Laurie Alasdair T R, Jackson Richard M
Institute of Molecular and Cellular Biology, Faculty of Biological Sciences, University of Leeds, Leeds, LS2 9JT, UK.
Curr Protein Pept Sci. 2006 Oct;7(5):395-406. doi: 10.2174/138920306778559386.
Structure Based Drug Design (SBDD) is a computational approach to lead discovery that uses the three-dimensional structure of a protein to fit drug-like molecules into a ligand binding site to modulate function. Identifying the location of the binding site is therefore a vital first step in this process, restricting the search space for SBDD or virtual screening studies. The detection and characterisation of functional sites on proteins has increasingly become an area of interest. Structural genomics projects are increasingly yielding protein structures with unknown functions and binding sites. Binding site prediction was pioneered by pocket detection, since the binding site is often found in the largest pocket. More recent methods involve phylogenetic analysis, identifying structural similarity with proteins of known function and identifying regions on the protein surface with a potential for high binding affinity. Binding site prediction has been used in several SBDD projects and has been incorporated into several docking tools. We discuss different methods of ligand binding site prediction, their strengths and weaknesses, and how they have been used in SBDD.
基于结构的药物设计(SBDD)是一种用于先导化合物发现的计算方法,它利用蛋白质的三维结构将类药物分子拟合到配体结合位点以调节功能。因此,确定结合位点的位置是该过程至关重要的第一步,它限制了SBDD或虚拟筛选研究的搜索空间。蛋白质上功能位点的检测和表征越来越成为一个受关注的领域。结构基因组学项目越来越多地产生功能和结合位点未知的蛋白质结构。结合位点预测最初是通过口袋检测进行的,因为结合位点通常位于最大的口袋中。最近的方法包括系统发育分析、识别与已知功能蛋白质的结构相似性以及识别蛋白质表面具有高结合亲和力潜力的区域。结合位点预测已用于多个SBDD项目,并已被纳入多种对接工具中。我们讨论了配体结合位点预测的不同方法、它们的优缺点以及它们在SBDD中的应用方式。