| Literature DB >> 36101384 |
Bolin Chen1, Teng Wang1, Jinlei Zhang1, Shengli Zhang2, Xuequn Shang1.
Abstract
Colon cancer is considered as a complex disease that consists of metastatic seeding in early stages. Such disease is not simply caused by the action of a single RNA, but is associated with disorders of many kinds of RNAs and their regulation relationships. Hence, it is of great significance to study the complex regulatory roles among mRNAs, miRNAs and lncRNAs for further understanding the pathogenic mechanism of colon cancer. In this study, we constructed a heterogeneous network consisting of differentially expressed mRNAs, miRNAs and lncRNAs. This contains three kinds of vertices and six types of edges. All RNAs were re-divided into three categories, which were "related", "irrelevant" and "unlabeled". They were processed by dynamic excitation restart random walk (RW-DIR) for identifying colon cancer-related RNAs. Ten RNAs were finally obtained related to colon cancer, which were hsa-miR-2682-5p, hsa-miR-1277-3p, ANGPTL1, SLC22A18AS, FENDRR, PHLPP2, hsa-miR-302a-5p, APCDD1, MEX3A and hsa-miR-509-3-5p. Numerical experiments have indicated that the proposed network construction framework and the following RW-DIR algorithm are effective for identifying colon cancer-related RNAs, and this kind of analysis framework can also be easily extended to other diseases, effectively narrowing the scope of biological experimental research.Entities:
Keywords: colon cancer; differential expression analysis; heterogeneous network; random walk
Year: 2022 PMID: 36101384 PMCID: PMC9312154 DOI: 10.3390/biology11071003
Source DB: PubMed Journal: Biology (Basel) ISSN: 2079-7737
Figure 1This is the workflow of this study. (A) Construct the mRNA-miRNA-lncRNA interaction network. (B) RW-DIR algorithm was applied to obtain the results of colon cancer-related RNAs.
RNA association and interaction database.
| Types of RNA Associations | Database |
|---|---|
| mRNA-miRNA | multiMiR [ |
| mRNA-lncRNA | starbase V3.0 [ |
| miRNA-lncRNA | LncBase V2.0 [ |
| mRNA-mRNA | STRING [ |
Colon cancer-related RNAs and database.
| Types of RNA | Database |
|---|---|
| mRNA | Comparative Toxicogenomics Database [ |
| miRNA | miR2disease [ |
| lncRNA | LncRNADisease [ |
Edge Information in Heterogeneous Networks.
| Type of RNA | Number of RNA | Number of Normal Samples | Number of Tumor Samples |
|---|---|---|---|
| mRNA | 116591 | 41 | 443 |
| miRNA | 302 | 8 | 444 |
| lncRNA | 1526 | 41 | 443 |
Figure 2The heterogeneous network of RNA interactions. Orange vertices are mRNAs, pink vertices are miRNAs, and blue vertices are lncRNAs. The grey edges represent the connection within the same kind of RNAs, the yellow edges represent the relationship between mRNA and lncRNA, the green edges represent the relationship between mRNA and miRNA, and the purple edges represent the relationship between miRNA and lncRNA.
Figure 3This is a diagram of the transition matrix calculation. Nine sub-matrices form a complete transition matrix. is the transfer parameter between mRNA and miRNA, is the transfer parameter between mRNA and lncRNA, and is the transfer parameter between miRNA and lncRNA. The transfer parameters in each small square correspond to the parameters that could be used to calculate the percentage of summarized weight corresponding to the sub-transition matrix.
Edge Information in Heterogeneous Networks.
| Type of Edge | Number of Node | Number of Edge |
|---|---|---|
| mRNA-mRNA | 1300 (mRNA) | 7408 |
| miRNA- miRNA | 81 (miRNA) | 389 |
| lncRNA-lncRNA | 389 (lncRNA) | 604 |
| mRNA-miRNA | 56 (mRNA) - 326(miRNA) | 569 |
| mRNA-lncRNA | 33 (mRNA) - 70(lncRNA) | 94 |
| miRNA-lncRNA | 99 (miRNA) - 57(lncRNA) | 587 |
Top 10 RNAs and Related Diseases.
| Top 10 RNAs | Number of RNA | Related Diseases |
|---|---|---|
| hsa-miR-2682-5p | miRNA | Oral squamous cell carcinoma |
| hsa-miR-1277-3p | miRNA | / |
| ANGPTL1 | mRNA | Lung cancer, breast cancer, colorectal cancer |
| SLC22A18AS | mRNA | Lung adenocarcinoma |
| FENDRR | lncRNA | Gastric cancer, lung cancer, hepatocellular carcinoma (HCC), gastric cancer |
| PHLPP2 | mRNA | Diabetes, hepatic steatosis, and cancer |
| hsa-miR-302a-5p | miRNA | Endometrial carcinoma, glioma and breast cancer |
| APCDD1 | mRNA | Breast cancer |
| MEX3A | mRNA | Glioma |
| hsa-miR-509-3-5p | miRNA | Gastric cancer |
Figure 4The prediction performance for prioritizing colon cancer causal RNAs. The ROC curves illustrating the performance in distinguishing “related” label RNAs from “irrelevant” label RNAs. Red curve represented RW-DIR; the blue curve represented TRWR, which was directly used on the basis of the heterogeneous network that is constructed in this study; the yellow curve represented RW-DIR without entropy.