Graph-based generative models for de Novo drug design

Q1 Pharmacology, Toxicology and Pharmaceutics Drug Discovery Today: Technologies Pub Date : 2019-12-01 DOI:10.1016/j.ddtec.2020.11.004
Xiaolin Xia, Jianxing Hu, Yanxing Wang, Liangren Zhang, Zhenming Liu
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引用次数: 19

Abstract

The discovery of new chemical entities is a crucial part of drug discovery, which requires the lead compounds to have desired properties to be pharmaceutically active. De novo drug design aims to generate and optimize novel ligands for macromolecular targets from scratch. The development of graph-based deep generative neural networks has provided a new method. In this review, we gave a brief introduction to graph representation and graph-based generative models for de novo drug design, summarized them as four architectures, and concluded each’s characteristics. We also discussed generative models for scaffold- and fragment-based design and graph-based generative models’ future directions.

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基于图的新生药物设计生成模型
新化学实体的发现是药物发现的重要组成部分,这就要求先导化合物具有理想的药性。从头开始的药物设计旨在为大分子靶标生成和优化新的配体。基于图的深度生成神经网络的发展提供了一种新的方法。本文简要介绍了图表示和基于图的生成模型在新药物设计中的应用,将其归纳为四种架构,并总结了各自的特点。我们还讨论了基于脚手架和碎片设计的生成模型以及基于图形的生成模型的未来发展方向。
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来源期刊
Drug Discovery Today: Technologies
Drug Discovery Today: Technologies Pharmacology, Toxicology and Pharmaceutics-Drug Discovery
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期刊介绍: Discovery Today: Technologies compares different technological tools and techniques used from the discovery of new drug targets through to the launch of new medicines.
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