Laboratory of Natural Substances, Pharmacology, Environment, Modeling, Health & Quality of Life (SNAMOPEQ), Polydisciplinary Faculty of Taza, Sidi Mohamed Ben Abdellah University of Fez, Taza Gare, B.P 1223, Taza, Morocco.
J Mol Model. 2022 May 12;28(6):145. doi: 10.1007/s00894-022-05143-6.
Human phosphatidylethanolamine binding protein 1 (hPEBP1) is a novel target affecting many cellular signaling pathways involved in the formation of metastases. It can be used in the treatment of many cases of cancer. For these reasons, pharmaceutical companies use computational approaches, including multi-QSAR (2D, 3D, and hologram QSAR) analysis, homology modeling, molecular docking analysis, and molecular dynamic simulations, to speed up the drug discovery process. In this paper, QSAR modeling was conducted using two quantum chemistry optimization methods (AM1 and DFT levels). As per PLS results, we found that the DFT/B3LYP method presents high predictability according to 2D-QSAR, CoMFA, CoMSIA, and hologram QSAR studies, with Q of 0.81, 0.67, 0.79, and 0.67, and external power with R of 0.78, 0.58, 0.66, and 0.56, respectively. This result has been validated by CoMFA/CoMSIA graphics, which suggests that electrostatic fields combined with hydrogen bond donor/acceptor fields are beneficial to the antiproliferative activity. While the hologram QSAR models show the contributions of each fragment in improving the activity. The results from QSAR analyses revealed that ursolic acids with heterocyclic rings could improve the activities. Ramachandran plot validated the modeled PEBP1 protein. Molecular docking and MD simulations revealed that the hydrophobic and hydrogen bond interactions are dominant in the PEBP1's pocket. These results were used to predict in silico structures of three new compounds with potential anticancer activity. Similar molecular docking stability studies and molecular dynamics simulations were conducted.
人磷酯乙醇胺结合蛋白 1(hPEBP1)是一种新的靶标,影响着许多参与转移形成的细胞信号通路。它可用于治疗多种癌症。出于这些原因,制药公司利用计算方法,包括多定量构效关系(2D、3D 和全息定量构效关系)分析、同源建模、分子对接分析和分子动力学模拟,来加速药物发现过程。在本文中,使用了两种量子化学优化方法(AM1 和 DFT 水平)进行 QSAR 建模。根据 PLS 结果,我们发现 DFT/B3LYP 方法在 2D-QSAR、CoMFA、CoMSIA 和全息定量构效关系研究中具有高预测性,Q 值分别为 0.81、0.67、0.79 和 0.67,外部预测性 R 值分别为 0.78、0.58、0.66 和 0.56。CoMFA/CoMSIA 图形验证了这一结果,表明静电场与氢键供体/受体场相结合有利于抗增殖活性。而全息定量构效关系模型则显示了每个片段对提高活性的贡献。QSAR 分析结果表明,具有杂环的熊果酸可以提高活性。Ramachandran 图验证了所建模的 PEBP1 蛋白。分子对接和 MD 模拟表明,疏水和氢键相互作用在 PEBP1 口袋中占主导地位。这些结果用于预测三种具有潜在抗癌活性的新化合物的计算机结构。还进行了类似的分子对接稳定性研究和分子动力学模拟。