Computational methods to identify metabolic sub-networks based on metabolomic profiles

Brief Bioinform. 2017 Jan;18(1):43-56. doi: 10.1093/bib/bbv115. Epub 2016 Jan 27.

Abstract

Untargeted metabolomics makes it possible to identify compounds that undergo significant changes in concentration in different experimental conditions. The resulting metabolomic profile characterizes the perturbation concerned, but does not explain the underlying biochemical mechanisms. Bioinformatics methods make it possible to interpret results in light of the whole metabolism. This knowledge is modelled into a network, which can be mined using algorithms that originate in graph theory. These algorithms can extract sub-networks related to the compounds identified. Several attempts have been made to adapt them to obtain more biologically meaningful results. However, there is still no consensus on this kind of analysis of metabolic networks. This review presents the main graph approaches used to interpret metabolomic data using metabolic networks. Their advantages and drawbacks are discussed, and the impacts of their parameters are emphasized. We also provide some guidelines for relevant sub-network extraction and also suggest a range of applications for most methods.

Keywords: graph algorithm; metabolic network; metabolomics; path search; sub-network extraction.

Publication types

  • Review

MeSH terms

  • Algorithms
  • Computational Biology
  • Metabolic Networks and Pathways
  • Metabolomics*