药效团
虚拟筛选
对接(动物)
化学
数量结构-活动关系
活动站点
计算生物学
立体化学
组合化学
生物化学
生物
酶
医学
护理部
作者
Aniqa Moveed,Shagufta Parveen,Nusrat Shafiq,Awais Ali,Maryam Rashid,Mohammed Bourhia,Fouad Msanda,Ahmad Mohammad Salamatullah,Simone Brogi
出处
期刊:Medicinal Chemistry
[Bentham Science Publishers]
日期:2025-01-22
卷期号:21 (10): 1153-1173
标识
DOI:10.2174/0115734064309469240806104435
摘要
Background: The rise in the frequency of liver cancer all over the world makes it a prominent area of research in the discovery of new drugs or repurposing of existing drugs. Methods: This article describes the pharmacophore-based structure-activity relationship (3DQSAR) on the secondary metabolites of Alhagi maurorum to inhibit human liver cancer cell lines Hepatocellular carcinoma (HCC) and hepatoma G2 (HepG2) which represents the molecular level understanding for isolated phytochemicals of Alhagi maurorum. The definite features, such as hydrophobic regions, average shape, and active compounds’ electrostatic patterns, were mapped to screen phytochemicals. The 3D-QSAR model generates pharmacophore-based descriptors and alignment of active compounds. Further, docking studies were performed on the active compounds to check out their binding affinity with the active site of the target proteins. It was further validated by applying molecular simulations, and the results were found to be accurate. The geometrical optimization and energy gap of the hit compound were calculated by the density functional theory (DFT). Then, ADMET was performed on this hit compound for drug-like features and toxicity. Results: Out of 59 compounds, eight ligands were found active after the 3D-QSAR study. After that, molecular docking was performed on the active compounds F72, F52, F54, F29, F37, F38, F25, and F29, which were recognized as potential targets, and the docking results showed that compound F52 (also an FDA-approved drug) was the best hit. F52 was found to be the best hit against liver cancer cell lines HCC and HepG2. Conclusion: This study would be helpful for early drug discovery optimization and lead identification.
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