Selecting biologically informative genes in co-expression networks with a centrality score

Biol Direct. 2014 Jun 19:9:12. doi: 10.1186/1745-6150-9-12.

Abstract

Background: Measures of node centrality in biological networks are useful to detect genes with critical functional roles. In gene co-expression networks, highly connected genes (i.e., candidate hubs) have been associated with key disease-related pathways. Although different approaches to estimating gene centrality are available, their potential biological relevance in gene co-expression networks deserves further investigation. Moreover, standard measures of gene centrality focus on binary interaction networks, which may not always be suitable in the context of co-expression networks. Here, I also investigate a method that identifies potential biologically meaningful genes based on a weighted connectivity score and indicators of statistical relevance.

Results: The method enables a characterization of the strength and diversity of co-expression associations in the network. It outperformed standard centrality measures by highlighting more biologically informative genes in different gene co-expression networks and biological research domains. As part of the illustration of the gene selection potential of this approach, I present an application case in zebrafish heart regeneration. The proposed technique predicted genes that are significantly implicated in cellular processes required for tissue regeneration after injury.

Conclusions: A method for selecting biologically informative genes from gene co-expression networks is provided, together with free open software.

Publication types

  • Evaluation Study
  • Research Support, Non-U.S. Gov't

MeSH terms

  • Animals
  • Gene Expression Profiling / methods*
  • Gene Regulatory Networks
  • Heart / physiology*
  • Myocardium / metabolism
  • Regeneration*
  • Zebrafish / genetics*
  • Zebrafish / metabolism
  • Zebrafish / physiology*