| Literature DB >> 29745833 |
Wentao Dai1,2, Quanxue Li1,3, Bing-Ya Liu4, Yi-Xue Li5,6,7,8, Yuan-Yuan Li9,10,11,12.
Abstract
BACKGROUND: Gastric Carcinoma is one of the most lethal cancer around the world, and is also the most common cancers in Eastern Asia. A lot of differentially expressed genes have been detected as being associated with Gastric Carcinoma (GC) progression, however, little is known about the underlying dysfunctional regulation mechanisms. To address this problem, we previously developed a differential networking approach that is characterized by involving differential coexpression analysis (DCEA), stage-specific gene regulatory network (GRN) modelling and differential regulation networking (DRN) analysis. RESULT: In order to implement differential networking meta-analysis, we developed a novel framework which integrated the following steps. Considering the complexity and diversity of gastric carcinogenesis, we first collected three datasets (GSE54129, GSE24375 and TCGA-STAD) for Chinese, Korean and American, and aimed to investigate the common dysregulation mechanisms of gastric carcinogenesis across racial groups. Then, we constructed conditional GRNs for gastric cancer corresponding to normal and carcinoma, and prioritized differentially regulated genes (DRGs) and gene links (DRLs) from three datasets separately by using our previously developed differential networking method. Based on our integrated differential regulation information from three datasets and prior knowledge (e.g., transcription factor (TF)-target regulatory relationships and known signaling pathways), we eventually generated testable hypotheses on the regulation mechanisms of two genes, XBP1 and GIF, out of 16 common cross-racial DRGs in gastric carcinogenesis.Entities:
Keywords: Conditional gene regulatory networks (GRN); Cross-racial; Differential networking meta-analysis; Dysfunctional regulation mechanisms; Gastric carcinoma (GC)
Mesh:
Year: 2018 PMID: 29745833 PMCID: PMC5998874 DOI: 10.1186/s12918-018-0564-z
Source DB: PubMed Journal: BMC Syst Biol ISSN: 1752-0509
Fig. 1The intersection and enrichment significance among three DCG sets selected from GSE54129 (Chinese, yellow), GSE24375 (Korean, green) and TCGA-STAD (American, cyan) gastric cancer datasets
Fig. 2The normal and carcinoma conditional gene regulation networks (GRNs) for GSE54129 (Chinese), GSE24375 (Korean) and TCGA-STAD (American) gastric cancer datasets
Statistics of conditional GRNs from three datasets
| GSE54129 | TCGA-STAD | GSE24375 | |||||||
|---|---|---|---|---|---|---|---|---|---|
| GRNs | Links (#) | TFs (#) | Targets (#) | Links (#) | TFs (#) | Targets (#) | Links (#) | TFs (#) | Targets (#) |
| Normal | 1621 | 30 | 1242 | 2109 | 21 | 1462 | 878 | 22 | 507 |
| Carcinoma | 2725 | 30 | 1657 | 1071 | 21 | 797 | 816 | 22 | 564 |
| shared by normal and carcinoma GRNs | 723 | 30 | 972 | 760 | 21 | 718 | 303 | 22 | 331 |
The enrichment of cancer genes and drug targets in conditional GRNs
| GSE54129 | TCGA | GSE24375 | ||||
|---|---|---|---|---|---|---|
| GRNs | Cancer Genes | Drug Targets | Cancer Genes | Drug Targets | Cancer Genes | Drug Targets |
| Normal | 8.40E-10 | 2.84E-13 | 0.00012 | 6.776e-08 | 0.0034 | 0.039 |
| Carcinoma | 2.48E-12 | 2.21E-10 | 2.08E-6 | 4.841e-07 | 0.0015 | 0.0002 |
Enrichment significance (p-value) was calculated by Fisher Exact Test
The top 10 ranked genes from three datasets
| TCGA-STAD | GSE54129 | GSE24375 | ||||||
|---|---|---|---|---|---|---|---|---|
| DRGs | DR_value | rank | DRGs | DR_value | rank | DRGs | DR_value | rank |
|
| 18.45799 | 1 | SLC7A9 | 65.03438 | 1 |
| 3401.341 | 1 |
|
| 15.58216 | 2 |
| 22.26006 | 2 |
| 582.8947 | 2 |
|
| 12.34533 | 3 |
| 20.02962 | 3 |
| 261.5739 | 3 |
|
| 11.85102 | 4 | DHRS11 | 19.11607 | 4 |
| 247.57 | 4 |
| PLAU | 11.5865 | 5 |
| 17.92791 | 5 |
| 132.0578 | 5 |
|
| 11.37501 | 6 |
| 15.36403 | 6 |
| 85.31825 | 6 |
|
| 11.14235 | 7 |
| 15.10191 | 7 |
| 47.91384 | 7 |
| RAB25 | 9.645954 | 8 |
| 13.03145 | 8 |
| 41.98352 | 8 |
|
| 9.191246 | 9 |
| 12.91625 | 9 |
| 37.68406 | 9 |
|
| 8.602126 | 10 |
| 12.84939 | 10 |
| 35.60814 | 10 |
The genes are sorted by DR value. Genes in bold refer to GC-related genes; genes in italic refer to cancer-related genes
Intersection of top ranked DRGs between every two datasets
| Top10 | Top20 | Top30 | Top40 | Top50 | Top100 | |
|---|---|---|---|---|---|---|
|
| 0 | CEBPA |
| CEBPA | CEBPA | CEBPA/GIF/XBP1 |
|
| 0 | GATA6 |
| GATA6 | GATA6/DPP4 | GATA6/GIF/FOSB/XBP1/DPP4/EPAS1/CCND2/MALL |
|
| 0 | 0 |
| GIF/GATA3/PTK7 | GIF/GATA3/PTK7/XBP1 | GIF/GATA3/PTK7/XBP1/IRF1/SOX9/VILL/GALNT3/LGALS4 |
|
| 0 | 0 | 0 | 0 | 0 |
|
GSE54129, GSE24375 and TCGA-STAD collected Chinese, Korean and American gastric cancer samples respectively. The overlaps of top ranked differentially regulated genes (DRGs) between any two datasets (Row 2nd, 3rd and 4th) and between all three datasets (Row 5th) are listed
Fig. 3The hypotheses of dysfunctional regulation mechanisms of gastric carcinogenesis around XBP1. Red ellipses and green rectangles are TFs and targets obtained from our analysis respectively. The red line represents an increased positive regulation from normal to cancer, which also includes a decreased negative regulation; the green line represents a strengthened negative regulation from normal to cancer, which includes a decreased positive regulation as well. The dash line indicates the regulation relationship which exists in all three datasets while with differential regulation efficacy change. The orange ellipses, the white rectangles and the bottom blue rectangles are genes, pathway and cancer related biological processes obtained from the prior knowledge. As for the dark lines, ‘→’ indicates promoted effect; ‘—‘indicts protein-protein interaction; ‘-|’ indicates inhibited effect