Graph Neural Networks as a Potential Tool in Improving Virtual Screening Programs

被引:7
作者
Alves, Luiz Anastacio [1 ]
Ferreira, Natiele Carla da Silva [1 ]
Maricato, Victor [1 ]
Alberto, Anael Viana Pinto [1 ]
Dias, Evellyn Araujo [1 ]
Jose Aguiar Coelho, Nt [2 ]
机构
[1] Oswaldo Cruz Inst Fiocruz, Lab Cellular Commun, Rio De Janeiro, Brazil
[2] INPI & Veiga Almeida Univ UVA, Nat Inst Ind Property, Rio De Janeiro, Brazil
来源
FRONTIERS IN CHEMISTRY | 2022年 / 9卷
关键词
GNN; deep learning; drug discovery; virtual screening; natural products; HISTORY; DISCOVERY;
D O I
10.3389/fchem.2021.787194
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
Despite the increasing number of pharmaceutical companies, university laboratories and funding, less than one percent of initially researched drugs enter the commercial market. In this context, virtual screening (VS) has gained much attention due to several advantages, including timesaving, reduced reagent and consumable costs and the performance of selective analyses regarding the affinity between test molecules and pharmacological targets. Currently, VS is based mainly on algorithms that apply physical and chemistry principles and quantum mechanics to estimate molecule affinities and conformations, among others. Nevertheless, VS has not reached the expected results concerning the improvement of market-approved drugs, comprising less than twenty drugs that have reached this goal to date. In this context, graph neural networks (GNN), a recent deep-learning subtype, may comprise a powerful tool to improve VS results concerning natural products that may be used both simultaneously with standard algorithms or isolated. This review discusses the pros and cons of GNN applied to VS and the future perspectives of this learnable algorithm, which may revolutionize drug discovery if certain obstacles concerning spatial coordinates and adequate datasets, among others, can be overcome.
引用
收藏
页数:14
相关论文
共 72 条
  • [1] Adrian ED, 1914, J PHYSIOL-LONDON, V47, P460
  • [2] Ion Channels and Thermosensitivity: TRP, TREK, or Both?
    Antonio Lamas, J.
    Rueda-Ruzafa, Lola
    Herrera-Perez, Salvador
    [J]. INTERNATIONAL JOURNAL OF MOLECULAR SCIENCES, 2019, 20 (10)
  • [3] Introduction of quantitative methods in pharmacology and clinical pharmacology: A historical overview
    Atkinson, A. J., Jr.
    Lalonde, R. L.
    [J]. CLINICAL PHARMACOLOGY & THERAPEUTICS, 2007, 82 (01) : 3 - 6
  • [4] Chen Benson, 2019, arXiv:1905.12712
  • [5] Data Resources for the Computer-Guided Discovery of Bioactive Natural Products
    Chen, Ya
    Kops, Christina de Bruyn
    Kirchmair, Johannes
    [J]. JOURNAL OF CHEMICAL INFORMATION AND MODELING, 2017, 57 (09) : 2099 - 2111
  • [6] XGraphBoost: Extracting Graph Neural Network-Based Features for a Better Prediction of Molecular Properties
    Deng, Daiguo
    Chen, Xiaowei
    Zhang, Ruochi
    Lei, Zengrong
    Wang, Xiaojian
    Zhou, Fengfeng
    [J]. JOURNAL OF CHEMICAL INFORMATION AND MODELING, 2021, 61 (06) : 2697 - 2705
  • [7] Dobrev D., 2012, Mathematica Balkanica, P1568, DOI [10.48550/arXiv.1210.1568, DOI 10.48550/ARXIV.1210.1568]
  • [8] Dwivedi Vijay Prakash, 2020, CORR
  • [9] Euler L., 1736, COMMENTARII ACADEMIA, V8, P128
  • [10] A Brief History of Simulation Neuroscience
    Fan, Xue
    Markram, Henry
    [J]. FRONTIERS IN NEUROINFORMATICS, 2019, 13