Investigating Structural Requirements of Some Pyrimidine-linked Benzimidazole Derivatives as Anticancer Agents Against MCF-7 Cancerous Cell Line Through the use of 2D and 3D QSARs

K. Mayura, S. L. Khan, Hature Jyoti
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引用次数: 1

Abstract

Cancer is an extremely fast, unrestrained and pathological propagation of cells. Yet there is no cancer treatment that is 100% efficient against scattered cancer. Heterocycles have been considered as a boon to treat several cancers of which pyrimidine is a core nucleus and holds an important place in cancer chemotherapy which is reflected in the use of drugs such as 5-fluorouracil, erlotinib, gefitinib and caneratinib. Also, many good antitumor active agents possess benzimidazoleas its core nucleus. To design novel pyrimidine-linked benzimidazoles and to explore their structural requirements related to anticancer potential. 2D and 3D Quantitative structure–activity relationship (QSAR) studies were carried out on a series of already synthesized 27 pyrimidine-benzimidazole derivatives. Statistically significant and optimum 2D-QSAR model was developed by using step-wise variable multiple linear regression method, yielding correlation coefficient r2 = 0.89, cross-validated squared correlation coefficient q2 = 0.79 and external predictive ability of pred_r2 = 0.73 Best 3D-QSAR model was developed by employing molecular field analysis using step-wise variable k-nearest neighbor method which showed good correlative and predictive abilities in terms of q2 =0.77 and pred_r2= 0.93. These 2D and 3D models were found to give dependable indications which helped to optimize the pyrimidine-benzimidazole derivatives of the data set. The data yielded by 2D- QSAR and 3D-QSAR models will aid in giving better perceptions about structural requirements for developing newer anticancer agents.
通过使用2D和3D QSARs研究一些嘧啶连接的苯并咪唑衍生物作为抗癌剂对MCF-7癌细胞系的结构要求
癌症是一种极快的、无限制的、病态的细胞繁殖。然而,没有一种癌症治疗方法对分散的癌症100%有效。杂环化合物被认为是治疗以嘧啶为核心的几种癌症的一种福利,在癌症化疗中占有重要地位,这体现在5-氟尿嘧啶、厄洛替尼、吉非替尼和caneratinib等药物的使用上。此外,许多良好的抗肿瘤药物都含有苯并咪唑作为其核心核。设计新型嘧啶连接的苯并咪唑并探索其抗癌潜力的结构要求。对一系列已合成的27个嘧啶-苯并咪唑衍生物进行了二维和三维定量构效关系(QSAR)研究。采用步进变量多元线性回归方法建立最佳2D-QSAR模型,相关系数r2= 0.89,交叉验证平方相关系数q2 = 0.79, pred_r2的外部预测能力= 0.73。采用步进变量k近邻法进行分子场分析,q2 =0.77, pred_r2= 0.93,具有良好的相关和预测能力。发现这些2D和3D模型给出了可靠的指示,这有助于优化数据集的嘧啶-苯并咪唑衍生物。2D- QSAR和3D-QSAR模型产生的数据将有助于更好地了解开发新型抗癌药物的结构要求。
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来源期刊
Current Chemical Biology
Current Chemical Biology Medicine-Biochemistry (medical)
CiteScore
1.40
自引率
0.00%
发文量
16
期刊介绍: Current Chemical Biology aims to publish full-length and mini reviews on exciting new developments at the chemistry-biology interface, covering topics relating to Chemical Synthesis, Science at Chemistry-Biology Interface and Chemical Mechanisms of Biological Systems. Current Chemical Biology covers the following areas: Chemical Synthesis (Syntheses of biologically important macromolecules including proteins, polypeptides, oligonucleotides, oligosaccharides etc.; Asymmetric synthesis; Combinatorial synthesis; Diversity-oriented synthesis; Template-directed synthesis; Biomimetic synthesis; Solid phase biomolecular synthesis; Synthesis of small biomolecules: amino acids, peptides, lipids, carbohydrates and nucleosides; and Natural product synthesis).
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