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基于配体的喹唑啉-4(3H)-酮类化合物作为乳腺癌抑制剂的药物设计:使用 QSAR 建模、分子对接和药理学分析。

Ligand-based drug design of quinazolin-4(3H)-ones as breast cancer inhibitors using QSAR modeling, molecular docking, and pharmacological profiling.

机构信息

Department of Chemistry, Faculty of Physical Sciences, Ahmadu Bello University, Zaria, Kaduna State, P.M.B.1045, Nigeria.

出版信息

J Egypt Natl Canc Inst. 2023 Aug 7;35(1):24. doi: 10.1186/s43046-023-00182-3.

Abstract

BACKGROUND

Breast cancer is the most common tumor among females globally. Its prevalence is growing around the world, and it is alleged to be the leading cause of cancer death. Approved anti-breast cancer drugs display several side effects and resistance during the early treatment stage. Hence, there is a need for the development of more effective and safer drugs. This research was aimed at designing more potent quinazolin-4(3H)-one molecules as breast cancer inhibitors using a ligand-based design approach, studying their modes of interaction with the target enzyme using molecular docking simulation, and predicting their pharmacological properties.

METHODS

The QSAR model was developed using a series of quinazoline-4(3H)-one derivatives by utilizing Material Studio v8.0 software and validated both internally and externally. Applicability domain virtual screening was utilized in selecting the template molecule, which was structurally modified to design more potent molecules. The inhibitive capacities of the design molecules were predicted using the developed model. Furthermore, molecular docking was performed with the EGFR target active site residues, which were obtained from the protein data bank online server (PDB ID: 2ITO) using Molegro Virtual Docker (MVD) software. SwissADME and pkCSM online sites were utilized in predicting the pharmacological properties of the designed molecules.

RESULTS

Four QSAR models were generated, and the first model was selected due to its excellent internal and external statistical parameters as follows: R = 0.919, R = 0.898, Q = 0.819, and R = 0.7907. The robustness of the model was also confirmed by the result of the Y-scrambling test performed with cRp = 0.7049. The selected model was employed to design seven molecules, with compound 4 (pIC = 5.18) adopted as the template. All the designed compounds exhibit better activities ranging from pIC = 5.43 to 5.91 compared to the template and Doruxybucin (pIC = 5.35). The results of molecular docking revealed better binding with the EGFR target compared with the template and Doruxybucin. The designed compounds exhibit encouraging therapeutic applicability, as evidenced by the findings of pharmacological property prediction.

CONCLUSIONS

The designed derivatives could be utilized as novel anti-breast cancer agents.

摘要

背景

乳腺癌是全球女性中最常见的肿瘤。其发病率在全球范围内呈上升趋势,据称是癌症死亡的主要原因。已批准的抗乳腺癌药物在早期治疗阶段显示出多种副作用和耐药性。因此,需要开发更有效和更安全的药物。本研究旨在通过基于配体的设计方法设计更有效的喹唑啉-4(3H)-酮分子作为乳腺癌抑制剂,使用分子对接模拟研究它们与靶酶相互作用的模式,并预测它们的药理学性质。

方法

使用一系列喹唑啉-4(3H)-酮衍生物通过利用 Materials Studio v8.0 软件来开发 QSAR 模型,并通过内部和外部进行验证。适用性域虚拟筛选用于选择模板分子,对其进行结构修饰以设计更有效的分子。使用开发的模型预测设计分子的抑制能力。此外,使用 Molegro Virtual Docker (MVD) 软件从在线蛋白质数据库 (PDB ID:2ITO) 获取 EGFR 靶标活性位点残基进行分子对接。利用 SwissADME 和 pkCSM 在线网站预测设计分子的药理学性质。

结果

生成了四个 QSAR 模型,选择了第一个模型,因为其内部和外部统计参数都非常优秀,如下所示:R=0.919,R=0.898,Q=0.819,R=0.7907。通过 cRp=0.7049 的 Y 乱序测试也证实了模型的稳健性。采用所选模型设计了七个分子,以化合物 4(pIC=5.18)为模板。所有设计的化合物均表现出更好的活性,与模板和 Doruxybucin(pIC=5.35)相比,其活性范围为 pIC=5.43-5.91。分子对接的结果显示与 EGFR 靶标具有更好的结合,优于模板和 Doruxybucin。通过药理学性质预测的结果表明,设计的化合物具有令人鼓舞的治疗适用性。

结论

设计的衍生物可用作新型抗乳腺癌药物。

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