| Literature DB >> 35096840 |
Shumei Zhang1, Haoran Jiang1, Bo Gao2, Wen Yang3, Guohua Wang1.
Abstract
Background: Breast cancer is the second largest cancer in the world, the incidence of breast cancer continues to rise worldwide, and women's health is seriously threatened. Therefore, it is very important to explore the characteristic changes of breast cancer from the gene level, including the screening of differentially expressed genes and the identification of diagnostic markers.Entities:
Keywords: KEGG pathway network; SVM; breast cancer; diagnostic markers; gene expression
Year: 2022 PMID: 35096840 PMCID: PMC8790293 DOI: 10.3389/fcell.2021.811585
Source DB: PubMed Journal: Front Cell Dev Biol ISSN: 2296-634X
FIGURE 1The Volcano plot and Heat map of differentially expressed genes. (A) The Volcano plot of differentially expressed genes, where the red dots represent the genes that are down-regulated in breast cancer, the blue dots represent the genes that are up-regulated in breast cancer, and the green dots represent the genes that are not significantly different. (B) The Heat map of differentially expressed genes. The rows represent differentially expressed genes and the columns represent patients, where the red bar represents breast cancer patients and the blue bar represents normal control samples.
FIGURE 2Gene enrichment analysis. (A) Gene enrichment analysis of Gene Ontology. (B) Gene enrichment analysis of KEGG.
KEGG pathways enriched by differentially expressed genes in breast cancer.
| Term | Count |
|
|---|---|---|
| hsa04080: Neuroactive ligand-receptor interaction | 49 | 2.82E-15 |
| hsa05322: Systemic lupus erythematosus | 33 | 1.72E-14 |
| hsa05034: Alcoholism | 37 | 7.54E-14 |
| hsa05033: Nicotine addiction | 14 | 2.33E-08 |
| hsa00350: Tyrosine metabolism | 11 | 3.84E-06 |
| hsa05204: Chemical carcinogenesis | 16 | 5.16E-06 |
| hsa00830: Retinol metabolism | 14 | 8.86E-06 |
| hsa00980: Metabolism of xenobiotics by cytochrome P450 | 15 | 9.57E-06 |
| hsa04970: Salivary secretion | 15 | 5.62E-05 |
| hsa00982: Drug metabolism - cytochrome P450 | 13 | 8.52E-05 |
| hsa04060: Cytokine-cytokine receptor interaction | 26 | 2.69E-04 |
| hsa04723: Retrograde endocannabinoid signaling | 14 | 0.0011 |
| hsa05032: Morphine addiction | 13 | 0.0014 |
| hsa00140: Steroid hormone biosynthesis | 10 | 0.0017 |
| hsa04727: GABAergic synapse | 12 | 0.0025 |
| hsa05202: Transcriptional misregulation in cancer | 18 | 0.0028 |
| hsa04972: Pancreatic secretion | 12 | 0.0050 |
| hsa04974: Protein digestion and absorption | 11 | 0.0097 |
| hsa04975: Fat digestion and absorption | 7 | 0.0104 |
| hsa00591: Linoleic acid metabolism | 6 | 0.0117 |
| hsa03320: PPAR signaling pathway | 9 | 0.0150 |
| hsa04024: cAMP signaling pathway | 18 | 0.0152 |
| hsa04976: Bile secretion | 9 | 0.0176 |
| hsa04724: Glutamatergic synapse | 12 | 0.0217 |
| hsa04913: Ovarian steroidogenesis | 7 | 0.0297 |
| hsa04950: Maturity onset diabetes of the young | 5 | 0.0347 |
| hsa00010: Glycolysis/Gluconeogenesis | 8 | 0.0422 |
| hsa00910: Nitrogen metabolism | 4 | 0.0462 |
FIGURE 3KEGG pathways network of gene-gene interaction. (A) KEGG pathways network, which contains 1277 nodes and 7345 edges, and the size of the nodes is represented by the degree. (B) Probability density distribution of nodes degree in the network, which conforms to the power law distribution.
The candidate diagnostic markers for breast cancer.
| Gene | Degree | Pvalue | Gene | Degree |
|
|---|---|---|---|---|---|
| ADCY8 | 37 | 1.41E-32 | CYP2C19 | 56 | 1.74E-10 |
| ADH1A | 65 | 1.50E-167 | CYP3A4 | 116 | 1.66E-66 |
| ADH1C | 65 | 3.22E-87 | CYP3A7 | 43 | 1.59E-21 |
| ADH4 | 65 | 4.01E-152 | GNG13 | 44 | 1.61E-88 |
| ADH6 | 65 | 1.43E-19 | GNGT1 | 44 | 3.49E-22 |
| ADH7 | 65 | 1.45E-28 | GSTA1 | 49 | 2.20E-66 |
| AKR1C4 | 25 | 4.83E-10 | HSD3B1 | 52 | 3.17E-17 |
| ALDH3A1 | 38 | 2.24E-70 | HSD3B2 | 52 | 4.44E-53 |
| CYP1A2 | 93 | 3.34E-23 | RXRG | 64 | 1.15E-66 |
| CYP2A13 | 58 | 1.23E-09 | UGT1A7 | 60 | 9.17E-43 |
| CYP2B6 | 62 | 3.57E-25 | UGT2B28 | 60 | 2.46E-44 |
| CYP2C18 | 55 | 6.14E-17 | — | — | — |
These genes have been documented to be associated with breast cancer.
FIGURE 4Evaluation of classification models. (A) The confusion matrix of Training dataset. (B) The confusion matrix of Validation dataset. (C) ROC curve of Training dataset. (D) ROC curve of Validation dataset.