Qandeel Basma M, Mowafy Samar, Abouzid Khaled, Farag Nahla A
Pharmaceutical Chemistry Department, Faculty of Pharmacy, Misr International University, Km28 Cairo-Ismailia Road, Ahmed Orabi District, Cairo, Egypt.
Department of Pharmaceutical Chemistry, College of Pharmacy, Ain-Shams University, Abbasia, 11566, Egypt.
BMC Chem. 2024 Jan 20;18(1):14. doi: 10.1186/s13065-023-01110-1.
Undecaprenyl Pyrophosphate Synthase (UPPS) is a vital target enzyme in the early stages of bacterial cell wall biosynthesis. UPPS inhibitors have antibacterial activity against resistant strains such as MRSA and VRE. In this study, we used several consecutive computer-based protocols to identify novel UPPS inhibitors. The 3D QSAR pharmacophore model generation (HypoGen algorithm) protocol was used to generate a valid predictive pharmacophore model using a set of UPPS inhibitors with known reported activity. The developed model consists of four pharmacophoric features: one hydrogen bond acceptor, two hydrophobic, and one aromatic ring. It had a correlation coefficient of 0.86 and a null cost difference of 191.39, reflecting its high predictive power. Hypo1 was proven to be statistically significant using Fischer's randomization at a 95% confidence level. The validated pharmacophore model was used for the virtual screening of several databases. The resulting hits were filtered using SMART and Lipinski filters. The hits were docked into the binding site of the UPPS protein, affording 70 hits with higher docking affinities than the reference compound (6TC, - 21.17 kcal/mol). The top five hits were selected through extensive docking analysis and visual inspection based on docking affinities, fit values, and key residue interactions with the UPPS receptor. Moreover, molecular dynamic simulations of the top hits were performed to confirm the stability of the protein-ligand complexes, yielding five promising novel UPPS inhibitors.
十一异戊烯基焦磷酸合酶(UPPS)是细菌细胞壁生物合成早期阶段的一种重要靶标酶。UPPS抑制剂对耐甲氧西林金黄色葡萄球菌(MRSA)和耐万古霉素肠球菌(VRE)等耐药菌株具有抗菌活性。在本研究中,我们使用了多个连续的基于计算机的方案来鉴定新型UPPS抑制剂。使用3D QSAR药效团模型生成(HypoGen算法)方案,利用一组具有已知报道活性的UPPS抑制剂生成一个有效的预测药效团模型。所开发的模型由四个药效团特征组成:一个氢键受体、两个疏水基团和一个芳香环。其相关系数为0.86,无效成本差异为191.39,反映出其较高的预测能力。使用费舍尔随机化方法在95%置信水平下证明Hypo1具有统计学意义。经过验证的药效团模型用于对多个数据库进行虚拟筛选。使用SMART和Lipinski过滤器对得到的命中化合物进行筛选。将命中化合物对接至UPPS蛋白的结合位点,得到70个对接亲和力高于参考化合物(6TC,-21.17 kcal/mol)的命中化合物。通过基于对接亲和力、拟合值以及与UPPS受体的关键残基相互作用的广泛对接分析和目视检查,选出前五个命中化合物。此外,对前几个命中化合物进行分子动力学模拟,以确认蛋白质-配体复合物的稳定性,从而得到五种有前景的新型UPPS抑制剂。