| Literature DB >> 24564496 |
Piyush B Madhamshettiwar, Stefan R Maetschke, Melissa J Davis, Mark A Ragan.
Abstract
BACKGROUND: Cell survival and development are orchestrated by complex interlocking programs of gene activation and repression. Understanding how this gene regulatory network (GRN) functions in normal states, and is altered in cancers subtypes, offers fundamental insight into oncogenesis and disease progression, and holds great promise for guiding clinical decisions. Inferring a GRN from empirical microarray gene expression data is a challenging task in cancer systems biology. In recent years, module-based approaches for GRN inference have been proposed to address this challenge. Despite the demonstrated success of module-based approaches in uncovering biologically meaningful regulatory interactions, their application remains limited a single condition, without supporting the comparison of multiple disease subtypes/conditions. Also, their use remains unnecessarily restricted to computational biologists, as accurate inference of modules and their regulators requires integration of diverse tools and heterogeneous data sources, which in turn requires scripting skills, data infrastructure and powerful computational facilities. New analytical frameworks are required to make module-based GRN inference approach more generally useful to the research community.Entities:
Mesh:
Year: 2013 PMID: 24564496 PMCID: PMC3853211 DOI: 10.1186/1471-2105-14-S16-S14
Source DB: PubMed Journal: BMC Bioinformatics ISSN: 1471-2105 Impact factor: 3.169
Figure 1RMaNI workflow. Stages involved in RMaNI workflow. Workflow is divided into three main stages - Data preparation, Inference of modules and regulators, and Integration of module networks and analysis.
Description of the hepatocellular carcinoma microarray dataset.
| Dataset | No. of samples in each condition | Platform | |||
|---|---|---|---|---|---|
| Normal | Cirrhosis | CirrhosisHCC | HCC | ||
| GSE14323 | 19 | 41 | 17 | 38 | HG-U133A |
In the next step, we input dataset to the LeMoNe algorithm to infer modules.
Summary of the datasets used in the study, five sets of normal and subtype pairs data were input to LeMoNe.
| Datasets | No. of DE Genes | No. of Samples |
|---|---|---|
| Normal + cirrhosis | 4000 | 60 |
| Normal + cirrhosisHCC | 4000 | 36 |
| Normal + HCC | 4000 | 57 |
Summary of gene clustering results.
| Conditions | No. of Modules | No. of Genes | Max Module Size | Min Module Size |
|---|---|---|---|---|
| Normal + cirrhosis | 74 | 3794 | 302 | 4 |
| Normal + cirrhosisHCC | 59 | 3813 | 342 | 4 |
| Normal + HCC | 78 | 3772 | 219 | 4 |
TFs that are predicted to have a regulatory role in at least two conditions.
| TFs | Conditions | TGs in cirrhosis | TGs in cirrhosisHCC | TGs in | Total |
|---|---|---|---|---|---|
| CBFB | cirrhosis, cirrhosisHCC, HCC | 144 | 342 | 71 | 557 |
| TCF4 | cirrhosis, HCC | 144 | 0 | 71 | 215 |
| USF2 | cirrhosis, cirrhosisHCC | 144 | 342 | 0 | 486 |
Remaining TFs are unique to individual conditions.
Summary of the modules with highest DE and correlation (best modules).
| Conditions | Total Modules | No. of best Modules | No. of | No. of | No. of |
|---|---|---|---|---|---|
| cirrhosis | 74 | 7 | 200 | 9 | 191 |
| cirrhosisHCC | 59 | 6 | 183 | 11 | 172 |
| HCC | 78 | 6 | 255 | 30 | 225 |
| Total | 211 | 18 | 638 | 50 | 588 |
| Unique | 211 | 50 | 548 | 47 | 548 |
Best modules were selected, for each condition, from all the modules inferred.
Figure 2TF overlap analysis result. Figure illustrates TF overlap analysis results. Three TFs are predicted to have a regulatory role in at least two conditions. Remaining TFs are unique to individual conditions.
Figure 3Hepatocellular carcinoma transcriptional sub-network. The hepatocellular carcinoma sub-network showing TGs (rectangles) and TFs (circles). Node colour gradient: red, up-regulation; green, down-regulation; yellow, no-change. Edge colors: blue, cirrhosis; black, cirrhosisHCC, cyan, HCC.