Halder Debojyoti, Das Subham, R Aiswarya, R S Jeyaprakash
Department of Pharmaceutical Chemistry, Manipal College of Pharmaceutical Sciences, Manipal Academy of Higher Education Manipal Karnataka-576104 India
RSC Adv. 2022 Aug 3;12(33):21452-21467. doi: 10.1039/d2ra03451d. eCollection 2022 Jul 21.
Non-small cell lung cancer (NSCLC) is an obscure disease whose incidence is increasing worldwide day by day, and PI3Kα is one of the major targets for cell proliferation due to the mutation. Since PI3K is a class of kinase enzyme, and no research has been performed on the inhibition of PI3Kα mutation by small molecules, we have selected the protein kinase inhibitor database and performed the energy minimization process by ligand preparation. The key objective of this research is to identify the potential hits from the protein kinase inhibitor library and further to perform lead optimization by a molecular docking and dynamics approach. And so, the protein was selected (PDB ID: 4JPS), having a unique inhibitor and a specific binding pocket with amino acid residue for the inhibition of kinase activity. After the docking protocol validation, structure-based virtual screening by molecular docking and MMGBSA binding affinity calculations were performed and a total of ten hits were reported. Detailed analysis of the best scoring molecules was performed with ADMET analysis, induced fit docking (IFD) and molecular dynamics (MD) simulation. Two molecules - 6943 and 34100 - were considered lead molecules and showed better results than the PI3K inhibitor Copanlisib in the docking assessment, ADMET analysis, and molecular dynamics simulation. Furthermore, the synthetic accessibility of the two compounds - 6943 and 34100 - was investigated using SwissADME, and the two lead molecules are easier to synthesize than the PI3K inhibitor Copanlisib. Computational drug discovery tools were used for identification of kinase inhibitors as anti-cancer agents for NSCLC in the present research.
非小细胞肺癌(NSCLC)是一种隐匿性疾病,其发病率在全球范围内日益上升,而PI3Kα因突变成为细胞增殖的主要靶点之一。由于PI3K是一类激酶,且尚未有关于小分子抑制PI3Kα突变的研究,我们选择了蛋白激酶抑制剂数据库,并通过配体制备进行能量最小化处理。本研究的主要目标是从蛋白激酶抑制剂库中识别潜在的活性化合物,并进一步通过分子对接和动力学方法进行先导优化。因此,选择了一种蛋白质(PDB ID:4JPS),它具有独特的抑制剂和一个特定的结合口袋,带有用于抑制激酶活性的氨基酸残基。在对接协议验证后,通过分子对接和MMGBSA结合亲和力计算进行基于结构的虚拟筛选,共报告了10个活性化合物。使用ADMET分析、诱导契合对接(IFD)和分子动力学(MD)模拟对得分最高的分子进行了详细分析。在对接评估、ADMET分析和分子动力学模拟中,6943和34100这两个分子被认为是先导分子,且表现优于PI3K抑制剂库潘利西布。此外,使用SwissADME研究了6943和34100这两种化合物的合成可及性,这两个先导分子比PI3K抑制剂库潘利西布更容易合成。在本研究中,使用计算药物发现工具来识别激酶抑制剂作为NSCLC的抗癌药物。