Department of Pharmaceutical Engineering & Technology, Indian Institute of Technology (B.H.U.), Varanasi, 221005, UP, India.
Mol Divers. 2024 Aug;28(4):2013-2031. doi: 10.1007/s11030-023-10645-3. Epub 2023 Apr 6.
Alzheimer's disease (AD) is a severe, growing, multifactorial disorder affecting millions of people worldwide characterized by cognitive decline and neurodegeneration. The accumulation of tau protein into paired helical filaments is one of the major pathological hallmarks of AD and has gained the interest of researchers as a potential drug target to treat AD. Lately, Artificial Intelligence (AI) has revolutionized the drug discovery process by speeding it up and reducing the overall cost. As a part of our continuous effort to identify potential tau aggregation inhibitors, and leveraging the power of AI, in this study, we used a fully automated AI-assisted ligand-based virtual screening tool, PyRMD to screen a library of 12 million compounds from the ZINC database to identify potential tau aggregation inhibitors. The preliminary hits from virtual screening were filtered for similar compounds and pan-assay interference compounds (the compounds containing reactive functional groups which can interfere with the assays) using RDKit. Further, the selected compounds were prioritized based on their molecular docking score with the binding pocket of tau where the binding pockets were identified using replica exchange molecular dynamics simulation. Thirty-three compounds showing good docking scores for all the tau clusters were selected and were further subjected to in silico pharmacokinetic prediction. Finally, top 10 compounds were selected for molecular dynamics simulation and MMPBSA binding free energy calculations resulting in the identification of UNK_175, UNK_1027, UNK_1172, UNK_1173, UNK_1237, UNK_1518, and UNK_2181 as potential tau aggregation inhibitors.
阿尔茨海默病(AD)是一种严重的、日益严重的、多因素障碍,影响着全球数以百万计的人,其特征是认知能力下降和神经退行性变。tau 蛋白聚集成双螺旋丝是 AD 的主要病理标志之一,作为治疗 AD 的潜在药物靶点引起了研究人员的兴趣。最近,人工智能(AI)通过加速药物发现过程并降低总体成本,彻底改变了药物发现过程。作为我们不断努力识别潜在的 tau 聚集抑制剂的一部分,并利用 AI 的力量,在这项研究中,我们使用了一个完全自动化的 AI 辅助基于配体的虚拟筛选工具,PyRMD,从 ZINC 数据库中筛选了 1200 万个化合物库,以识别潜在的 tau 聚集抑制剂。虚拟筛选的初步命中物使用 RDKit 针对类似化合物和全分析干扰化合物(含有可以干扰分析的反应性官能团的化合物)进行了筛选。此外,根据化合物与 tau 结合口袋的分子对接得分对选定的化合物进行了优先级排序,其中使用 replica exchange 分子动力学模拟确定了结合口袋。选择了 33 种对所有 tau 簇都显示出良好对接得分的化合物,并进一步进行了计算机药物代谢动力学预测。最后,选择了前 10 种化合物进行分子动力学模拟和 MMPBSA 结合自由能计算,从而确定 UNK_175、UNK_1027、UNK_1172、UNK_1173、UNK_1237、UNK_1518 和 UNK_2181 为潜在的 tau 聚集抑制剂。