| Literature DB >> 36051114 |
Xiao-Yan Cui1, Xiao Wu2, Dan Lu3, Dan Wang4.
Abstract
BACKGROUND: A comprehensive literature search shows that Sanqi and Huangjing (SQHJ) can improve diabetes treatment in vivo and in vitro, respectively. However, the combined effects of SQHJ on diabetes mellitus (DM) are still unclear. AIM: To explore the potential mechanism of Panax notoginseng (Sanqi in Chinese) and Polygonati Rhizoma (Huangjing in Chinese) for the treatment of DM using network pharmacology.Entities:
Keywords: Active compounds; Diabetes mellitus; Hub genes; Network pharmacology; Panax notoginseng (Sanqi in Chinese); Polygonati Rhizoma (Huangjing in Chinese)
Year: 2022 PMID: 36051114 PMCID: PMC9297423 DOI: 10.12998/wjcc.v10.i20.6900
Source DB: PubMed Journal: World J Clin Cases ISSN: 2307-8960 Impact factor: 1.534
Eighteen active compounds in Sanqi and Huangjing and their corresponding predicted oral bioavailability and drug-likeness
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| Sanqi | MOL001494 | Mandenol | 42.00 | 0.19 |
| Sanqi/Huangjing | MOL001792 | DFV | 32.76 | 0.18 |
| Sanqi | MOL002879 | Diop | 43.59 | 0.39 |
| Sanqi/Huangjing | MOL000358 | Beta-sitosterol | 36.91 | 0.75 |
| Sanqi | MOL000449 | Stigmasterol | 43.83 | 0.76 |
| Sanqi | MOL005344 | Ginsenoside rh2 | 36.32 | 0.56 |
| Sanqi | MOL007475 | Ginsenoside f2 | 36.43 | 0.25 |
| Sanqi | MOL000098 | Quercetin | 46.43 | 0.28 |
| Huangjing | MOL002714 | Baicalein | 33.52 | 0.21 |
| Huangjing | MOL002959 | 3’-Methoxydaidzein | 48.57 | 0.24 |
| Huangjing | MOL000359 | Sitosterol | 36.91 | 0.75 |
| Huangjing | MOL003889 | Methylprotodioscin_qt | 35.12 | 0.86 |
| Huangjing | MOL004941 | (2R)-7-hydroxy-2-(4-hydroxyphenyl) chroman-4-one | 71.12 | 0.18 |
| Huangjing | MOL000546 | Diosgenin | 80.88 | 0.81 |
| Huangjing | MOL006331 | 4’,5-Dihydroxyflavone | 48.55 | 0.19 |
| Huangjing | MOL009760 | Sibiricoside A_qt | 35.26 | 0.86 |
| Huangjing | MOL009763 | (+)-Syringaresinol-O-beta-D-glucoside | 43.35 | 0.77 |
| Huangjing | MOL009766 | Zhonghualiaoine 1 | 34.72 | 0.78 |
OB: Oral bioavailability; DL: Drug-likeness. Both OB ≥ 30% and DL ≥ 0.18 were obtained from TCMSP.
Figure 1Based on the intersection of drug and disease targets, we obtained 115 genes, which means that these genes could play a major role in Sanqi and Huangjing treatment for diabetes mellitus.
Figure 2The active ingredients of Sanqi and Huangjing and the 115 targets were obtained using Cytoscape 3.8.2.
Top 10 ingredients based on the network of ingredients
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| 1 | MOL000098 | Quercetin | 97 |
| 2 | MOL000358 | Beta-sitosterol | 42 |
| 3 | MOL002714 | Baicalein | 23 |
| 4 | MOL001792 | DFV (5-deoxyflavanone) | 16 |
| 5 | MOL000449 | Stigmasterol | 13 |
| 6 | MOL002959 | 3’-Methoxydaidzein | 12 |
| 7 | MOL000546 | Diosgenin | 11 |
| 8 | MOL005344 | Ginsenoside rh2 | 10 |
| 9 | MOL004941 | (2R)-7-hydroxy-2-(4-hydroxyphenyl) chroman-4-one | 8 |
| 10 | MOL006331 | 4’,5-Dihydroxyflavone | 7 |
Top 9 genes based on the network of ingredients and overlapping targets
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Figure 3Target-pathway network in Sanqi and Huangjing-diabetes mellitus. This network shows the relationship between the enriched 13 pathways and 20 genes. The green nodes represent the pathway of Sanqi and Huangjing in the treatment of diabetes mellitus. The red nodes represent the target genes. The edges represent the interaction between the red and green nodes.
Figure 4Protein-protein interaction network. A: The protein-protein interaction (PPI) network of 115 overlapping genes of Sanqi and Huangjing and diabetes mellitus; B: Top 10 hub genes in the PPI network. AKT1: RAC-alpha serine/threonine-protein kinase; IL6: Interleukin 6; TNF: Tumor necrosis factor; TP53: Cellular tumor antigen p53; CASP3: Caspase-3; JUN: Transcription factor AP-1; MAPK1: Mitogen-activated protein kinase 1; MMP9: Matrix metallopeptidase-9; PTGS2: Prostaglandin G/H synthase 2; EGFR: Epidermal growth factor receptor.
Figure 5The process of topological screening for the protein-protein interaction network. The yellow nodes represent the core targets and the blue nodes represent the noncore targets. A: The combined protein-protein interaction (PPI) network of the overlapping targets; B: PPI network with important targets extracted from (A); C: PPI network with important targets extracted from (B); D: PPI network with core targets extracted from (C).
Figure 6The Venn diagram of cytoHubba and CytoNCA-related targets. 1 cytoHubba non-intersection targets (left), 9 cytoHubba and CytoNCA intersection targets (middle) and 6 CytoNCA non-intersection targets (right).
Figure 7Gene Ontology enrichment analysis of 115 overlapping genes. The top Gene Ontology enriched terms with P < 0.001 and count > 5 were screened. The X-axis is the enrichment gene ratio, and the Y-axis is the molecular function or biological process. CC: Cellular component; BP: Biological process; MF: Molecular function.
Figure 8Kyoto encyclopedia of genes and genomes pathway enrichment analysis of 115 overlapping genes. P < 0.001 and count > 5. The X-axis is the enrichment gene count, the Y-axis is the Kyoto Encyclopedia of Genes and Genomes pathway, and the color of bar chart represents the adjusted P value.
Kyoto encyclopedia of genes and genomes pathway analysis based on target-pathway network
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| 05140 | Leishmaniasis | 9 | 5.61E-10 |
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| 05200 | Pathways in cancer | 13 | 5.36E-08 |
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| 05161 | Hepatitis B | 8 | 2.75E-06 |
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| 05210 | Colorectal cancer | 6 | 7.16E-06 |
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| 05145 | Toxoplasmosis | 7 | 7.75E-06 |
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| 04919 | Thyroid hormone signaling pathway | 7 | 1.00E-05 |
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| 05152 | Tuberculosis | 8 | 1.03E-05 |
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| 05133 | Pertussis | 6 | 1.83E-05 |
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| 05205 | Proteoglycans in cancer | 8 | 2.30E-05 |
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| 05146 | Amoebiasis | 6 | 9.76E-05 |
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| 05164 | Influenza A | 7 | 1.05E-04 |
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| 04380 | Osteoclast differentiation | 6 | 2.65E-04 |
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| 04010 | MAPK signaling pathway | 7 | 7.91E-04 |
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