| Literature DB >> 34194519 |
Jia-Ming Huan1, Wen-Ge Su2, Wei Li2, Chao Gao2, Peng Zhou2, Chun-Sheng Fu2, Xiao-Feng Wang2, Yi-Min Wang3, Yi-Fei Wang2.
Abstract
Hypertensive nephropathy is a common complication of hypertension. Traditional Chinese medicine has been used in the clinical treatment of hypertensive nephropathy for a long time, but the commonly used prescriptions have not been summarized, and the basic therapeutic approaches have not been discussed. Based on data from 3 years of electronic medical records of traditional Chinese medicine used at the Affiliated Hospital of Shandong University of Traditional Chinese Medicine, a complex network and machine learning algorithm was used to explore the prescribed herbs of traditional Chinese medicine in the treatment of hypertensive nephropathy (HN). In this study, complex network algorithms were used to describe traditional Chinese medicine prescriptions for HN treatment. The Apriori algorithm was used to analyze the compatibility of these treatments with modern medicine. Data on the targets and regulatory genes related to hypertensive nephropathy and the herbs that affect their expression were obtained from public databases, and then, the signaling pathways enriched with these genes were identified on the basis of their participation in biological processes. A clustering algorithm was used to analyze the therapeutic pathways at multiple levels. A total of 1499 prescriptions of traditional Chinese medicines used for the treatment of hypertensive renal damage were identified. Fourteen herbs used to treat hypertensive nephropathy act through different biological pathways: huangqi, danshen, dangshen, fuling, baizhu, danggui, chenpi, banxia, gancao, qumai, cheqianzi, ezhu, qianshi, and niuxi. We found the formulae of these herbs and observed that they could downregulate the expression of inflammatory cytokines such as TNF, IL1B, and IL6 and the NF-κB and MAPK signaling pathways to reduce the renal inflammatory damage caused by excessive activation of RAAS. In addition, these herbs could facilitate the deceleration in the decline of renal function and relieve the symptoms of hypertensive nephropathy. In this study, the traditional Chinese medicine approach for treating hypertensive renal damage is summarized and effective treatment prescriptions were identified and analyzed. Data mining technology provided a feasible method for the collation and extraction of traditional Chinese medicine prescription data and provided an objective and reliable tool for use in determining the TCM treatments of hypertensive nephropathy.Entities:
Year: 2021 PMID: 34194519 PMCID: PMC8214481 DOI: 10.1155/2021/5590743
Source DB: PubMed Journal: Evid Based Complement Alternat Med ISSN: 1741-427X Impact factor: 2.629
Figure 1Differentially expressed genes in HN: a blue dot indicates a downregulated gene, and a red dot indicates an upregulated gene.
Figure 2Main rules in the Apriori algorithm: the size of the dot indicates the effect of the herbs, and the darker the color of the dot, the larger the lift.
Ten rules for maximum lift values.
| LHS | RHS | Support | Confidence | Coverage | Lift | Count | |
|---|---|---|---|---|---|---|---|
| Chenpi | => | Banxia | 0.258 | 0.701 | 0.368 | 1.939 | 387 |
| Banxia | => | Chenpi | 0.258 | 0.714 | 0.362 | 1.939 | 387 |
| Chenpi | => | Fuling | 0.294 | 0.799 | 0.368 | 1.337 | 441 |
| Baizhu | => | Fuling | 0.261 | 0.795 | 0.328 | 1.330 | 391 |
| Chuanxiong | => | Danshen | 0.203 | 0.540 | 0.376 | 1.301 | 304 |
| Danggui | => | Huangqi | 0.388 | 0.758 | 0.511 | 1.285 | 581 |
| Huangqi | => | Danggui | 0.388 | 0.656 | 0.590 | 1.285 | 581 |
| Banxia | => | Fuling | 0.273 | 0.755 | 0.362 | 1.262 | 409 |
| Banxia | => | Dangshen | 0.201 | 0.555 | 0.362 | 1.256 | 301 |
| Dangshen | => | Huangqi | 0.324 | 0.733 | 0.442 | 1.242 | 486 |
Figure 3Multilevel comparison of the 14 traditional Chinese herbs. (a) Heat map and hierarchical clustering in target level. (b) Heat map and hierarchical clustering in target level. (c) and (d) Heat map and hierarchical clustering are biological signal pathway results at KEGG signal pathways and GO terms.
Figure 4Network of enriched terms represented as pie charts, where pie pieces are color-coded based on the identities of the gene in the herbs and HN. The thicker the line is, the more common the targets of the nodes and the closer their interaction.
Figure 5The overlap between the herbs and HN: includes the shared term level, where blue curves link genes that to which the same enriched ontology term is attributed. The inner circle represents gene lists, where hits are arranged along the arc. Genes that were hits in multiple lists are colored in dark orange, and genes unique to a list are shown in light orange.
Clusters of the herbs at different levels.
| Levels | TCM symptom | Target | GO term | KEGG signal pathway | |
|---|---|---|---|---|---|
| Clusters | 1 | Fuling | Gancao, cheqianzi, niuxi, huangqi | Danggui, baizhu, danshen, fuling, qumai, qianshi, banxia | Danshen, chenpi, banxia |
| 2 | Danggui | qianshi, banxia, danshen, fuling | Ezhu, chenpi | Qumai, ezhu, danggui, fuing | |
| 3 | Qumai, gancao, chenpi, baizhu, ezhu, danshen, banxia, qianshi, niuxi | Qumai, chenpi, dangui, dangshen, ezhu, baizhu | Dangshen, cheqianzi, niuxi, gancao | Qianshi, baizhu | |
| 4 | Huanqi, dangshen | — | Huangqi | Niuxi, cheqianzi, huangqi, gancao | |
The top 10 compounds with the highest CRWR.
| PubChem CID | Compound | Formula | RWR |
|---|---|---|---|
| 5257127 | 2-Azaniumylacetate | C2H5NO2 | 1.82E − 04 |
| 5280343 | Quercetin | C15H10O7 | 1.40E − 04 |
| 5281708 | Daidzein | C15H10O4 | 1.01E − 04 |
| 5280460 | Scopoletin | C10H8O4 | 7.49E − 05 |
| 4276 | Myristicin | C11H12O3 | 7.46E − 05 |
| 5280443 | Apigenin | C15H10O5 | 6.45E − 05 |
| 177 | Acetaldehyde | C2H4O | 6.03E − 05 |
| 7043901 | (2S,3S)-2-Ammonio-3-methylpentanoate | C6H13NO2 | 5.87E − 05 |
| 5280863 | Kaempferol | C15H10O6 | 5.44E − 05 |
| 5280489 | Beta-carotene | C40H56 | 4.30E − 05 |