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通过药效团建模、分子对接和分子动力学(MD)模拟方法寻找潜在有偏倚的表皮生长因子受体(EGFR)抑制剂。

Search for potentially biased epidermal growth factor receptor (EGFR) inhibitors through pharmacophore modelling, molecular docking, and molecular dynamics (MD) simulation approaches.

作者信息

Jethwa Megha, Gangopadhyay Aditi, Saha Achintya

机构信息

Department of Chemical Technology, University of Calcutta, Kolkata, India.

出版信息

J Biomol Struct Dyn. 2023 Mar;41(5):1681-1689. doi: 10.1080/07391102.2021.2023644. Epub 2022 Jan 11.

Abstract

Epidermal growth factor receptor (EGFR), being one of the most crucial receptor in cancer therapy, has been selected as a potential target for the present study. Ligand-based pharmacophore model ( = 30, =0.93 with root mean square deviation = 1.14, ΔCost = 144.27 and configuration cost = 21) was developed and validated with Fischer's randomisation (at 95% confidence), test set ( = 225, pred = 0.81), external data set ( = 13, pred = 0.95) and decoy set ( = 70), further the model has been used to search for novel EGFR inhibitors. The validated model was used for virtual screening of zinc database. A pool of 115,948 candidate molecules was screened through the model. Subsequently, molecules having predicted IC<0.2 µM were selected for screening through drug-like properties filter. Based on pharmacokinetic profile (ADMET study), Lipinski's rule of five and Veber's rule, 62 molecules were shortlisted for molecular docking. Using consensus docking, five hit molecules were selected, which were further considered for molecular dynamics simulation. Additionally MM-GBSA analysis was carried which showed that affinity of hits towards the receptor of three compound mainly ZINC305, ZINC131796 and ZINC131785 were similar to the standard vanedtinib. The simulation, performed for 100 ns, revealed that two hit molecules, namely ZINC305 and ZINC131785, showing potential interactions at the ligand-binding domain of EGFR protein with good ligand-protein stability. Communicated by Ramaswamy H. Sarma.

摘要

表皮生长因子受体(EGFR)是癌症治疗中最关键的受体之一,已被选为当前研究的潜在靶点。基于配体的药效团模型(=30,均方根偏差=1.14时=0.93,ΔCost = 144.27,构型成本 = 21)通过费舍尔随机化(95%置信度)、测试集(=225,pred = 0.81)、外部数据集(=13,pred = 0.95)和诱饵集(=70)进行开发和验证,该模型进一步用于搜索新型EGFR抑制剂。经验证的模型用于锌数据库的虚拟筛选。通过该模型筛选了115,948个候选分子。随后,选择预测IC<0.2µM的分子通过类药性质过滤器进行筛选。基于药代动力学概况(ADMET研究)、Lipinski五规则和Veber规则,62个分子入围进行分子对接。使用一致性对接,选择了五个命中分子,进一步考虑进行分子动力学模拟。此外,进行了MM-GBSA分析,结果表明三个化合物(主要是ZINC305、ZINC131796和ZINC131785)的命中物与受体的亲和力与标准凡德他尼相似。进行了100 ns的模拟,结果表明两个命中分子,即ZINC305和ZINC131785,在EGFR蛋白的配体结合域显示出潜在相互作用,且配体-蛋白稳定性良好。由Ramaswamy H. Sarma传达。

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