Department of Chemistry, Faculty of Sciences, K. N. Toosi University of Technology, Tehran, Iran.
Mol Divers. 2012 Feb;16(1):203-13. doi: 10.1007/s11030-011-9340-3. Epub 2011 Nov 30.
A quasi 4D-QSAR has been carried out on a series of potent Gram-negative LpxC inhibitors. This approach makes use of the molecular dynamics (MD) trajectories and topology information retrieved from the GROMACS package. This new methodology is based on the generation of a conformational ensemble profile, CEP, for each compound instead of only one conformation, followed by the calculation intermolecular interaction energies at each grid point considering probes and all aligned conformations resulting from MD simulations. These interaction energies are independent variables employed in a QSAR analysis. The comparison of the proposed methodology to comparative molecular field analysis (CoMFA) formalism was performed. This methodology explores jointly the main features of CoMFA and 4D-QSAR models. Step-wise multiple linear regression was used for the selection of the most informative variables. After variable selection, multiple linear regression (MLR) and partial least squares (PLS) methods used for building the regression models. Leave-N-out cross-validation (LNO), and Y-randomization were performed in order to confirm the robustness of the model in addition to analysis of the independent test set. Best models provided the following statistics: [Formula in text] (PLS) and [Formula in text] (MLR). Docking study was applied to investigate the major interactions in protein-ligand complex with CDOCKER algorithm. Visualization of the descriptors of the best model helps us to interpret the model from the chemical point of view, supporting the applicability of this new approach in rational drug design.
已经对一系列有效的革兰氏阴性 LpxC 抑制剂进行了准 4D-QSAR 研究。这种方法利用了从 GROMACS 包中检索到的分子动力学 (MD) 轨迹和拓扑信息。这种新方法基于为每个化合物生成构象集合轮廓 (CEP),而不是仅生成一个构象,然后在每个网格点计算考虑探针和所有来自 MD 模拟对齐构象的分子间相互作用能。这些相互作用能是 QSAR 分析中使用的自变量。将所提出的方法与比较分子场分析 (CoMFA) 形式主义进行了比较。该方法共同探索了 CoMFA 和 4D-QSAR 模型的主要特征。逐步多元线性回归用于选择信息量最大的变量。在变量选择之后,多元线性回归 (MLR) 和偏最小二乘 (PLS) 方法用于构建回归模型。采用留一法交叉验证 (LNO) 和 Y 随机化来确认模型的稳健性,此外还对独立测试集进行了分析。最佳模型提供了以下统计数据:[文本中的公式] (PLS) 和 [文本中的公式] (MLR)。 docking 研究应用于应用 CDOCKER 算法研究蛋白配体复合物中的主要相互作用。最佳模型的描述符的可视化有助于我们从化学角度解释模型,支持这种新方法在合理药物设计中的适用性。