Kumar Sandeep, Ayyannan Senthil Raja
Pharmaceutical Chemistry Research Laboratory II, Department of Pharmaceutical Engineering and Technology, Indian Institute of Technology (BHU), Varanasi, India.
J Biomol Struct Dyn. 2023 Aug-Sep;41(14):6789-6810. doi: 10.1080/07391102.2022.2112082. Epub 2022 Aug 18.
The discovery of a safe and efficacious drug is a complex, time-consuming, and expensive process. Computational methodologies driven by cheminformatics tools play a central role in the high-throughput lead discovery and optimization process especially when the structure of the biological target is known. Monoamine oxidases are the membrane-bound FAD-containing enzymes and the isoform monoamine oxidase-B (MAO-B) is an attractive target for treating diseases like Alzheimer's disease, Parkinson's disease, glioma, etc. In the current study, we have used a pharmacophore-based virtual screening technique for the identification of new small molecule MAO-B inhibitors. Safinamide was used for building a pharmacophore model and the developed model was used to probe the ZINC database for potential hits. The obtained hits were filtered against drug-likeness and PAINS. Out of the hit's library, two compounds ZINC02181408, ZINC08853942 (most active), and ZINC53327382 (least active) were further subjected to molecular docking and dynamics simulation studies to assess their virtual binding affinities and stability of the resultant protein-ligand complex. The docking studies revealed that active ligands were well accommodated within the active site of MAO-B and interacted with both substrate and entrance cavity residues. MD simulation studies unveiled additional hydrogen bond interactions with the substrate cavity residues, Tyr398 and Tyr435 that are crucial for the catalytic role of MAO-B. Moreover, the predicted ADMET parameters suggest that the compounds ZINC08853942 and ZINC02181408 are suitable for CNS penetration. Thus, the attempted computational campaign yielded two potential MAO-B inhibitors that merit further experimental investigation.Communicated by Ramaswamy H. Sarma.
发现一种安全有效的药物是一个复杂、耗时且昂贵的过程。由化学信息学工具驱动的计算方法在高通量先导化合物发现和优化过程中起着核心作用,尤其是当生物靶点的结构已知时。单胺氧化酶是膜结合的含黄素腺嘌呤二核苷酸(FAD)的酶,其中亚型单胺氧化酶-B(MAO-B)是治疗阿尔茨海默病、帕金森病、神经胶质瘤等疾病的一个有吸引力的靶点。在本研究中,我们使用了基于药效团的虚拟筛选技术来鉴定新型小分子MAO-B抑制剂。沙芬酰胺用于构建药效团模型,所开发的模型用于在ZINC数据库中搜索潜在的命中化合物。对获得的命中化合物进行类药性和PAINS筛选。在命中化合物库中,两种化合物ZINC02181408、ZINC08853942(活性最高)和ZINC53327382(活性最低)进一步进行分子对接和动力学模拟研究,以评估它们的虚拟结合亲和力以及所得蛋白质-配体复合物的稳定性。对接研究表明,活性配体很好地容纳在MAO-B的活性位点内,并与底物和入口腔残基相互作用。分子动力学模拟研究揭示了与底物腔残基Tyr398和Tyr435的额外氢键相互作用,这些残基对MAO-B的催化作用至关重要。此外,预测的药物代谢动力学(ADMET)参数表明,化合物ZINC08853942和ZINC02181408适合穿透中枢神经系统。因此,本次计算研究得到两种潜在的MAO-B抑制剂,值得进一步的实验研究。由拉马斯瓦米·H·萨尔马通讯。