Agarwal Subhash M, Nandekar Prajwal, Saini Ravi
Bioinformatics Division, ICMR-National Institute of Cancer Prevention and Research I-7, Sector-39 Noida-201301 India
Molecular and Cellular Modeling Group, Heidelberg Institute for Theoretical Studies (HITS) Schloss-Wolfsbrunnenweg 35 69118 Heidelberg Germany.
RSC Adv. 2022 Jun 7;12(26):16779-16789. doi: 10.1039/d2ra00373b. eCollection 2022 Jun 1.
Double mutated epidermal growth factor receptor is a clinically important target for addressing drug resistance in lung cancer treatment. Therefore, discovering new inhibitors against the T790M/L858R (TMLR) resistant mutation is ongoing globally. In the present study, nearly 150 000 molecules from various natural product libraries were screened by employing different ligand and structure-based techniques. Initially, the library was filtered to identify drug-like molecules, which were subjected to a machine learning based classification model to identify molecules with a higher probability of having anti-cancer activity. Simultaneously, rules for constrained docking were derived from three-dimensional protein-ligand complexes and thereafter, constrained docking was undertaken, followed by HYDE binding affinity assessment. As a result, three molecules that resemble interactions similar to the co-crystallized complex were selected and subjected to 100 ns molecular dynamics simulation for stability analysis. The interaction analysis for the 100 ns simulation period showed that the leads exhibit the conserved hydrogen bond interaction with Gln791 and Met793 as in the co-crystal ligand. Also, the study indicated that Y-shaped molecules are preferred in the binding pocket as it enables them to occupy both pockets. The MMGBSA binding energy calculations revealed that the molecules have comparable binding energy to the native ligand. The present study has enabled the identification of a few ADMET adherent leads from natural products that exhibit the potential to inhibit the double mutated drug-resistant EGFR.
双突变表皮生长因子受体是肺癌治疗中解决耐药性的一个重要临床靶点。因此,全球范围内正在进行针对T790M/L858R(TMLR)耐药突变的新型抑制剂的研究。在本研究中,通过采用不同的基于配体和结构的技术,对来自各种天然产物文库的近150000个分子进行了筛选。首先,对文库进行过滤以识别类药物分子,这些分子被用于基于机器学习的分类模型,以识别具有更高抗癌活性可能性的分子。同时,从三维蛋白质-配体复合物中推导约束对接规则,随后进行约束对接,接着进行HYDE结合亲和力评估。结果,选择了三个与共结晶复合物具有相似相互作用的分子,并对其进行100纳秒的分子动力学模拟以进行稳定性分析。对100纳秒模拟期的相互作用分析表明,这些先导化合物与共晶配体一样,与Gln791和Met793表现出保守的氢键相互作用。此外,研究表明,Y形分子在结合口袋中更受青睐,因为它能使它们占据两个口袋。MMGBSA结合能计算表明,这些分子与天然配体具有相当的结合能。本研究已从天然产物中鉴定出一些符合ADMET标准的先导化合物,它们具有抑制双突变耐药性EGFR的潜力。