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1,4 - 二氢吡啶衍生物作为抗癌剂的对接和定量构效关系研究

Docking and QSAR Studies of 1,4-Dihydropyridine Derivatives as Anti- Cancer Agent.

作者信息

Mollazadeh Shirin, Shamsara Jamal, Iman Maryam, Hadizadeh Farzin

机构信息

Department of Medicinal Chemistry, School of Pharmacy, Mashhad University of Medical Sciences, Mashhad. Iran.

Pharmaceutical Research Center, School of Pharmacy, Mashhad University of Medical Sciences, Mashhad. Iran.

出版信息

Recent Pat Anticancer Drug Discov. 2017;12(2):174-185. doi: 10.2174/1574892812666170126162521.

Abstract

BACKGROUND

The multidrug resistance (MDR) of cancer cells has become a great barrier to the success of chemotherapy.

OBJECTIVE

In this study, quantitative structure activity relationship (QSAR) modeling was applied to 46 1,4-dihydropyridine structures (DHPs), and some selected compounds were docked.

METHODS

QSAR was used to generate models and predict the MDR inhibitory activity for a series of 1,4-dihydropyridines (DHP). The DHPs were built and optimized using the Sybyl program (x1.2 version). Descriptor generation was done by DRAGON package. Docking was carried out using Auto Dock 4.2 software. Multiple linear regression, and partial least square were performed as QSAR modelgeneration methods. External validation, cross-validation (leave one out) and y-randomization were used as validation methods.

RESULTS

The constructed model using stepwise-MLR and GA-PLS revealed good statistical parameters. In the final step all compounds were divided into two parts: symmetric (PLS) and asymmetric (MLR) 1,4-dihydropyridines and two other models were built. The square correlation coefficient (R2) and root mean square error (RMSE) for train set for GA-PLS were (R2 = 0.734, RMSE train = 0.26).

CONCLUSION

The predictive ability of the models was found to be satisfactory and could be employed for designing new 1,4-dihydropyridines as potent MDR inhibitors in cancer treatment. 1,4- Dihydropyridine ring containing protonable nitrogen as scaffold could be proposed. Sulfur, ester, amide, acyle, ether, fragments are connected to a 1,4-dihydropyridine ring. Phenyl groups (with an electronegative substituent) as a lipophilic part are essential for the inhibitory effect.

摘要

背景

癌细胞的多药耐药性已成为化疗成功的巨大障碍。

目的

本研究将定量构效关系(QSAR)模型应用于46种1,4 - 二氢吡啶结构(DHPs),并对一些选定的化合物进行对接。

方法

使用QSAR生成模型并预测一系列1,4 - 二氢吡啶(DHP)的多药耐药抑制活性。使用Sybyl程序(x1.2版本)构建并优化DHPs。通过DRAGON软件包生成描述符。使用Auto Dock 4.2软件进行对接。采用多元线性回归和偏最小二乘法作为QSAR模型生成方法。使用外部验证、交叉验证(留一法)和y随机化作为验证方法。

结果

使用逐步多元线性回归(stepwise - MLR)和遗传算法 - 偏最小二乘法(GA - PLS)构建的模型显示出良好的统计参数。在最后一步,所有化合物被分为两部分:对称(PLS)和不对称(MLR)1,4 - 二氢吡啶,并构建了另外两个模型。GA - PLS训练集的平方相关系数(R2)和均方根误差(RMSE)分别为(R2 = 0.734,RMSE train = 0.26)。

结论

发现模型的预测能力令人满意,可用于设计新型1,4 - 二氢吡啶作为癌症治疗中有效的多药耐药抑制剂。可以提出以含可质子化氮的1,4 - 二氢吡啶环为骨架。硫、酯、酰胺、酰基、醚片段连接到1,4 - 二氢吡啶环上。带有吸电子取代基的苯基作为亲脂部分对抑制作用至关重要。

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