| Literature DB >> 29298665 |
Fang-Hui Ren1, Hong Yang2, Rong-Quan He3, Jing-Ning Lu4, Xing-Gu Lin3, Hai-Wei Liang1, Yi-Wu Dang1, Zhen-Bo Feng1, Gang Chen5, Dian-Zhong Luo6.
Abstract
BACKGROUND: Currently, some studies have demonstrated that miR-34a could serve as a suppressor of several cancers including hepatocellular carcinoma (HCC). Previously, we discovered that miR-34a was downregulated in HCC and involved in the tumorigenesis and progression of HCC; however, the mechanism remains unclear. The purpose of this study was to estimate the expression of miR-34a in HCC by applying the microarray profiles and analyzing the predicted targets of miR-34a and their related biological pathways of HCC.Entities:
Keywords: Gene expression omnibus; Gene ontology; Hepatocellular carcinoma; Network analysis; miRNA-34a
Mesh:
Substances:
Year: 2018 PMID: 29298665 PMCID: PMC5753510 DOI: 10.1186/s12885-017-3941-x
Source DB: PubMed Journal: BMC Cancer ISSN: 1471-2407 Impact factor: 4.430
Fig. 1Flow chart of the natural language processing (NLP) analysis of hepatocellular carcinoma
Characteristics of miR-34a gene expression used in the analysis of GEO datasets
| GEO accession | Author | Sample size | Country | Platform | |
|---|---|---|---|---|---|
| HCC patients | Healthy controls | ||||
| GSE10694 | Gu et al. | 78 | 88 | China | GPL6542 |
| GSE12717 | Su et al. | 10 | 6 | China | GPL7274 |
| GSE22058 | Burchard | 73 | 73 | USA | GPL10457 |
| GSE21362 | Sato et al. | 96 | 96 | Japan | GPL10312 |
| GSE31383 | Hoshida et al. | 9 | 10 | USA | GPL10122 |
| GSE36915 | Lee et al. | 68 | 21 | Taiwan | GPL8179 |
| GSE40744 | Farci et al. | 14 | 12 | USA | GPL14613 |
| GSE41874 | Okano et al. | 6 | 4 | Japan | GPL7722 |
| GSE64632 | Selaru et al. | 6 | 6 | USA | GPL18116 |
| GSE67882 | Banerjee et al. | 4 | 8 | India | GPL10850 |
| GSE69580 | Hung et al. | 5 | 5 | Taiwan | GPL10850 |
| GSE20594 | Hoshida et al. | 45 | 32 | USA | GPL10122 |
| GSE67138 | Chuang et al. | 23 | 34 | USA | GPL8786 |
| GSE67139 | Chuang et al. | 63 | 57 | USA | GPL8786 |
Fig. 2Forest plot showing SMD of miR-34a expression between HCC tissues and corresponding normal tissues
Fig. 3Forest plot showing the association between miR-34a expression and HCC clinocopathologic characteristics. a Forest plot showing SMD of miR-34a expression in HCC tissues with or without vascular invasion. b Forest plot showing SMD of miR-34a expression in HCC tissues with or without cirrhosis. c Forest plot showing SMD of miR-34a expression in HCC tissues with or without metastasis
Pathway analysis of miR-34a-related genes
| term | count | P value | genes |
|---|---|---|---|
| hsa04510:Focal adhesion | 8 | 5.09E-04 | CCND1, MAP2K1, PGF, BCL2, MET, VEGFA, PDGFRA, RELN |
| hsa04115:p53 signaling pathway | 5 | 0.001385856 | CCNE2, CCND1, SERPINE1, CDK6, IGFBP3 |
| hsa04110:Cell cycle | 6 | 0.001921952 | CCNE2, E2F3, CCND1, E2F5, CDK6, CDC25A |
| hsa04060:Cytokine-cytokine receptor interaction | 6 | 0.039495189 | CCL22, MET, VEGFA, PDGFRA, KITLG, KIT |
| hsa04330:Notch signaling pathway | 3 | 0.045372273 | NOTCH2, NOTCH1, JAG1 |
The genes were obtained from the natural language processing (NLP) analysis and 5 signaling pathways were significant (P < = 0.05)
Fig. 4Network analysis and connectivity analysis of miR-34a targets. a Network analysis of miR-34a targets. Brown represents association, green represents inhibition and blue represents activation. b Connectivity analysis of miR-34a targets. The connectivity of Bcl-2 is the highest one which has a total of twenty-two related-genes (z-test, P = 0.0037)
Fig. 5Integrative -analysis of miR-34a target genes and the NLP results. Sixty-nine overlapping genes and their functional pathway that are not only associated with the molecular mechanism of HCC but also are the potential miR-34a target genes were obtained in this final integrative-analysis