Transformer-based molecular optimization beyond matched molecular pairs

被引:35
作者
He, Jiazhen [1 ]
Nittinger, Eva [2 ]
Tyrchan, Christian [2 ]
Czechtizky, Werngard [2 ]
Patronov, Atanas [1 ]
Bjerrum, Esben Jannik [1 ]
Engkvist, Ola [1 ,3 ]
机构
[1] AstraZeneca, Mol AI, R&D, Discovery Sci, Gothenburg, Sweden
[2] AstraZeneca, BioPharmaceut R&D, Resp & Immunol R&I, Med Chem Res & Early Dev, Gothenburg, Sweden
[3] Chalmers Univ Technol, Dept Comp Sci & Engn, Gothenburg, Sweden
关键词
Molecular optimization; Matched molecular pairs; Transformer; Tanimoto similarity; Scaffold; ADMET; GENERATION;
D O I
10.1186/s13321-022-00599-3
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
Molecular optimization aims to improve the drug profile of a starting molecule. It is a fundamental problem in drug discovery but challenging due to (i) the requirement of simultaneous optimization of multiple properties and (ii) the large chemical space to explore. Recently, deep learning methods have been proposed to solve this task by mimicking the chemist's intuition in terms of matched molecular pairs (MMPs). Although MMPs is a widely used strategy by medicinal chemists, it offers limited capability in terms of exploring the space of structural modifications, therefore does not cover the complete space of solutions. Often more general transformations beyond the nature of MMPs are feasible and/or necessary, e.g. simultaneous modifications of the starting molecule at different places including the core scaffold. This study aims to provide a general methodology that offers more general structural modifications beyond MMPs. In particular, the same Transformer architecture is trained on different datasets. These datasets consist of a set of molecular pairs which reflect different types of transformations. Beyond MMP transformation, datasets reflecting general structural changes are constructed from ChEMBL based on two approaches: Tanimoto similarity (allows for multiple modifications) and scaffold matching (allows for multiple modifications but keep the scaffold constant) respectively. We investigate how the model behavior can be altered by tailoring the dataset while using the same model architecture. Our results show that the models trained on differently prepared datasets transform a given starting molecule in a way that it reflects the nature of the dataset used for training the model. These models could complement each other and unlock the capability for the chemists to pursue different options for improving a starting molecule.
引用
收藏
页数:14
相关论文
共 38 条
  • [1] The properties of known drugs .1. Molecular frameworks
    Bemis, GW
    Murcko, MA
    [J]. JOURNAL OF MEDICINAL CHEMISTRY, 1996, 39 (15) : 2887 - 2893
  • [2] Bjerrum E. J., 2017, ARXIV
  • [3] Application of Generative Autoencoder in De Novo Molecular Design
    Blaschke, Thomas
    Olivecrona, Marcus
    Engkvist, Ola
    Bajorath, Jurgen
    Chen, Hongming
    [J]. MOLECULAR INFORMATICS, 2018, 37 (1-2)
  • [4] Chemical predictive modelling to improve compound quality
    Cumming, John G.
    Davis, Andrew M.
    Muresan, Sorel
    Haeberlein, Markus
    Chen, Hongming
    [J]. NATURE REVIEWS DRUG DISCOVERY, 2013, 12 (12) : 948 - 962
  • [5] Dai H., 2018, P INT C LEARN REPR
  • [6] mmpdb: An Open-Source Matched Molecular Pair Platform for Large Multiproperty Data Sets
    Dalke, Andrew
    Hert, Jerome
    Kramer, Christian
    [J]. JOURNAL OF CHEMICAL INFORMATION AND MODELING, 2018, 58 (05) : 902 - 910
  • [7] De Cao N., 2018, MolGAN: An implicit generative model for small molecular graphs
  • [8] Nonadditivity in public and inhouse data: implications for drug design
    Gogishvili, D.
    Nittinger, E.
    Margreitter, C.
    Tyrchan, C.
    [J]. JOURNAL OF CHEMINFORMATICS, 2021, 13 (01)
  • [9] Automatic Chemical Design Using a Data-Driven Continuous Representation of Molecules
    Gomez-Bombarelli, Rafael
    Wei, Jennifer N.
    Duvenaud, David
    Hernandez-Lobato, Jose Miguel
    Sanchez-Lengeling, Benjamin
    Sheberla, Dennis
    Aguilera-Iparraguirre, Jorge
    Hirzel, Timothy D.
    Adams, Ryan P.
    Aspuru-Guzik, Alan
    [J]. ACS CENTRAL SCIENCE, 2018, 4 (02) : 268 - 276
  • [10] Guimaraes GL, 2017, ARXIV170510843