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鉴定用于乳腺癌药物研发的新型强效表皮生长因子受体(EGFR)蛋白抑制剂。

Identifying novel and potent inhibitors of EGFR protein for the drug development against the breast cancer.

作者信息

Siddiqui Arif Jamal, Jahan Sadaf, Patel Mitesh, Abdelgadir Abdelmushin, Alturaiki Wael, Bardakci Fevzi, Sachidanandan Manojkumar, Badraoui Riadh, Snoussi Mejdi, Adnan Mohd

机构信息

Department of Biology, College of Science, University of Ha'il, Ha'il, Saudi Arabia.

Department of Medical Laboratory Sciences, College of Applied Medical Sciences, Majmaah University Al Majmaah, Saudi Arabia.

出版信息

J Biomol Struct Dyn. 2023;41(23):14460-14472. doi: 10.1080/07391102.2023.2181646. Epub 2023 Feb 24.

DOI:10.1080/07391102.2023.2181646
PMID:36826428
Abstract

The epidermal growth factor receptor (EGFR) has been shown to be extremely important in numerous signaling pathways, particularly those involved in cancer progression. Many therapeutic inhibitors, consisting of both small molecules and monoclonal antibodies, have been developed to target inflammatory, triple-negative and metastatic breast cancer. With the emergence of resistance in breast cancer treatment strategies, there is a need to develop novel drug targets that not only overcome resistance, but also exhibit low toxicity and high specificity. The work presented here focuses on the identification of new inhibitors against the EGFR protein using combined computational approaches. Using a comprehensive machine learning-based virtual screening approach complemented by other computational approaches, we identified six new molecules from the ZINC database. The gold docking score of these six novel molecules is 125.95, 125.38, 123.13, 119.71, 115.64 and 113.73, respectively, while the gold score of the control group is 120.74. In addition, we also analyzed the FEC value of these compounds and found that the values of compounds 1, 2, 3 and 4 (-61.82, -63.98, -67.98 and -63.32, respectively) were higher are than those of the control group (-61.05). Furthermore, these molecules showed highly stable RMSD plots and good interaction of hydrogen bonds. The identified inhibitors provided interesting insights for understanding the electronic, hydrophobic, steric and structural requirements for EGFR inhibitory activity. Distinguishing these novel molecules could lead to the development of new drugs useful in treating breast cancer.Communicated by Ramaswamy H. Sarma.

摘要

表皮生长因子受体(EGFR)已被证明在众多信号通路中极为重要,尤其是那些参与癌症进展的信号通路。已经开发出许多由小分子和单克隆抗体组成的治疗性抑制剂,用于靶向炎症性、三阴性和转移性乳腺癌。随着乳腺癌治疗策略中耐药性的出现,需要开发新的药物靶点,这些靶点不仅能克服耐药性,还具有低毒性和高特异性。本文介绍的工作重点是使用组合计算方法鉴定针对EGFR蛋白的新抑制剂。通过基于机器学习的综合虚拟筛选方法,并辅以其他计算方法,我们从ZINC数据库中鉴定出六个新分子。这六个新分子的黄金对接分数分别为125.95、125.38、123.13、119.71、115.64和113.73,而对照组的黄金分数为120.74。此外,我们还分析了这些化合物的FEC值,发现化合物1、2、3和4的值(分别为-61.82、-63.98、-67.98和-63.32)高于对照组(-61.05)。此外,这些分子显示出高度稳定的RMSD图和良好的氢键相互作用。鉴定出的抑制剂为理解EGFR抑制活性的电子、疏水、空间和结构要求提供了有趣的见解。区分这些新分子可能会导致开发出用于治疗乳腺癌的新药。由拉马斯瓦米·H·萨尔马传达。

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