English

eXamine: Exploring annotated modules in networks

Computational Engineering, Finance, and Science 2014-07-23 v1 Social and Information Networks Quantitative Methods

Abstract

Background: Biological networks have a growing importance for the interpretation of high-throughput omics data. Integrative network analysis makes use of statistical and combinatorial methods to extract smaller subnetwork modules, and performs enrichment analysis to annotate the modules with ontology terms or other available knowledge. This process results in an annotated module, which retains the original network structure and includes enrichment information as a set system. A major bottleneck is a lack of tools that allow exploring both network structure of extracted modules and its annotations. Results: Thispaperpresentsavisualanalysisapproachthattargetssmallmoduleswithmanyset-based annotations, and which displays the annotations as contours on top of a node-link diagram. We introduce an extension of self-organizing maps to lay out nodes, links, and contours in a unified way. An implementation of this approach is freely available as the Cytoscape app eXamine. Conclusions: eXamine accurately conveys small and annotated modules consisting of several dozens of proteins and annotations. We demonstrate that eXamine facilitates the interpretation of integrative network analysis results in a guided case study. This study has resulted in a novel biological insight regarding the virally-encoded G-protein coupled receptor US28.

Keywords

Cite

@article{arxiv.1407.2101,
  title  = {eXamine: Exploring annotated modules in networks},
  author = {Kasper Dinkla and Mohammed El-Kebir and Cristina-Iulia Bucur and Marco Siderius and Martine J. Smit and Michel A. Westenberg and Gunnar W. Klau},
  journal= {arXiv preprint arXiv:1407.2101},
  year   = {2014}
}

Comments

BioVis 2014 conference

R2 v1 2026-06-22T04:58:16.775Z