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用于预测P-糖蛋白抑制剂的定量构效关系和分子对接联合研究

Combined QSAR and molecule docking studies on predicting P-glycoprotein inhibitors.

作者信息

Tan Wen, Mei Hu, Chao Li, Liu Tengfei, Pan Xianchao, Shu Mao, Yang Li

机构信息

Key Laboratory of Biorheological Science and Technology, Ministry of Education, Chongqing, 400044, China.

出版信息

J Comput Aided Mol Des. 2013 Dec;27(12):1067-73. doi: 10.1007/s10822-013-9697-8. Epub 2013 Dec 10.

Abstract

P-glycoprotein (P-gp) is an ATP-binding cassette multidrug transporter. The over expression of P-gp leads to the development of multidrug resistance (MDR), which is a major obstacle to effective treatment of cancer. Thus, designing effective P-gp inhibitors has an extremely important role in the overcoming MDR. In this paper, both ligand-based quantitative structure-activity relationship (QSAR) and receptor-based molecular docking are used to predict P-gp inhibitors. The results show that each method achieves good prediction performance. According to the results of tenfold cross-validation, an optimal linear SVM model with only three descriptors is established on 857 training samples, of which the overall accuracy (Acc), sensitivity, specificity, and Matthews correlation coefficient are 0.840, 0.873, 0.813, and 0.683, respectively. The SVM model is further validated by 418 test samples with the overall Acc of 0.868. Based on a homology model of human P-gp established, Surflex-dock is also performed to give binding free energy-based evaluations with the overall accuracies of 0.823 for the test set. Furthermore, a consensus evaluation is also performed by using these two methods. Both QSAR and molecular docking studies indicate that molecular volume, hydrophobicity and aromaticity are three dominant factors influencing the inhibitory activities.

摘要

P-糖蛋白(P-gp)是一种ATP结合盒式多药转运蛋白。P-gp的过度表达导致多药耐药性(MDR)的产生,这是有效治疗癌症的主要障碍。因此,设计有效的P-gp抑制剂在克服MDR方面具有极其重要的作用。本文采用基于配体的定量构效关系(QSAR)和基于受体的分子对接来预测P-gp抑制剂。结果表明,每种方法都取得了良好的预测性能。根据十折交叉验证的结果,在857个训练样本上建立了一个仅含三个描述符的最优线性支持向量机模型,其总体准确率(Acc)、灵敏度、特异性和马修斯相关系数分别为0.840、0.873、0.813和0.683。该支持向量机模型通过418个测试样本进一步验证,总体Acc为0.868。基于所建立的人P-gp同源模型,还进行了Surflex-dock对接,以基于结合自由能进行评估,测试集的总体准确率为0.823。此外,还使用这两种方法进行了一致性评估。QSAR和分子对接研究均表明,分子体积、疏水性和芳香性是影响抑制活性的三个主要因素。

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