Mascarenhas Nahren Manuel, Ghoshal Nanda
Structural Biology and Bioinformatics Division, Indian Institute of Chemical Biology (CSIR), 4 Raja S.C. Mullick Road, Jadavpur, Kolkata 700032, India.
Eur J Med Chem. 2008 Dec;43(12):2807-18. doi: 10.1016/j.ejmech.2007.10.016. Epub 2007 Oct 22.
This study proposes a fast and efficient approach for identifying novel inhibitors when the biologically active conformation of an inhibitor is known. The present study was carried out with CDK2/CyclinA inhibitors. The co-crystal structure of the most active ligand with CDK2/CyclinA was converted into a feature-shape query. This query served three purposes (i) alignment of molecules to generate 3D-QSAR model, (ii) rigid docking to the active site using GOLD, (iii) extracting hits from databases. A statistically valid 3D-QSAR (r(2)=0.867, q(2)=0.887) with good external set prediction (r(pred)(2)=0.890) was obtained. The docked poses were analyzed based on their interaction with hinge region (Glu81-Leu83) of CDK2. A reasonably good consensus score was generated using 11 scoring functions. The developed model was then successfully used to identify potential leads for CDK2/CyclinA inhibitors.
本研究提出了一种快速有效的方法,用于在已知抑制剂的生物活性构象时识别新型抑制剂。本研究是针对CDK2/细胞周期蛋白A抑制剂开展的。将活性最高的配体与CDK2/细胞周期蛋白A的共晶体结构转化为特征形状查询。该查询有三个用途:(i)分子比对以生成3D-QSAR模型;(ii)使用GOLD对活性位点进行刚性对接;(iii)从数据库中提取命中物。获得了具有良好外部集预测能力(r(pred)(2)=0.890)的统计学有效3D-QSAR(r(2)=0.867,q(2)=0.887)。基于对接姿势与CDK2铰链区(Glu81-Leu83)的相互作用进行分析。使用11种评分函数生成了合理良好的一致性分数。然后,所开发的模型成功用于识别CDK2/细胞周期蛋白A抑制剂的潜在先导物。