Institute of Molecular Medicine and Department of Life Science, National Tsing Hua University, Hsinchu, 30013 Taiwan, Republic of China.
J Mol Model. 2012 Feb;18(2):675-92. doi: 10.1007/s00894-011-1094-4. Epub 2011 May 12.
Three consensus 3D-QSAR (c-3D-QSAR) models were built for 38, 34, and 78 inhibitors of β-secretase, histone deacetylase, and farnesyltransferase, respectively. To build an individual 3D-QSAR model, the structures of an inhibitor series are aligned through docking of a protein receptor into the active site using the program GOLD. CoMFA, CoMSIA, and Catalyst are then performed for the training set of each structurally aligned inhibitor series to obtain a 3D-QSAR model. Since the consensus in features identified is high for the same pharmacophore features selected for building a 3D-QSAR model by a 3D-QSAR method, a c-3D-QSAR model for each inhibitor series is constructed by combining the pharmacophore features selected for building the 3D-QSAR model using the SYBYL spread sheet and PLS module. Each c-3D-QSAR pharmacophore model built was examined visually and compared with that obtained by simultaneous mapping of the corresponding 3D-QSAR pharmacophores built onto a selected inhibitor structure. It was found that the c-3D-QSAR model built for an inhibitor series improves not only the overall prediction statistics for both training and test sets but also the prediction accuracy for some less active inhibitors of the series.
分别为β-分泌酶、组蛋白去乙酰化酶和法尼基转移酶的 38、34 和 78 种抑制剂构建了三个共识 3D-QSAR(c-3D-QSAR)模型。为了构建单个 3D-QSAR 模型,使用程序 GOLD 将抑制剂系列的结构通过将蛋白质受体对接入活性位点进行对齐。然后对每个结构对齐的抑制剂系列的训练集进行 CoMFA、CoMSIA 和 Catalyst 分析,以获得 3D-QSAR 模型。由于用于通过 3D-QSAR 方法构建 3D-QSAR 模型选择相同药效特征的共识在特征识别中很高,因此通过使用 SYBYL 电子表格和 PLS 模块组合用于构建 3D-QSAR 模型的药效特征来构建每个抑制剂系列的 c-3D-QSAR 模型。构建的每个 c-3D-QSAR 药效特征模型都进行了视觉检查,并与通过同时将相应的 3D-QSAR 药效特征映射到所选抑制剂结构上获得的模型进行了比较。结果发现,为抑制剂系列构建的 c-3D-QSAR 模型不仅提高了训练集和测试集的整体预测统计数据,而且还提高了该系列某些活性较低的抑制剂的预测准确性。