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Molecular substructure tree generative model for de novo drug design

Shuang Wang, Tao Song, Shugang Zhang, Mingjian Jiang, Zhiqiang Wei, Zhen Li

2021Briefings in Bioinformatics30 citationsDOI

Abstract

Deep learning shortens the cycle of the drug discovery for its success in extracting features of molecules and proteins. Generating new molecules with deep learning methods could enlarge the molecule space and obtain molecules with specific properties. However, it is also a challenging task considering that the connections between atoms are constrained by chemical rules. Aiming at generating and optimizing new valid molecules, this article proposed Molecular Substructure Tree Generative Model, in which the molecule is generated by adding substructure gradually. The proposed model is based on the Variational Auto-Encoder architecture, which uses the encoder to map molecules to the latent vector space, and then builds an autoregressive generative model as a decoder to generate new molecules from Gaussian distribution. At the same time, for the molecular optimization task, a molecular optimization model based on CycleGAN was constructed. Experiments showed that the model could generate valid and novel molecules, and the optimized model effectively improves the molecular properties.

Topics & Concepts

SubstructureComputer scienceGenerative modelChemical spaceTree (set theory)Artificial intelligenceEncoderBiological systemAlgorithmGenerative grammarDrug discoveryChemistryMathematicsEngineeringStructural engineeringBiologyMathematical analysisOperating systemBiochemistryComputational Drug Discovery MethodsMachine Learning in Materials ScienceChemistry and Chemical Engineering
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