Yasuo Kazuya, Yamaotsu Noriyuki, Gouda Hiroaki, Tsujishita Hideki, Hirono Shuichi
Discovery Research Laboratories, Shionogi & Co., Ltd. 12-4, Sagisu 5-Chome, Fukushima-ku, Osaka 553-0002, Japan.
J Chem Inf Model. 2009 Apr;49(4):853-64. doi: 10.1021/ci800313h.
In this study, we tried to establish a general scheme to create a model that could predict the affinity of small compounds to their target proteins. This scheme consists of a search for ligand-binding sites on a protein, a generation of bound conformations (poses) of ligands in each of the sites by docking, identifications of the correct poses of each ligand by consensus scoring and MM-PBSA analysis, and a construction of a CoMFA model with the obtained poses to predict the affinity of the ligands. By using a crystal structure of CYP 2C9 and the twenty known CYP inhibitors as a test case, we obtained a CoMFA model with a good statistics, which suggested that the classification of the binding sites as well as the predicted bound poses of the ligands should be reasonable enough. The scheme described here would give a method to predict the affinity of small compounds with a reasonable accuracy, which is expected to heighten the value of computational chemistry in the drug design process.
在本研究中,我们试图建立一个通用方案来创建一个能够预测小分子化合物与其靶蛋白亲和力的模型。该方案包括在蛋白质上搜索配体结合位点,通过对接在每个位点生成配体的结合构象(姿态),通过一致性评分和MM-PBSA分析识别每个配体的正确姿态,以及利用获得的姿态构建CoMFA模型以预测配体的亲和力。通过使用CYP 2C9的晶体结构和二十种已知的CYP抑制剂作为测试案例,我们获得了一个具有良好统计数据的CoMFA模型,这表明结合位点的分类以及配体预测的结合姿态应该足够合理。这里描述的方案将提供一种以合理准确度预测小分子化合物亲和力的方法,有望提高计算化学在药物设计过程中的价值。