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使用混合计算方法对新型表皮生长因子受体激酶突变体选择性抑制剂进行计算机模拟探索

In Silico Exploration of Novel EGFR Kinase Mutant-Selective Inhibitors Using a Hybrid Computational Approach.

作者信息

Noor Md Ali Asif, Haq Md Mazedul, Chowdhury Md Arifur Rahman, Tayara Hilal, Shim HyunJoo, Chong Kil To

机构信息

Department of Electronics and Information Engineering, Jeonbuk National University, Jeonju 54896, Republic of Korea.

Research Center of Bioactive Materials, Department of Bioactive Material Sciences, Division of Life Sciences (Molecular Biology Major), Jeonbuk National University, Jeonju 54896, Republic of Korea.

出版信息

Pharmaceuticals (Basel). 2024 Aug 23;17(9):1107. doi: 10.3390/ph17091107.

Abstract

Targeting epidermal growth factor receptor (EGFR) mutants is a promising strategy for treating non-small cell lung cancer (NSCLC). This study focused on the computational identification and characterization of potential EGFR mutant-selective inhibitors using pharmacophore design and validation by deep learning, virtual screening, ADMET (Absorption, distribution, metabolism, excretion and toxicity), and molecular docking-dynamics simulations. A pharmacophore model was generated using Pharmit based on the potent inhibitor JBJ-125, which targets the mutant EGFR (PDB 5D41) and is used for the virtual screening of the Zinc database. In total, 16 hits were retrieved from 13,127,550 molecules and 122,276,899 conformers. The pharmacophore model was validated via DeepCoy, generating 100 inactive decoy structures for each active molecule and ADMET tests were conducted using SWISS ADME and PROTOX 3.0. Filtered compounds underwent molecular docking studies using Glide, revealing promising interactions with the EGFR allosteric site along with better docking scores. Molecular dynamics (MD) simulations confirmed the stability of the docked conformations. These results bring out five novel compounds that can be evaluated as single agents or in combination with existing therapies, holding promise for treating the EGFR-mutant NSCLC.

摘要

靶向表皮生长因子受体(EGFR)突变体是治疗非小细胞肺癌(NSCLC)的一种有前景的策略。本研究聚焦于使用深度学习进行药效团设计与验证、虚拟筛选、ADMET(吸收、分布、代谢、排泄和毒性)以及分子对接-动力学模拟,对潜在的EGFR突变体选择性抑制剂进行计算识别和表征。基于靶向突变型EGFR(PDB 5D41)的强效抑制剂JBJ-125,使用Pharmit生成了一个药效团模型,并用于Zinc数据库的虚拟筛选。总共从13,127,550个分子和122,276,899个构象中检索到16个命中物。通过DeepCoy对药效团模型进行验证,为每个活性分子生成100个无活性的诱饵结构,并使用SWISS ADME和PROTOX 3.0进行ADMET测试。经过筛选的化合物使用Glide进行分子对接研究,结果显示它们与EGFR别构位点有良好的相互作用,并且对接分数更高。分子动力学(MD)模拟证实了对接构象的稳定性。这些结果筛选出了五种新型化合物,它们可作为单一药物或与现有疗法联合进行评估,有望用于治疗EGFR突变型NSCLC。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/065b/11434943/06f72abde5ca/pharmaceuticals-17-01107-g001.jpg

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