Department of Chemoinformatics, NovaMechanics, Ltd., Nicosia, Cyprus.
J Chem Inf Model. 2012 Mar 26;52(3):711-23. doi: 10.1021/ci200579f. Epub 2012 Mar 15.
Molecular docking, classification techniques, and 3D-QSAR CoMSIA were combined in a multistep framework with the ultimate goal of identifying potent pyrimidine-urea inhibitors of TNF-α production. Using the crystal structure of p38α, all the compounds were docked into the enzyme active site. The docking pose of each compound was subsequently used in a receptor-based alignment for the generation of the CoMSIA fields. "Active" and "inactive" compounds were used to build a Random Tree classification model using the docking score and the CoMSIA fields as input parameters. Domain of applicability indicated the compounds for which activity estimations can be accepted with confidence. For the active compounds, a 3D-QSAR CoMSIA model was subsequently built to accurately estimate the IC(50) values. This novel multistep framework gives insight into the structural characteristics that affect the binding and the inhibitory activity of these analogues on p38α MAP kinase, and it can be extended to other classes of small-molecule inhibitors. In addition, the simplicity of the proposed approach provides expansion to its applicability such as in virtual screening procedures.
采用多步骤框架,将分子对接、分类技术和 3D-QSAR CoMSIA 相结合,旨在寻找强效嘧啶-脲类 TNF-α 产生抑制剂。利用 p38α 的晶体结构,将所有化合物对接入酶的活性部位。随后,根据对接构象,基于受体进行对齐,以生成 CoMSIA 场。使用对接评分和 CoMSIA 场作为输入参数,基于“活性”和“非活性”化合物,建立随机树分类模型。适用域表明可以接受活性预测的化合物。对于活性化合物,随后建立了一个 3D-QSAR CoMSIA 模型,以准确估计 IC50 值。该新颖的多步骤框架深入了解了影响这些 p38α MAP 激酶类似物结合和抑制活性的结构特征,并且可以扩展到其他类别的小分子抑制剂。此外,所提出方法的简单性提供了扩展其适用性的途径,例如在虚拟筛选程序中。