Schormann N, Senkovich O, Walker K, Wright D L, Anderson A C, Rosowsky A, Ananthan S, Shinkre B, Velu S, Chattopadhyay D
Department of Pharmaceutical Sciences, University of Alabama at Birmingham, Birmingham, Alabama 35294, USA.
Proteins. 2008 Dec;73(4):889-901. doi: 10.1002/prot.22115.
We have employed a structure-based three-dimensional quantitative structure-activity relationship (3D-QSAR) approach to predict the biochemical activity for inhibitors of T. cruzi dihydrofolate reductase-thymidylate synthase (DHFR-TS). Crystal structures of complexes of the enzyme with eight different inhibitors of the DHFR activity together with the structure in the substrate-free state (DHFR domain) were used to validate and refine docking poses of ligands that constitute likely active conformations. Structural information from these complexes formed the basis for the structure-based alignment used as input for the QSAR study. Contrary to indirect ligand-based approaches the strategy described here employs a direct receptor-based approach. The goal is to generate a library of selective lead inhibitors for further development as antiparasitic agents. 3D-QSAR models were obtained for T. cruzi DHFR-TS (30 inhibitors in learning set) and human DHFR (36 inhibitors in learning set) that show a very good agreement between experimental and predicted enzyme inhibition data. For crossvalidation of the QSAR model(s), we have used the 10% leave-one-out method. The derived 3D-QSAR models were tested against a few selected compounds (a small test set of six inhibitors for each enzyme) with known activity, which were not part of the learning set, and the quality of prediction of the initial 3D-QSAR models demonstrated that such studies are feasible. Further refinement of the models through integration of additional activity data and optimization of reliable docking poses is expected to lead to an improved predictive ability.
我们采用了基于结构的三维定量构效关系(3D-QSAR)方法来预测克氏锥虫二氢叶酸还原酶-胸苷酸合成酶(DHFR-TS)抑制剂的生化活性。利用该酶与八种不同DHFR活性抑制剂形成的复合物的晶体结构以及无底物状态下的结构(DHFR结构域)来验证和优化构成可能活性构象的配体对接姿势。这些复合物的结构信息构成了用于QSAR研究输入的基于结构比对的基础。与基于间接配体的方法相反,这里描述的策略采用基于直接受体的方法。目标是生成一个选择性先导抑制剂库,以进一步开发为抗寄生虫药物。获得了克氏锥虫DHFR-TS(训练集中有30种抑制剂)和人DHFR(训练集中有36种抑制剂)的3D-QSAR模型,这些模型显示实验和预测的酶抑制数据之间具有很好的一致性。为了对QSAR模型进行交叉验证,我们使用了10%留一法。针对一些具有已知活性的选定化合物(每种酶有六种抑制剂的小型测试集)对推导的3D-QSAR模型进行了测试,这些化合物不属于训练集,初始3D-QSAR模型的预测质量表明此类研究是可行的。通过整合额外的活性数据和优化可靠的对接姿势对模型进行进一步优化,有望提高预测能力。