a Zhejiang University, Key Laboratory of Biomass Chemical Engineering of Ministry of Education, Department of Chemical and Biological Engineering , Hangzhou 310027, China +86 571 8795 3080 ; +86 571 8795 3080 ;
Expert Opin Drug Discov. 2015 Dec;10(12):1283-300. doi: 10.1517/17460441.2015.1083006. Epub 2015 Sep 11.
Quantitative structure-activity relationship (QSAR) modeling is one of the most popular computer-aided tools employed in medicinal chemistry for drug discovery and lead optimization. It is especially powerful in the absence of 3D structures of specific drug targets. QSAR methods have been shown to draw public attention since they were first introduced.
In this review, the authors provide a brief discussion of the basic principles of QSAR, model development and model validation. They also highlight the current applications of QSAR in different fields, particularly in virtual screening, rational drug design and multi-target QSAR. Finally, in view of recent controversies, the authors detail the challenges faced by QSAR modeling and the relevant solutions. The aim of this review is to show how QSAR modeling can be applied in novel drug discovery, design and lead optimization.
QSAR should intentionally be used as a powerful tool for fragment-based drug design platforms in the field of drug discovery and design. Although there have been an increasing number of experimentally determined protein structures in recent years, a great number of protein structures cannot be easily obtained (i.e., membrane transport proteins and G-protein coupled receptors). Fragment-based drug discovery, such as QSAR, could be applied further and have a significant role in dealing with these problems. Moreover, along with the development of computer software and hardware, it is believed that QSAR will be increasingly important.
定量构效关系(QSAR)建模是药物化学中用于药物发现和先导优化的最受欢迎的计算机辅助工具之一。在缺乏特定药物靶标 3D 结构的情况下,QSAR 方法尤其强大。自首次引入以来,QSAR 方法已经引起了公众的关注。
在这篇综述中,作者简要讨论了 QSAR 的基本原理、模型开发和模型验证。他们还强调了 QSAR 在不同领域的当前应用,特别是在虚拟筛选、合理药物设计和多靶标 QSAR 中。最后,鉴于最近的争议,作者详细介绍了 QSAR 建模所面临的挑战和相关解决方案。本综述的目的是展示 QSAR 建模如何应用于新型药物发现、设计和先导优化。
QSAR 应该被有意用作药物发现和设计领域基于片段的药物设计平台的强大工具。尽管近年来实验确定的蛋白质结构数量不断增加,但仍有大量蛋白质结构难以获得(例如,膜转运蛋白和 G 蛋白偶联受体)。基于片段的药物发现,如 QSAR,可以进一步应用,并在解决这些问题方面发挥重要作用。此外,随着计算机软件和硬件的发展,相信 QSAR 将变得越来越重要。