to design inhibitors of the epidermal growth factor (EGFR) and further experimentally validate their potency. The proposed technical solutions are expected to substantially improve the success rate of finding novel bioactive compounds for specific biological targets using generative and reinforcement learning approaches.
引用
收藏
相关论文
共 50 条
  • [41] Score-based generative modeling for de novo protein design
    Lee, Jin Sub
    Kim, Jisun
    Kim, Philip M.
    NATURE COMPUTATIONAL SCIENCE, 2023, 3 (05): : 382 - 392
  • [42] Molecular substructure tree generative model for de novo drug design
    Wang, Shuang
    Song, Tao
    Zhang, Shugang
    Jiang, Mingjian
    Wei, Zhiqiang
    Li, Zhen
    BRIEFINGS IN BIOINFORMATICS, 2022, 23 (02)
  • [43] Application progress of deep generative models in de novo drug design
    Liu, Yingxu
    Xu, Chengcheng
    Yang, Xinyi
    Zhang, Yanmin
    Chen, Yadong
    Liu, Haichun
    MOLECULAR DIVERSITY, 2024, 28 (04) : 2411 - 2427
  • [44] De Novo Antimicrobial Peptide Design with Feedback Generative Adversarial Networks
    Zervou, Michaela Areti
    Doutsi, Effrosyni
    Pantazis, Yannis
    Tsakalides, Panagiotis
    INTERNATIONAL JOURNAL OF MOLECULAR SCIENCES, 2024, 25 (10)
  • [45] Score-based generative modeling for de novo protein design
    Jin Sub Lee
    Jisun Kim
    Philip M. Kim
    Nature Computational Science, 2023, 3 : 382 - 392
  • [46] Comprehensive assessment of deep generative architectures for de novo drug design
    Wang, Mingyang
    Sun, Huiyong
    Wang, Jike
    Pang, Jinping
    Chai, Xin
    Xu, Lei
    Li, Honglin
    Cao, Dongsheng
    Hou, Tingjun
    BRIEFINGS IN BIOINFORMATICS, 2022, 23 (01)
  • [47] Shape-Based Generative Modeling for de Novo Drug Design
    Skalic, Miha
    Jimenez, Jose
    Sabbadin, Davide
    De Fabritiis, Gianni
    JOURNAL OF CHEMICAL INFORMATION AND MODELING, 2019, 59 (03) : 1205 - 1214
  • [48] Conditional generative modeling for de novo protein design with hierarchical functions
    Kucera, Tim
    Togninalli, Matteo
    Meng-Papaxanthos, Laetitia
    BIOINFORMATICS, 2022, 38 (13) : 3454 - 3461
  • [49] Attention-based generative models for de novo molecular design
    Dollar, Orion
    Joshi, Nisarg
    Beck, David A. C.
    Pfaendtner, Jim
    CHEMICAL SCIENCE, 2021, 12 (24) : 8362 - 8372
  • [50] De novo drug design as GPT language modeling: large chemistry models with supervised and reinforcement learning
    Ye, Gavin
    JOURNAL OF COMPUTER-AIDED MOLECULAR DESIGN, 2024, 38 (01)