The SuBliMinaL Toolbox: automating steps in the reconstruction of metabolic networks.

Neil Swainston, Kieran Smallbone, Pedro Mendes, Douglas Kell, Norman Paton

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    Abstract

    The generation and use of metabolic network reconstructions has increased over recent years. The development of such reconstructions has typically involved a time-consuming, manual process. Recent work has shown that steps undertaken in reconstructing such metabolic networks are amenable to automation. The SuBliMinaL Toolbox (http://www.mcisb.org/subliminal/) facilitates the reconstruction process by providing a number of independent modules to perform common tasks, such as generating draft reconstructions, determining metabolite protonation state, mass and charge balancing reactions, suggesting intracellular compartmentalisation, adding transport reactions and a biomass function, and formatting the reconstruction to be used in third-party analysis packages. The individual modules manipulate reconstructions encoded in Systems Biology Markup Language (SBML), and can be chained to generate a reconstruction pipeline, or used individually during a manual curation process. This work describes the individual modules themselves, and a study in which the modules were used to develop a metabolic reconstruction of Saccharomyces cerevisiae from the existing data resources KEGG and MetaCyc. The automatically generated reconstruction is analysed for blocked reactions, and suggestions for future improvements to the toolbox are discussed.
    Original languageEnglish
    Pages (from-to)186
    JournalJournal of integrative bioinformatics
    Volume8
    Issue number2
    DOIs
    Publication statusPublished - 2011

    Research Beacons, Institutes and Platforms

    • Manchester Institute of Biotechnology

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