首页> 外文期刊>Journal of the Iranian Chemical Society >Pharmacophore interactions analysis and prediction of inhibitory activity of 1,7-diazacarbazoles as checkpoint kinase 1 inhibitors: application of molecular docking, 3D-QSAR and RBF neural network
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Pharmacophore interactions analysis and prediction of inhibitory activity of 1,7-diazacarbazoles as checkpoint kinase 1 inhibitors: application of molecular docking, 3D-QSAR and RBF neural network

机译:1,7-二氮杂咔唑作为检查点激酶1抑制剂的药效学相互作用分析和抑制活性预测:分子对接,3D-QSAR和RBF神经网络的应用

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In the present study, we mainly focused on new synthesized 1,7-diazacarbazole derivatives (44 active molecules) as Chk1 inhibitors to build 3D-QSAR model. Comparative molecular field analysis (CoMFA) model with three principal components was developed. The relative contributions in building of CoMFA model were 64.41 % for steric field and 35.59 % for electrostatic field. R (2) values for training and test sets of CoMFA model were 0.8724 and 0.7818, respectively, and squared correlation coefficient for leave-one-out cross-validation test (q (2)) was 0.6753. To improve the predictive power, a new 3D-QSAR model was developed by using radial basis function network (RBFN) and score of CoMFA interactions energy values as input variables. Scores 1, 2 and 3 were used as input variables, and a RBFN model with seven centers and spread value equal to 95 was developed to create a nonlinear 3D-QSAR model. R (2) values for training and test sets were 0.9613 and 0.8564, and q (2) for leave-one-out cross-validation test was 0.9258. Docking of all molecules to 3DX ligand binding site of Chk1 receptor indicated six interactions as pharmacological interactions between compounds and binding site of receptors. These pharmacological interactions were hydrogen bonding with LEU-15 and GLU-85 in main chain and four van der Waals interactions with LEU-15, VAL-23, TYR-86 and LEU-137 in side chain. CoMFA contour plots were used to design new inhibitors, and inhibitory activity of each compound was predicted by using CoMFA and RBFN models.
机译:在本研究中,我们主要研究了新合成的1,7-二氮杂咔唑衍生物(44个活性分子)作为Chk1抑制剂,以建立3D-QSAR模型。建立了具有三个主要成分的比较分子场分析(CoMFA)模型。建立CoMFA模型的相对贡献对于空间场为64.41%,对于静电场为35.59%。 CoMFA模型的训练集和测试集的R(2)值分别为0.8724和0.7818,留一法交叉验证测试的平方相关系数(q(2))为0.6753。为了提高预测能力,通过使用径向基函数网络(RBFN)和CoMFA交互作用能量值的得分作为输入变量,开发了一个新的3D-QSAR模型。将得分1、2和3用作输入变量,并开发了一个具有七个中心且扩散值等于95的RBFN模型,以创建非线性3D-QSAR模型。训练和测试集的R(2)值为0.9613和0.8564,留一法交叉验证测试的q(2)为0.9258。将所有分子对接至Chk1受体的3DX配体结合位点,表明六种相互作用是化合物与受体结合位点之间的药理相互作用。这些药理作用是在主链中与LEU-15和GLU-85形成氢键,在侧链中与LEU-15,VAL-23,TYR-86和LEU-137发生四个范德华相互作用。使用CoMFA等高线图设计新的抑制剂,并使用CoMFA和RBFN模型预测每种化合物的抑制活性。

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