Alanzi Abdullah R, Moussa Ashaimaa Y, Alsalhi Mohammed S, Nawaz Tayyab, Ali Ijaz
Department of Pharmacognosy, College of Pharmacy, King Saud University, Riyadh, Saudi Arabia.
Faculty of Pharmacy, Department of Pharmacognosy, Ain-Shams University, Cairo, Egypt.
PLoS One. 2024 Dec 9;19(12):e0311527. doi: 10.1371/journal.pone.0311527. eCollection 2024.
The epidermal growth factor receptor (EGFR), a crucial component of cellular signaling pathways, is frequently dysregulated in a range of cancers. EGFR targeting has become a viable approach in the development of anti-cancer medications. This study employs an integrated approach to drug discovery, combining multiple computational methodologies to identify potential EGFR inhibitors. The co-crystal ligand for the EGFR protein (R85) (PDB ID: 7AEI) was employed as a model for developing pharmacophore hypotheses. Nine databases underwent a ligand-based virtual screening, and 1271 hits meeting the screening criteria were chosen. EGFR protein crystal structure was obtained from the PDB database (PDB ID: 7AEI) and prepared. The hit compounds identified during virtual screening were docked to the prepared EGFR receptor to predict binding affinities by using the glide tool's standard precision mode. The top ten compounds were chosen, and their affinities of binding ranged from -7.691 to -7.338 kcal/mol. The ADMET properties of the selected compounds were predicted, and three compounds MCULE-6473175764, CSC048452634, and CSC070083626 showed better QPPCaco values compared to other identified compounds, so these were selected for further stability analysis. To confirm the stability of the protein-ligand complexes, a 200 ns molecular dynamics (MD) simulation was run using the binding sites of the top three compounds against the EGFR receptor. These results suggest that the selected compounds may be lead compounds in suppressing the biological activity of EGFR, additional experimental investigation is required.
表皮生长因子受体(EGFR)是细胞信号通路的关键组成部分,在一系列癌症中经常出现失调。靶向EGFR已成为抗癌药物开发中的一种可行方法。本研究采用综合药物发现方法,结合多种计算方法来识别潜在的EGFR抑制剂。EGFR蛋白的共晶体配体(R85)(PDB ID:7AEI)被用作开发药效团假设的模型。对九个数据库进行了基于配体的虚拟筛选,选择了1271个符合筛选标准的命中物。从PDB数据库(PDB ID:7AEI)获得并制备了EGFR蛋白晶体结构。在虚拟筛选过程中鉴定出的命中化合物使用Glide工具的标准精度模式对接至制备好的EGFR受体,以预测结合亲和力。选择了排名前十的化合物,它们的结合亲和力范围为-7.691至-7.338 kcal/mol。预测了所选化合物的ADMET性质,与其他鉴定出的化合物相比,三种化合物MCULE-6473175764、CSC048452634和CSC070083626显示出更好的QPPCaco值,因此选择这些化合物进行进一步的稳定性分析。为了确认蛋白质-配体复合物的稳定性,使用排名前三的化合物与EGFR受体的结合位点进行了200 ns的分子动力学(MD)模拟。这些结果表明,所选化合物可能是抑制EGFR生物学活性的先导化合物,还需要进行额外的实验研究。