ecmtool: fast and memory-efficient enumeration of elementary conversion modes

Author:

Buchner Bianca1,Clement Tom J2,de Groot Daan H3,Zanghellini Jürgen4ORCID

Affiliation:

1. acib GmbH, Austrian Centre of Industrial Biotechnology , 1190 Vienna, Austria

2. Systems Biology Lab, Vrije Universiteit , 1081HV Amsterdam, The Netherlands

3. Biozentrum, Swiss Institute of Bioinformatics, University of Basel , 4056 Basel, Switzerland

4. Department of Analytical Chemistry, University of Vienna , 1090 Vienna, Austria

Abstract

AbstractMotivationCharacterizing all steady-state flux distributions in metabolic models remains limited to small models due to the explosion of possibilities. Often it is sufficient to look only at all possible overall conversions a cell can catalyze ignoring the details of intracellular metabolism. Such a characterization is achieved by elementary conversion modes (ECMs), which can be conveniently computed with ecmtool. However, currently, ecmtool is memory intensive, and it cannot be aided appreciably by parallelization.ResultsWe integrate mplrs—a scalable parallel vertex enumeration method—into ecmtool. This speeds up computation, drastically reduces memory requirements and enables ecmtool’s use in standard and high-performance computing environments. We show the new capabilities by enumerating all feasible ECMs of the near-complete metabolic model of the minimal cell JCVI-syn3.0. Despite the cell’s minimal character, the model gives rise to 4.2×109 ECMs and still contains several redundant sub-networks.Availability and implementationecmtool is available at https://github.com/SystemsBioinformatics/ecmtool.Supplementary informationSupplementary data are available at Bioinformatics online.

Publisher

Oxford University Press (OUP)

Subject

Computational Mathematics,Computational Theory and Mathematics,Computer Science Applications,Molecular Biology,Biochemistry,Statistics and Probability

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