Department of Biosciences, COMSATS University Islamabad, Islamabad, Pakistan.
Department of Chemistry, Science and Arts College, King Abdulaziz University, Jeddah, Saudi Arabia.
PeerJ. 2023 Apr 7;11:e14936. doi: 10.7717/peerj.14936. eCollection 2023.
PGAM1 plays a critical role in cancer cell metabolism through glycolysis and different biosynthesis pathways to promote cancer. It is generally known as a crucial target for treating pancreatic ductal adenocarcinoma, the deadliest known malignancy worldwide. In recent years different studies have been reported that strived to find inhibitory agents to target PGAM1, however, no validated inhibitor has been reported so far, and only a small number of different inhibitors have been reported with limited potency at the molecular level. Our studies aimed to identify potential new PGAM1 inhibitors that could bind at the allosteric sites. At first, shape and feature-based models were generated and optimized by performing receiver operating characteristic (ROC) based enrichment studies. The best query model was then employed for performing shape, color, and electrostatics complementarity-based virtual screening of the ChemDiv database. The top two hundred and thirteen hits with greater than 1.2 TanimotoCombo score were selected and then subjected to structure-based molecular docking studies. The hits yielded better docking scores than reported compounds, were selected for subsequent structural similarity-based clustering analysis to select the best hits from each cluster. Molecular dynamics simulations and binding free energy calculations were performed to validate their plausible binding modes and their binding affinities with the PGAM1 enzyme. The results showed that these compounds were binding in the reported allosteric site of the enzyme and can serve as a good starting point to design better active selective scaffolds against PGAM1enzyme.
PGAM1 通过糖酵解和不同的生物合成途径在癌细胞代谢中发挥关键作用,促进癌症的发生。它通常被认为是治疗胰腺导管腺癌的关键靶点,胰腺导管腺癌是全球最致命的恶性肿瘤之一。近年来,有不同的研究报告试图寻找靶向 PGAM1 的抑制剂,但到目前为止还没有报道有效的抑制剂,只有少数不同的抑制剂在分子水平上显示出有限的效力。我们的研究旨在确定可能与别构位点结合的潜在新的 PGAM1 抑制剂。首先,通过进行基于接收者操作特征 (ROC) 的富集研究来生成和优化形状和基于特征的模型。然后,将最佳查询模型用于对 ChemDiv 数据库进行形状、颜色和静电互补性的虚拟筛选。选择得分大于 1.2 TanimotoCombo 的前 213 个命中物,然后进行基于结构的分子对接研究。命中物的对接得分优于报道的化合物,被选择用于随后的基于结构相似性的聚类分析,以从每个簇中选择最佳命中物。进行分子动力学模拟和结合自由能计算,以验证它们可能的结合模式及其与 PGAM1 酶的结合亲和力。结果表明,这些化合物结合在酶的报道的别构位点上,可以作为设计针对 PGAM1 酶的更好的活性选择性支架的良好起点。