用图神经网络预测分子性质的简要综述

Q1 Pharmacology, Toxicology and Pharmaceutics
Oliver Wieder , Stefan Kohlbacher , Mélaine Kuenemann , Arthur Garon , Pierre Ducrot , Thomas Seidel , Thierry Langer
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引用次数: 209

摘要

随着图神经网络在药物发现领域变得越来越强大和有用,许多制药公司对将这些方法用于他们自己的内部框架越来越感兴趣。这对于预测分子特性等任务尤其具有吸引力,这通常是计算机辅助药物发现工作流程中最关键的任务之一。围绕这些算法的巨大炒作导致了许多不同类型的有前途的架构的发展,在这篇综述中,我们试图通过收集和分类80个gnn来构建这个高度动态的人工智能研究领域,这些gnn已被用于使用48个不同的数据集预测20多个分子特性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A compact review of molecular property prediction with graph neural networks

As graph neural networks are becoming more and more powerful and useful in the field of drug discovery, many pharmaceutical companies are getting interested in utilizing these methods for their own in-house frameworks. This is especially compelling for tasks such as the prediction of molecular properties which is often one of the most crucial tasks in computer-aided drug discovery workflows. The immense hype surrounding these kinds of algorithms has led to the development of many different types of promising architectures and in this review we try to structure this highly dynamic field of AI-research by collecting and classifying 80 GNNs that have been used to predict more than 20 molecular properties using 48 different datasets.

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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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