Theoretical Investigation of Some Donepezil-based Derivatives as Dual Inhibitors for beta-Amyloid- and Cholinesterase Enzymes

IF 0.5
Assia Meziane, A. Ghomri, S. Bouchentouf, M. El‐Shazly
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引用次数: 0

Abstract

To treat Alzheimer’s Disease (AD), which is the most prevalent form of dementia, cholinesterase enzymes (AChE and BuChE) and amyloid-beta (Aβ) are attractive targets. In this work, different computational approach namely Density Functional Theory (DFT), Molecular Docking, and multi-QSAR modeling were performed on 22 donepezil-based derivatives which were reported as potent dual Aβ and (AChE and BuChE) inhibitors. The molecular geometries of the studied derivatives were carried out using GAUSSIAN 09 software with the level of theory (DFT, 6/31g*). The dual inhibitors adopted minimum energy. The results pointed out the importance of the inhibitors' geometries in enzyme inhibition. The QSAR models elaborated by means of Molecular Operating Environment (MOE) package, showed good statistical values for targets AChE (R2adj = 0.976, q2 = 0.871, RMS = 0.130), BuChE (R2adj = 0.976, q2 = 0.554, RMS = 0.092) and Aβ (R2adj = 0.861, q2 = 0.525, RMS = 0.113). To identify the binding pattern between the ligands and target enzymes, we implemented molecular docking studies for the datasets. The obtained information was related to the essential structural features that were related to the QSAR of the predicted models.
多奈哌齐衍生物作为-淀粉样酶和胆碱酯酶双重抑制剂的理论研究
为了治疗阿尔茨海默病(AD),胆碱酯酶(AChE和BuChE)和β淀粉样蛋白(Aβ)是最有吸引力的靶点。在这项工作中,不同的计算方法,即密度泛函数理论(DFT),分子对接和多奈哌齐衍生物进行了多奈哌齐衍生物的多奈哌齐衍生物被报道为有效的双重Aβ和(AChE和BuChE)抑制剂。所研究衍生物的分子几何结构采用高斯09软件进行,具有理论水平(DFT, 6/31g*)。双抑制剂采用最小能量。结果指出了抑制剂的几何形状在酶抑制中的重要性。利用分子操作环境(MOE)软件包建立的QSAR模型对靶点AChE (R2adj = 0.976, q2 = 0.871, RMS = 0.130)、BuChE (R2adj = 0.976, q2 = 0.554, RMS = 0.092)和Aβ (R2adj = 0.861, q2 = 0.525, RMS = 0.113)具有良好的统计学意义。为了确定配体和靶酶之间的结合模式,我们对数据集进行了分子对接研究。所获得的信息与预测模型的QSAR相关的基本结构特征有关。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Biochemical Technology
Journal of Biochemical Technology BIOCHEMISTRY & MOLECULAR BIOLOGY-
自引率
40.00%
发文量
18
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