» Articles » PMID: 35346368

Transformer-based Molecular Optimization Beyond Matched Molecular Pairs

Overview
Journal J Cheminform
Publisher Biomed Central
Specialty Chemistry
Date 2022 Mar 29
PMID 35346368
Authors
Affiliations
Soon will be listed here.
Abstract

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.

Citing Articles

Accelerating discovery of bioactive ligands with pharmacophore-informed generative models.

Xie W, Zhang J, Xie Q, Gong C, Ren Y, Xie J Nat Commun. 2025; 16(1):2391.

PMID: 40064886 PMC: 11894060. DOI: 10.1038/s41467-025-56349-0.


Molecular optimization using a conditional transformer for reaction-aware compound exploration with reinforcement learning.

Nakamura S, Yasuo N, Sekijima M Commun Chem. 2025; 8(1):40.

PMID: 39922979 PMC: 11807120. DOI: 10.1038/s42004-025-01437-x.


DrugAssist: a large language model for molecule optimization.

Ye G, Cai X, Lai H, Wang X, Huang J, Wang L Brief Bioinform. 2025; 26(1).

PMID: 39751647 PMC: 11697106. DOI: 10.1093/bib/bbae693.


GT-NMR: a novel graph transformer-based approach for accurate prediction of NMR chemical shifts.

Chen H, Liang T, Tan K, Wu A, Lu X J Cheminform. 2024; 16(1):132.

PMID: 39593119 PMC: 11590296. DOI: 10.1186/s13321-024-00927-9.


Exhaustive local chemical space exploration using a transformer model.

Tibo A, He J, Janet J, Nittinger E, Engkvist O Nat Commun. 2024; 15(1):7315.

PMID: 39183239 PMC: 11345417. DOI: 10.1038/s41467-024-51672-4.


References
1.
Winter R, Montanari F, Steffen A, Briem H, Noe F, Clevert D . Efficient multi-objective molecular optimization in a continuous latent space. Chem Sci. 2019; 10(34):8016-8024. PMC: 6836962. DOI: 10.1039/c9sc01928f. View

2.
Blaschke T, Olivecrona M, Engkvist O, Bajorath J, Chen H . Application of Generative Autoencoder in De Novo Molecular Design. Mol Inform. 2017; 37(1-2). PMC: 5836887. DOI: 10.1002/minf.201700123. View

3.
Putin E, Asadulaev A, Ivanenkov Y, Aladinskiy V, Sanchez-Lengeling B, Aspuru-Guzik A . Reinforced Adversarial Neural Computer for de Novo Molecular Design. J Chem Inf Model. 2018; 58(6):1194-1204. DOI: 10.1021/acs.jcim.7b00690. View

4.
He J, You H, Sandstrom E, Nittinger E, Bjerrum E, Tyrchan C . Molecular optimization by capturing chemist's intuition using deep neural networks. J Cheminform. 2021; 13(1):26. PMC: 7980633. DOI: 10.1186/s13321-021-00497-0. View

5.
Olivecrona M, Blaschke T, Engkvist O, Chen H . Molecular de-novo design through deep reinforcement learning. J Cheminform. 2017; 9(1):48. PMC: 5583141. DOI: 10.1186/s13321-017-0235-x. View