Network Pharmacology and Molecular Docking-Based Strategy to Investigate the Multitarget Mechanisms of Shenqi Yizhi Granule on Alzheimer’s Disease

颗粒(地质) 药理学 对接(动物) 疾病 神经科学 计算生物学 化学 生物 医学 内科学 古生物学 护理部
作者
Linshuang Wang,Xiaoyu Xu,Zikang Wang,Qian Chen,Xiaodie Wei,Jingfan Xue,Zhanjun Zhang,Miao Wang,Yanping Li,Junying Zhang,Dongfeng Wei
出处
期刊:Evidence-based Complementary and Alternative Medicine [Hindawi Publishing Corporation]
卷期号:2022: 1-14 被引量:5
标识
DOI:10.1155/2022/8032036
摘要

Background. Traditional Chinese herbal medicine draws more attention to explore an effective therapeutic strategy for Alzheimer’s disease (AD). Shenqi Yizhi granule (SQYG), a Chinese herbal recipe, has been applied to ameliorate cognitive impairment in mild-to-moderate AD patients. However, the overall molecular mechanism of SQYG in treating AD has not been clarified. Objective. This study aimed to investigate the molecular mechanism of SQYG on AD using an integration strategy of network pharmacology and molecular docking. Methods. The active compounds of SQYG and common targets between SQYG and AD were screened from databases. The herb-compound network, compound-target network, and protein-protein interaction network were constructed. The enrichment analysis of common targets and molecular docking were performed. Results. 816 compounds and 307 common targets between SQYG and AD were screened. KEGG analysis revealed that common targets were mainly enriched in lipid metabolism, metal ion metabolism, IL-17 signaling pathway, GABA receptor signaling, and neuroactive ligand-receptor interaction. Molecular docking analysis showed high binding affinity between ginsenoside Rg1 and Aβ1–42, tanshinone IIA and BACE1, baicalin, and AchE. Conclusions. The therapeutic mechanisms of SQYG on AD were associated with regulating lipid metabolism, metal ion metabolism, IL-17 signaling pathway, and GABA receptor signaling. Ginsenoside Rg1, tanshinone IIA, baicalin, astragaloside IV, and folic acid may play an important role in AD treatment.
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