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作为强效微管蛋白聚合抑制剂的4-取代香豆素的定量构效关系研究

A QSAR Study on the 4-Substituted Coumarins as Potent Tubulin Polymerization Inhibitors.

作者信息

Dinparast Leila, Dastmalchi Siavoush

机构信息

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

Pharmaceutical Analysis Research Center, Tabriz University of Medical Sciences, Tabriz, Iran.

出版信息

Adv Pharm Bull. 2020 Jun;10(2):271-277. doi: 10.34172/apb.2020.032. Epub 2020 Feb 18.

Abstract

Despite the discovery and synthesis of several anticancer drugs, cancer is still a major life threatening incident for human beings after cardiovascular diseases. Toxicity, severe side effects, and drug resistance are serious problems of available commercial anticancer drugs. Coumarins are synthetic and natural heterocycles that show promising antiproliferative activities against various tumors. The aim of this research is to computationally study the coumarin derivatives in order to develop reliable quantitative structure-activity relationship (QSAR) models for predicting their anticancer activities. A data set of thirty one coumarin analogs with significant antiproliferative activities toward HepG2 cells were selected from the literature. The molecular descriptors for these compounds were calculated using Dragon, HyperChem, and ACD/Labs programs. Genetic algorithm (GA) accompanied by multiple linear regression (MLR) for simultaneous feature selection and model development was employed for generating the QSAR models. Based on the obtained results, the developed linear QSAR models with three and four descriptors showed good predictive power with r2 values of 0.670 and 0.692, respectively. Moreover, the calculated validation parameters for the models confirmed the reliability of the QSAR models. The findings of the current study could be useful for the design and synthesis of novel anticancer drugs based on coumarin structure.

摘要

尽管已经发现并合成了几种抗癌药物,但癌症仍然是继心血管疾病之后对人类生命构成重大威胁的事件。毒性、严重的副作用和耐药性是现有商业抗癌药物的严重问题。香豆素是合成的和天然的杂环化合物,对各种肿瘤显示出有前景的抗增殖活性。本研究的目的是通过计算研究香豆素衍生物,以开发可靠的定量构效关系(QSAR)模型来预测它们的抗癌活性。从文献中选择了一组对HepG2细胞具有显著抗增殖活性的31种香豆素类似物。使用Dragon、HyperChem和ACD/Labs程序计算这些化合物的分子描述符。采用遗传算法(GA)结合多元线性回归(MLR)进行同时特征选择和模型开发,以生成QSAR模型。基于所得结果,具有三个和四个描述符的所开发线性QSAR模型显示出良好的预测能力,r2值分别为0.670和0.692。此外,为模型计算的验证参数证实了QSAR模型 的可靠性。本研究的结果可能有助于基于香豆素结构设计和合成新型抗癌药物。

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