David Laurianne, Thakkar Amol, Mercado Rocío, Engkvist Ola
Hit Discovery, Discovery Sciences, BioPharmaceuticals R&D, Astrazeneca Gothenburg, Sweden.
Department of Chemistry and Biochemistry, University of Bern, Bern, Switzerland.
J Cheminform. 2020 Sep 17;12(1):56. doi: 10.1186/s13321-020-00460-5.
The technological advances of the past century, marked by the computer revolution and the advent of high-throughput screening technologies in drug discovery, opened the path to the computational analysis and visualization of bioactive molecules. For this purpose, it became necessary to represent molecules in a syntax that would be readable by computers and understandable by scientists of various fields. A large number of chemical representations have been developed over the years, their numerosity being due to the fast development of computers and the complexity of producing a representation that encompasses all structural and chemical characteristics. We present here some of the most popular electronic molecular and macromolecular representations used in drug discovery, many of which are based on graph representations. Furthermore, we describe applications of these representations in AI-driven drug discovery. Our aim is to provide a brief guide on structural representations that are essential to the practice of AI in drug discovery. This review serves as a guide for researchers who have little experience with the handling of chemical representations and plan to work on applications at the interface of these fields.
过去一个世纪的技术进步,以计算机革命和药物发现中高通量筛选技术的出现为标志,为生物活性分子的计算分析和可视化开辟了道路。为此,有必要用一种计算机可读且各领域科学家都能理解的语法来表示分子。多年来已经开发了大量的化学表示方法,其数量众多是由于计算机的快速发展以及生成涵盖所有结构和化学特征的表示方法的复杂性。我们在此介绍一些药物发现中最常用的电子分子和大分子表示方法,其中许多基于图形表示。此外,我们描述了这些表示方法在人工智能驱动的药物发现中的应用。我们的目的是提供一份关于结构表示的简要指南,这些表示对于药物发现中人工智能的实践至关重要。这篇综述为那些在处理化学表示方面经验较少并计划在这些领域的交叉应用方面开展工作的研究人员提供了指导。