The Steve and Cindy Rasmussen Institute for Genomic Medicine, Nationwide Children's Hospital, Columbus, OH, 43205, USA.
Department of Pharmacology, College of Medicine, Kangwon National University, Chuncheon, South Korea.
Sci Rep. 2023 Oct 21;13(1):18022. doi: 10.1038/s41598-023-45347-1.
Drug designing is high-priced and time taking process with low success rate. To overcome this obligation, computational drug repositioning technique is being promptly used to predict the possible therapeutic effects of FDA approved drugs against multiple diseases. In this computational study, protein modeling, shape-based screening, molecular docking, pharmacogenomics, and molecular dynamic simulation approaches have been utilized to retrieve the FDA approved drugs against AD. The predicted MADD protein structure was designed by homology modeling and characterized through different computational resources. Donepezil and galantamine were implanted as standard drugs and drugs were screened out based on structural similarities. Furthermore, these drugs were evaluated and based on binding energy (Kcal/mol) profiles against MADD through PyRx tool. Moreover, pharmacogenomics analysis showed good possible associations with AD mediated genes and confirmed through detail literature survey. The best 6 drug (darifenacin, astemizole, tubocurarine, elacridar, sertindole and tariquidar) further docked and analyzed their interaction behavior through hydrogen binding. Finally, MD simulation study were carried out on these drugs and evaluated their stability behavior by generating root mean square deviation and fluctuations (RMSD/F), radius of gyration (Rg) and soluble accessible surface area (SASA) graphs. Taken together, darifenacin, astemizole, tubocurarine, elacridar, sertindole and tariquidar displayed good lead like profile as compared with standard and can be used as possible therapeutic agent in the treatment of AD after in-vitro and in-vivo assessment.
药物设计是一个高成本、耗时且成功率低的过程。为了克服这一难题,计算药物重定位技术正在被迅速用于预测已批准的 FDA 药物对多种疾病的可能治疗效果。在这项计算研究中,我们利用了蛋白质建模、形状筛选、分子对接、药物基因组学和分子动力学模拟方法来寻找治疗 AD 的已批准 FDA 药物。通过同源建模预测了 MADD 蛋白结构,并通过不同的计算资源对其进行了特征描述。将多奈哌齐和加兰他敏作为标准药物进行了植入,并根据结构相似性筛选出药物。此外,我们还使用 PyRx 工具根据结合能(Kcal/mol)对 MADD 进行了评估和基于配体的打分。此外,药物基因组学分析显示与 AD 介导的基因有很好的可能关联,并通过详细的文献调查得到了证实。根据最佳结合能(Kcal/mol)进一步对接了前 6 种药物(darifenacin、astemizole、tubocurarine、elacridar、sertindole 和 tariquidar),并通过氢键分析了它们的相互作用行为。最后,我们对这些药物进行了 MD 模拟研究,并通过生成均方根偏差和波动(RMSD/F)、回转半径(Rg)和可及表面积(SASA)图来评估它们的稳定性行为。总之,与标准药物相比,darifenacin、astemizole、tubocurarine、elacridar、sertindole 和 tariquidar 表现出良好的先导化合物特征,可以在体外和体内评估后作为 AD 治疗的潜在药物。