Popov Veljko M, Yee W Atom, Anderson Amy C
Department of Chemistry, Dartmouth College, Hanover, New Hampshire 03755, USA.
Proteins. 2007 Feb 1;66(2):375-87. doi: 10.1002/prot.21201.
Accurately ranking protein/ligand interactions and distinguishing subtle differences between homologous compounds in a virtual focused library in silico is essential in a structure-based drug discovery program. In order to establish a predictive model to design novel inhibitors of dihydrofolate reductase (DHFR) from the parasitic protozoa, Cryptosporidium hominis, we docked a series of 30 DHFR inhibitors with measured inhibition constants against the crystal structure of the protein. By including protein flexibility and averaging the energies of the 25 lowest protein/ligand conformers we obtained more accurate total nonbonded energies from which we calculated a predicted biological activity. The calculated and measured biological activities showed reliable correlations of 72.9%. Additionally, visual analysis of the ensemble of protein/ligand conformations revealed alternative ligand binding pockets in the active site. Using the same principles we then created a homology model of DHFR from Toxoplasma gondii and docked 11 inhibitors. A correlation of 50.2% between docking score and activity validates both the method and the model. The correlations presented here are particularly compelling considering the high structural similarity of the ligands and the fact that we have used structures derived from crystallographic data and homology modeling. These docking principles may be useful in any lead optimization study where accurate ranking of similar compounds is desired.
在基于结构的药物发现计划中,准确地对蛋白质/配体相互作用进行排名,并区分虚拟聚焦文库中同源化合物之间的细微差异至关重要。为了建立一个预测模型,以设计来自寄生原生动物人隐孢子虫的二氢叶酸还原酶(DHFR)的新型抑制剂,我们将一系列30种具有测量抑制常数的DHFR抑制剂与该蛋白质的晶体结构进行对接。通过纳入蛋白质灵活性并对25个最低能量的蛋白质/配体构象的能量进行平均,我们获得了更准确的总非键合能,并据此计算出预测的生物活性。计算得到的和测量得到的生物活性显示出72.9%的可靠相关性。此外,对蛋白质/配体构象集合的可视化分析揭示了活性位点中的其他配体结合口袋。然后,我们使用相同的原理创建了来自刚地弓形虫的DHFR同源模型,并对接了11种抑制剂。对接分数与活性之间50.2%的相关性验证了该方法和模型。考虑到配体的高度结构相似性以及我们使用了来自晶体学数据和同源建模的结构这一事实,这里呈现的相关性尤其引人注目。这些对接原理可能在任何需要对相似化合物进行准确排名的先导优化研究中都有用。