| Literature DB >> 32211330 |
Jingfang Zheng1, Zhiying Su2, Yang Kong3,4, Qingping Lin1, Hongli Liu1, Yanlong Wang1, Jian Wang3,4.
Abstract
Rigorous molecular characterization of biological systems has uncovered a variety of gene variations underlying normal and disease states and a remarkable complexity in the forms of RNA transcripts that exist. A recent concept, competitive endogenous RNA, suggests that some non-coding RNAs can bind to miRNAs to modulate their role in gene expression. Here, we used several platforms, integrating mRNA, non-coding RNAs and protein data to generate an RNA-protein network that may be dysregulated in human glioblastoma multiforme (GBM). Publicly available microarray data for mRNA and miRNA were used to identify differentially expressed miRNAs and mRNAs in GBM relative to non-neoplastic tissue samples. Target miRNAs were further selected based on their prognostic significance, and the intersection of their target gene set with the differentially expressed gene set in Venn diagrams. Two miRNAs, miR-637 and miR-196a-5p, were associated with poor and better prognosis, respectively, in GBM patients. Non-coding RNAs, ENSG00000203739/ENSG00000271646 and TPTEP1, were predicted to be miRNA target genes for miR-637 and miR-196a-5p and positively correlated with the selected mRNA, CYBRD1 and RUFY2. A local protein interaction network was constructed using these two mRNAs. Predictions based on the ENSG00000203739/ENSG00000271646-miR-637-CYBRD1 and TPTEP1-miR-196a-5p-RUFY2 regulation axes indicated that the two proteins may act as an oncogene and tumor suppressor, respectively, in the development of GBM. These results highlight competitive endogenous RNA networks as alternative molecular therapeutic targets in the treatment of the disease.Entities:
Keywords: GBM; lncRNA; mRNA; molecular datasets; network
Year: 2020 PMID: 32211330 PMCID: PMC7075452 DOI: 10.3389/fonc.2020.00303
Source DB: PubMed Journal: Front Oncol ISSN: 2234-943X Impact factor: 6.244
Figure 1Identification of candidate miRNAs and prediction of their target genes. (A) Volcano plot compiled using expression data obtained from the publicly available dataset GSE25631. Red and blue dots represent up-regulated and down-regulated differentially expressed microRNAs, respectively (P < 0.05, |logFC| ≥ 2). (B) The expression of miR-196a-5p and (C) miR-637 in GBM relative to non-neoplastic brain tissue samples. (D) Prognostic value of miR-196a-5p (E) and miR-637 in GBM based on the TCGA database. (F) Predicted target genes of miR-196-5p and miR-637. (G) KEGG pathway enrichment analysis of target genes of miR-196-5p and miR-637. Figures in (F,G) were designed using the open source software Cytoscape 3.6.1 and its plugin or app CyTargetLinker, ClueG+Cluepedia. Data are shown as the mean ± standard deviation. *P < 0.05; **P < 0.01 vs. control samples.
Top 10 differentially expressed miRNAs in GSE25631.
| hsa-miR-196a-5p | 4.38E-04 | 5.599188 |
| hsa-miR-558 | 6.37E-03 | 5.553814 |
| hsa-miR-144 | 1.19E-03 | 5.045044 |
| hsa-miR-106a | 9.89E-03 | 4.979875 |
| hsa-miR-637 | 2.93E-02 | −4.14014 |
| hsa-miR-876-3p | 9.70E-05 | −3.97221 |
| hsa-miR-1224-5p | 5.50E-06 | −3.78824 |
| hsa-miR-518e | 4.09E-02 | 3.611791 |
| hsa-miR-138-2-3p | 6.31E-06 | −3.54098 |
| hsa-miR-203 | 2.13E-03 | −3.45736 |
Figure 2GO function and KEGG pathway enrichment analysis of DEGs and hub genes in GSE4290. (A) Volcano plot derived using the data in GSE4290. Red and blue dots represent up-regulated and down-regulated DEGs, respectively (P < 0.05 plus |logFC| ≥ 2). (B) Statistically enriched biological processes, molecular functions, and cellular components identified using GO function analysis of the DEGs. (C) Top 30 enriched pathways identified using KEGG pathway analysis of DEGs in GSE4290. (D) Top 20 hub genes predicted from the DEGs. These hub genes were representative genes involved in occurrence and progression of GBM. The figure in (D) was designed using the open source software Cytoscape3.6.1 and its plugin or the app STRING.
Figure 3Identification of candidate genes and construction of a ceRNA network. (A) Venn diagrams showing the intersection between predicted target genes of miR-196-5p/miR-637 and DEGs. Kaplan-Meier plots showing the prognostic value of (B) CYBRD1 and (C) RUFY2 in GBM based on the TCGA database. The expression of (D) CYBRD1 and (E). RUFY2 in GBM relative to non-neoplastic brain tissue samples in the TCGA database. (F) Heatmap displaying differential expression of intersecting genes between the GBM and control groups in GSE4290. (G) Target non-coding RNAs of miR-196-5p and miR-637. Kaplan-Meier plots showing the prognostic value of (H) ENSG00000203739 and (I) ENSG00000271646 in GBM, and ENSG00000100181 (TPTEP1) in (J) GBM and (K) LGG based on the TCGA database. (L) Expression of TPTEP1 in GBM molecular subtypes based on the TCGA database. The figure in (A) was designed using the open source software Cytoscape3.6.1. Data are shown as the mean ± standard deviation. *P < 0.05; **P < 0.01; ***P < 0.001 vs. control samples.
Intersection of non-coding RNAs involved in the regulation of miR-196-5p/miR-637 and CYBRD1/RUFY2.
| hsa-miR-637 | 1 | ENSG00000203739 | CYBRD1 | 0.401 | 3.17E-07 |
| hsa-miR-637 | 0.999 | ENSG00000246263 | CYBRD1 | 0.425 | 5.35E-08 |
| hsa-miR-637 | 0.999 | ENSG00000254154 | CYBRD1 | 0.417 | 9.96E-08 |
| hsa-miR-637 | 0.999 | ENSG00000271646 | CYBRD1 | 0.445 | 1.09E-08 |
| hsa-miR-637 | 0.998 | ENSG00000272908 | CYBRD1 | 0.403 | 2.89E-07 |
| has-196a-5p | 0.904 | ENSG00000100181 | RUFY2 | 0.421 | 2.78E-05 |
Figure 4Construction of a ceRNA regulation network in GBM based on differentially expressed miRNAs and DEGs. CeRNA network where gray circles represent predicted proteins. High-expression of ENSG00000203739/ENSG00000271646 promotes GBM proliferation and invasion by suppressing miR-637 and promoting expression of the putative oncogene CYBRD1. Down-regulation of TPTEP1 fails to adsorb/bind to miR-196a-5p. The overexpression of miR-196a-5p impedes translation of the putative tumor suppressor RUFY2. Dysregulation at both points in the network potentially contributes to progression of GBM. EFNA5, FNB2, ACTR2, EPHA3 also act as putative oncogenes.