从计算机辅助药物设计到人工智能药物设计的最新进展。

IF 4.1 4区 医学 Q2 BIOCHEMISTRY & MOLECULAR BIOLOGY RSC medicinal chemistry Pub Date : 2024-10-11 DOI:10.1039/d4md00522h
Keran Wang, Yanwen Huang, Yan Wang, Qidong You, Lei Wang
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引用次数: 0

摘要

计算机辅助药物设计(CADD)是现代药物发现的基石,它可以利用基于结构和配体的方法预测分子结构与其活性的关系以及与靶标的相互作用。在数据可用性不断提高和模型持续优化的推动下,人工智能药物设计(AIDD)作为 CADD 的增强迭代,在过去十年中得到了蓬勃发展。人工智能药物设计在蛋白质折叠、性质预测和分子生成方面展示了前所未有的机遇。它还能促进靶点识别、高通量筛选(HTS)和合成路线预测。有了 AIDD 的参与,药物发现的过程将大大加快。值得注意的是,AIDD 为探索现有知识之外的未知化学领域提供了可能。从这个角度出发,我们首先简要概述了 CADD 的主要工作流程和组成部分。然后,通过展示近年来由 AIDD 驱动的典范案例,我们从化学文库筛选、链接物生成和全新分子生成这三个不同阶段描述了人工智能(AI)在药物发现中不断发展的作用。在这一过程中,我们试图对 CADD 和 AIDD 的特点进行比较。
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Recent advances from computer-aided drug design to artificial intelligence drug design.

Computer-aided drug design (CADD), a cornerstone of modern drug discovery, can predict how a molecular structure relates to its activity and interacts with its target using structure-based and ligand-based methods. Fueled by ever-increasing data availability and continuous model optimization, artificial intelligence drug design (AIDD), as an enhanced iteration of CADD, has thrived in the past decade. AIDD demonstrates unprecedented opportunities in protein folding, property prediction, and molecular generation. It can also facilitate target identification, high-throughput screening (HTS), and synthetic route prediction. With AIDD involved, the process of drug discovery is greatly accelerated. Notably, AIDD offers the potential to explore uncharted territories of chemical space beyond current knowledge. In this perspective, we began by briefly outlining the main workflows and components of CADD. Then through showcasing exemplary cases driven by AIDD in recent years, we describe the evolving role of artificial intelligence (AI) in drug discovery from three distinct stages, that is, chemical library screening, linker generation, and de novo molecular generation. In this process, we attempted to draw comparisons between the features of CADD and AIDD.

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CiteScore
5.80
自引率
2.40%
发文量
129
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