| Literature DB >> 31189086 |
Ana Bulović1, Stephan Fischer2, Marc Dinh2, Felipe Golib2, Wolfram Liebermeister3, Christian Poirier2, Laurent Tournier2, Edda Klipp1, Vincent Fromion2, Anne Goelzer4.
Abstract
Resource Balance Analysis (RBA) is a computational method based on resource allocation, which performs accurate quantitative predictions of whole-cell states (i.e. growth rate, metabolic fluxes, abundances of molecular machines including enzymes) across growth conditions. We present an integrated workflow of RBA together with the Python package RBApy. RBApy builds bacterial RBA models from annotated genome-scale metabolic models by adding descriptions of cellular processes relevant for growth and maintenance. The package includes functions for model simulation and calibration and for interfacing to Escher maps and Proteomaps for visualization. We demonstrate that RBApy faithfully reproduces results obtained by a hand-curated and experimentally validated RBA model for Bacillus subtilis. We also present a calibrated RBA model of Escherichia coli generated from scratch, which obtained excellent fits to measured flux values and enzyme abundances. RBApy makes whole-cell modelling accessible for a wide range of bacterial wild-type and engineered strains, as illustrated with a CO2-fixing Escherichia coli strain. AVAILABILITY: RBApy is available at /https://github.com/SysBioInra/RBApy, under the licence GNU GPL version 3, and runs on Linux, Mac and Windows distributions.Entities:
Mesh:
Year: 2019 PMID: 31189086 DOI: 10.1016/j.ymben.2019.06.001
Source DB: PubMed Journal: Metab Eng ISSN: 1096-7176 Impact factor: 9.783