Department of Microbiology, St. Pius X College Rajapuram, Kasaragod, Kerala, India.
Department of Biotechnology, Dayananda Sagar College of Engineering, Kumaraswamy Layout, Bengaluru, India.
Proteins. 2023 Jun;91(6):724-738. doi: 10.1002/prot.26462. Epub 2023 Jan 13.
The study aimed to screen prospective molecular targets of BCC and potential natural lead candidates as effective binders by computational modeling, molecular docking, and dynamic (MD) simulation studies. Based on the virulent functions, tRNA 5-methylaminomethyl-2-thiouridine biosynthesis bifunctional protein (mnmC) and pyrimidine/purine nucleoside phosphorylase (ppnP) were selected as the prospective molecular targets. In the absence of experimental data, the three-dimensional (3D) structures of these targets were computationally predicted. After a thorough literature survey and database search, the drug-likeness, and pharmacokinetic properties of 70 natural molecules were computationally predicted and the effectual binding of the best lead molecules against both the targets was predicted by molecular docking. The stabilities of the best-docked complexes were validated by MD simulation and the binding energy calculations were carried out by MM-GBSA approaches. The present study revealed that the hypothetical models of mnmC and ppnP showed stereochemical accuracy. The study also showed that among 70 natural compounds subjected to computational screening, Honokiol (3',5-Di(prop-2-en-1-yl) [1,1'-biphenyl]-2,4'-diol) present in Magnolia showed ideal drug-likeness, pharmacokinetic features and showed effectual binding with mnmC and ppnP (binding energies -7.3 kcal/mol and -6.6 kcal/mol, respectively). The MD simulation and GBSA calculation studies showed that the ligand-protein complexes stabilized throughout tMD simulation. The present study suggests that Honokiol can be used as a potential lead molecule against mnmC and ppnP targets of BCC and this study provides insight into further experimental validation for alternative lead development against drug resistant BCC.
本研究旨在通过计算建模、分子对接和动态(MD)模拟研究,筛选膀胱癌的潜在分子靶标和潜在天然先导候选物作为有效结合物。基于毒力功能,选择 tRNA 5-甲基氨基甲酰基-2-硫代尿嘧啶生物合成双功能蛋白(mnmC)和嘧啶/嘌呤核苷磷酸化酶(ppnP)作为潜在的分子靶标。在缺乏实验数据的情况下,通过计算预测了这些靶标的三维(3D)结构。在彻底的文献调查和数据库搜索之后,通过计算预测了 70 种天然分子的药物相似性和药代动力学特性,并通过分子对接预测了最佳先导分子对这两个靶标的有效结合。通过 MD 模拟验证了最佳对接复合物的稳定性,并通过 MM-GBSA 方法进行了结合能计算。本研究表明,mnmC 和 ppnP 的假设模型显示出立体化学准确性。研究还表明,在 70 种经过计算筛选的天然化合物中,厚朴酚(3',5-二(丙烯基-1-基)[1,1'-联苯]-2,4'-二醇)存在于木兰科中,具有理想的药物相似性、药代动力学特征,并且与 mnmC 和 ppnP 具有有效的结合(结合能分别为-7.3 kcal/mol 和-6.6 kcal/mol)。MD 模拟和 GBSA 计算研究表明,配体-蛋白质复合物在整个 tMD 模拟过程中稳定。本研究表明,厚朴酚可以作为针对膀胱癌 mnmC 和 ppnP 靶标的潜在先导分子,为进一步实验验证针对耐药膀胱癌的替代先导药物开发提供了思路。