环嗪衍生物作为抗高血压药物的计算机预测药物再利用。

In silico pharmacology Pub Date : 2023-10-25 eCollection Date: 2023-01-01 DOI:10.1007/s40203-023-00164-2
M S Afanamol, A Deepika Dinesh, K Shifa Ali, Ajeesh Vengamthodi, Arun Rasheed
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引用次数: 0

摘要

心血管疾病是世界各地死亡率上升的主要因素。高血清胆固醇引起的动脉粥样硬化可导致冠心病。通过降低血清胆固醇水平,冠心病的风险显著降低。世界各地的科学家正在发明降低血脂水平的新治疗方案。在这项工作中,我们重新利用已经建立的药物,即环嗪衍生物作为抗高血压药物。重新利用是基于所选环嗪衍生物与已经建立的抗高血压药物非诺贝特的相似性。进行了计算研究,并将16种环嗪衍生物与PPAR对接。阿尔法得分高于非诺贝特。利法利嗪和美地巴嗪在mgbsa中的表现优于非诺贝特。非诺贝特、依托屈嗪、美利嗪和桂利嗪的mmgbsa评分相似。对这些化合物进行了ADME性质的研究,发现依托屈嗪和左西替利嗪具有更好的性质。计算研究是使用薛定谔软件进行的,大师12.8。Maestro面板中的“蛋白质制备向导”模块用于创建蛋白质结构,OPLS4力场用于能量最小化。然后,大师建设者小组的“Ligprep”、“受体网格生成”和“配体对接”模块分别用于制备配体、受体网格和进行对接。MMGBSA是在“主要MMGBSA”段上执行的。使用maestro面板中的“Qikprop”设置,预测了许多ADMET特性,并使用vsgb作为溶剂化模型在默认模式下运行该程序。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Drug repurposing by in silico prediction of cyclizine derivatives as antihyperlipemic agents.

Cardiovascular diseases are the primary factor for increased mortality rates around the world. Atherosclerosis brought on by high serum cholesterol can result in coronary heart disease (CHD). The risk of CHD is markedly reduced by lowering serum cholesterol levels. Scientists across the world are inventing new treatment regimens for lowering blood lipid levels. In this work, we repurposed the already established drugs, i.e., cyclizine derivatives as antihyperlipidemic agents. The repurposing was done based on the similarity of the selected cyclizine derivatives with the already established antihyperlipidemic drug, fenofibrate. Computational studies were performed and the 16 cyclizine derivatives docked against PPAR. alpha scored higher than fenofibrate. Lifarizine and medibazine outperform fenofibrate inmmgbsa. Fenofibrate, etodroxizine, meclizine, and cinnarizine had similar mmgbsa scores. The ADME properties of these compounds were performed and from that etodroxizine and levocetirizine were found to have better properties. The computational studies were performed using the Schrodinger software, maestro 12.8. The "Protein Preparation Wizard" module in the Maestro panel was used to create the protein structure and OPLS4 force field was used for energy minimization. The maestro builder panel's "Ligprep", "Receptor Grid Generation" and "Ligand Docking" modules were then used to prepare ligands, receptor grids and to perform docking respectively. MMGBSA was performed on the "prime MMGBSA" segment. Using the "Qikprop" setting in the maestro panel, a number of ADMET properties were predicted, and the program was run in default mode using vsgb as the solvation model.

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