Vilar Santiago, Costanzi Stefano
NIDDK, National Institutes of Health, Berthesda, MD, USA.
Methods Mol Biol. 2012;914:271-84. doi: 10.1007/978-1-62703-023-6_16.
Numerous computational methodologies have been developed to facilitate the process of drug discovery. Broadly, they can be classified into ligand-based approaches, which are solely based on the calculation of the molecular properties of compounds, and structure-based approaches, which are based on the study of the interactions between compounds and their target proteins. This chapter deals with two major categories of ligand-based and structure-based methods for the prediction of biological activities of chemical compounds, namely quantitative structure-activity relationship (QSAR) analysis and docking-based scoring. QSAR methods are endowed with robustness and good ranking ability when applied to the prediction of the activity of closely related analogs; however, their great dependence on training sets significantly limits their applicability to the evaluation of diverse compounds. Instead, docking-based scoring, although not very effective in ranking active compounds on the basis of their affinities or potencies, offer the great advantage of not depending on training sets and have proven to be suitable tools for the distinction of active from inactive compounds, thus providing feasible platforms for virtual screening campaigns. Here, we describe the basic principles underlying the prediction of biological activities on the basis of QSAR and docking-based scoring, as well as a method to combine two or more individual predictions into a consensus model. Finally, we describe an example that illustrates the applicability of QSAR and molecular docking to G protein-coupled receptor (GPCR) projects.
为了促进药物发现过程,人们已经开发了许多计算方法。大致来说,它们可以分为基于配体的方法和基于结构的方法。基于配体的方法仅基于化合物分子性质的计算,而基于结构的方法则基于化合物与其靶蛋白之间相互作用的研究。本章介绍用于预测化合物生物活性的两大类基于配体和基于结构的方法,即定量构效关系(QSAR)分析和基于对接的评分。QSAR方法在应用于预测密切相关类似物的活性时具有稳健性和良好的排序能力;然而,它们对训练集的高度依赖显著限制了它们对多种化合物评估的适用性。相反,基于对接的评分虽然在根据活性化合物的亲和力或效力进行排序方面不是很有效,但具有不依赖训练集的巨大优势,并且已被证明是区分活性化合物和非活性化合物的合适工具,从而为虚拟筛选活动提供了可行的平台。在这里,我们描述基于QSAR和基于对接的评分预测生物活性的基本原理,以及将两个或多个单独预测组合成一个共识模型的方法。最后,我们描述一个例子来说明QSAR和分子对接在G蛋白偶联受体(GPCR)项目中的适用性。