Landon Melissa R, Lancia David R, Yu Jessamin, Thiel Spencer C, Vajda Sandor
Bioinformatics Graduate Program, Boston University, 24 Cummington Street, Boston, Massachusetts, USA.
J Med Chem. 2007 Mar 22;50(6):1231-40. doi: 10.1021/jm061134b. Epub 2007 Feb 17.
Here we apply the computational solvent mapping (CS-Map) algorithm toward the in silico identification of hot spots, that is, regions of protein binding sites that are major contributors to the binding energy and, hence, are prime targets in drug design. The CS-Map algorithm, developed for binding site characterization, moves small organic functional groups around the protein surface and determines their most energetically favorable binding positions. The utility of CS-Map algorithm toward the prediction of hot spot regions in druggable binding pockets is illustrated by three test systems: (1) renin aspartic protease, (2) a set of previously characterized druggable proteins, and (3) E. coli ketopantoate reductase. In each of the three studies, existing literature was used to verify our results. Based on our analyses, we conclude that the information provided by CS-Map can contribute substantially to the identification of hot spots, a necessary predecessor of fragment-based drug discovery efforts.
在此,我们将计算溶剂映射(CS-Map)算法用于在计算机上识别热点,即蛋白质结合位点中对结合能有主要贡献的区域,因此是药物设计的主要靶点。为表征结合位点而开发的CS-Map算法,使小有机官能团在蛋白质表面移动,并确定其能量上最有利的结合位置。通过三个测试系统说明了CS-Map算法在可成药结合口袋中热点区域预测方面的效用:(1)肾素天冬氨酸蛋白酶,(2)一组先前表征的可成药蛋白质,以及(3)大肠杆菌酮泛酸还原酶。在这三项研究的每一项中,都利用现有文献来验证我们的结果。基于我们的分析,我们得出结论,CS-Map提供的信息可极大地有助于热点的识别,而热点识别是基于片段的药物发现工作的必要前提。