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组蛋白去乙酰化酶1选择性抑制剂的3D-QSAR(比较分子场分析、比较分子相似性指数分析)及分子对接研究

3D-QSAR (CoMFA, CoMSIA) and Molecular Docking Studies on Histone Deacetylase 1 Selective Inhibitors.

作者信息

Abdizadeh Tooba, Ghodsi Razieh, Hadizadeh Farzin

机构信息

Clinical Biochemistry Research Center, Basic Health Sciences Institute, Shahrekord University of Medical Sciences, Shahrekord, Iran.

Biotechnology Research Center, Mashhad University of Medical Sciences, Mashhad, Iran.

出版信息

Recent Pat Anticancer Drug Discov. 2017 Nov 20;12(4):365-383. doi: 10.2174/1574892812666170508125927.

Abstract

BACKGROUND

Histone deacetylases (HDACs) are attractive therapeutic targets for the treatment of cancer and other diseases. There are numerous published patent applications till 2017. It was claimed that novel HDACIs were optimized as potential drug candidates, designed for regional or systemic release, and created as significant inhibitors.

OBJECTIVE

In the present study, 3D-QSAR and molecular docking were used to provide a theoretical basis for finding highly potent anti-tumor drugs.

METHODS

QSAR was used to generate models and predict the HDAC1 inhibitory activity using the Sybyl program (x1.2 version). Biaryl benzamides (n=73) as selective HDAC1 inhibitors were selected as our data set, which was split randomly into training (n=63) and test sets (n=10). Docking was carried out using the MOE software. Partial least square was used as QSAR model-generation method. External validation and cross-validation (leave-one-out and leave-10-out) were used as validation methods.

RESULTS

Both CoMFA (q2, 0.663; rncv 2 , 0.909) and CoMSIA models (q2, 0.628; rncv 2 , 0.877) for training set yielded significant statistical results. The predictive ability of the derived models was examined by a test set of 10 compounds and external validation results displayed rpred 2 and rm 2 values of 0.767 and 0.664 for CoMFA and 0.722 and 0.750 for CoMSIA, respectively.

CONCLUSION

The obtained models showed a good predictive ability in both internal and external validation and could be used for designing new biaryl benzamides as potent HDAC1 inhibitors in cancer treatment. The amido and amine groups of benzamide part as scaffold and the bulk groups as a hydrophobic part were key factors to improve inhibitory activity of HDACIs.

摘要

背景

组蛋白去乙酰化酶(HDACs)是治疗癌症和其他疾病的有吸引力的治疗靶点。截至2017年有大量已发表的专利申请。据称,新型HDAC抑制剂已被优化为潜在的药物候选物,设计用于局部或全身释放,并被创制为强效抑制剂。

目的

在本研究中,使用三维定量构效关系(3D-QSAR)和分子对接为寻找高效抗肿瘤药物提供理论依据。

方法

使用Sybyl程序(x1.2版本)通过定量构效关系生成模型并预测HDAC1抑制活性。选择作为选择性HDAC1抑制剂的联芳基苯甲酰胺(n = 73)作为我们的数据集,将其随机分为训练集(n = 63)和测试集(n = 10)。使用MOE软件进行对接。偏最小二乘法用作QSAR模型生成方法。外部验证和交叉验证(留一法和留十法)用作验证方法。

结果

训练集的比较分子场分析(CoMFA)(q2,0.663;rncv2,0.909)和比较分子相似性指数分析(CoMSIA)模型(q2,0.628;rncv2,0.877)均产生了显著的统计结果。通过10种化合物的测试集检验所得模型的预测能力,外部验证结果显示CoMFA的rpred2和rm2值分别为0.767和0.664,CoMSIA的rpred2和rm2值分别为0.722和0.750。

结论

所得模型在内部和外部验证中均显示出良好的预测能力,可用于设计新型联芳基苯甲酰胺作为癌症治疗中强效的HDAC1抑制剂。作为骨架的苯甲酰胺部分的酰胺基和胺基以及作为疏水部分的体积较大的基团是提高HDAC抑制剂抑制活性的关键因素。

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