Literature DB >> 25315283

MetDFBA: incorporating time-resolved metabolomics measurements into dynamic flux balance analysis.

A Marcel Willemsen1, Diana M Hendrickx, Huub C J Hoefsloot, Margriet M W B Hendriks, S Aljoscha Wahl, Bas Teusink, Age K Smilde, Antoine H C van Kampen.   

Abstract

Understanding cellular adaptation to environmental changes is one of the major challenges in systems biology. To understand how cellular systems react towards perturbations of their steady state, the metabolic dynamics have to be described. Dynamic properties can be studied with kinetic models but development of such models is hampered by limited in vivo information, especially kinetic parameters. Therefore, there is a need for mathematical frameworks that use a minimal amount of kinetic information. One of these frameworks is dynamic flux balance analysis (DFBA), a method based on the assumption that cellular metabolism has evolved towards optimal changes to perturbations. However, DFBA has some limitations. It is less suitable for larger systems because of the high number of parameters to estimate and the computational complexity. In this paper, we propose MetDFBA, a modification of DFBA, that incorporates measured time series of both intracellular and extracellular metabolite concentrations, in order to reduce both the number of parameters to estimate and the computational complexity. MetDFBA can be used to estimate dynamic flux profiles and, in addition, test hypotheses about metabolic regulation. In a first case study, we demonstrate the validity of our method by comparing our results to flux estimations based on dynamic 13C MFA measurements, which we considered as experimental reference. For these estimations time-resolved metabolomics data from a feast-famine experiment with Penicillium chrysogenum was used. In a second case study, we used time-resolved metabolomics data from glucose pulse experiments during aerobic growth of Saccharomyces cerevisiae to test various metabolic objectives.

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Year:  2014        PMID: 25315283     DOI: 10.1039/c4mb00510d

Source DB:  PubMed          Journal:  Mol Biosyst        ISSN: 1742-2051


  10 in total

Review 1.  Metabolite secretion in microorganisms: the theory of metabolic overflow put to the test.

Authors:  Farhana R Pinu; Ninna Granucci; James Daniell; Ting-Li Han; Sonia Carneiro; Isabel Rocha; Jens Nielsen; Silas G Villas-Boas
Journal:  Metabolomics       Date:  2018-03-02       Impact factor: 4.290

2.  A Practical Guide to Integrating Multimodal Machine Learning and Metabolic Modeling.

Authors:  Supreeta Vijayakumar; Giuseppe Magazzù; Pradip Moon; Annalisa Occhipinti; Claudio Angione
Journal:  Methods Mol Biol       Date:  2022

Review 3.  Genome-scale modelling of microbial metabolism with temporal and spatial resolution.

Authors:  Michael A Henson
Journal:  Biochem Soc Trans       Date:  2015-12       Impact factor: 5.407

4.  Creation and analysis of biochemical constraint-based models using the COBRA Toolbox v.3.0.

Authors:  Laurent Heirendt; Sylvain Arreckx; Thomas Pfau; Sebastián N Mendoza; Anne Richelle; Almut Heinken; Hulda S Haraldsdóttir; Jacek Wachowiak; Sarah M Keating; Vanja Vlasov; Stefania Magnusdóttir; Chiam Yu Ng; German Preciat; Alise Žagare; Siu H J Chan; Maike K Aurich; Catherine M Clancy; Jennifer Modamio; John T Sauls; Alberto Noronha; Aarash Bordbar; Benjamin Cousins; Diana C El Assal; Luis V Valcarcel; Iñigo Apaolaza; Susan Ghaderi; Masoud Ahookhosh; Marouen Ben Guebila; Andrejs Kostromins; Nicolas Sompairac; Hoai M Le; Ding Ma; Yuekai Sun; Lin Wang; James T Yurkovich; Miguel A P Oliveira; Phan T Vuong; Lemmer P El Assal; Inna Kuperstein; Andrei Zinovyev; H Scott Hinton; William A Bryant; Francisco J Aragón Artacho; Francisco J Planes; Egils Stalidzans; Alejandro Maass; Santosh Vempala; Michael Hucka; Michael A Saunders; Costas D Maranas; Nathan E Lewis; Thomas Sauter; Bernhard Ø Palsson; Ines Thiele; Ronan M T Fleming
Journal:  Nat Protoc       Date:  2019-03       Impact factor: 13.491

5.  A Strategy for Functional Interpretation of Metabolomic Time Series Data in Context of Metabolic Network Information.

Authors:  Thomas Nägele; Lisa Fürtauer; Matthias Nagler; Jakob Weiszmann; Wolfram Weckwerth
Journal:  Front Mol Biosci       Date:  2016-03-07

6.  Dynamic flux balance modeling to increase the production of high-value compounds in green microalgae.

Authors:  Robert J Flassig; Melanie Fachet; Kai Höffner; Paul I Barton; Kai Sundmacher
Journal:  Biotechnol Biofuels       Date:  2016-08-04       Impact factor: 6.040

7.  Elucidating dynamic metabolic physiology through network integration of quantitative time-course metabolomics.

Authors:  Aarash Bordbar; James T Yurkovich; Giuseppe Paglia; Ottar Rolfsson; Ólafur E Sigurjónsson; Bernhard O Palsson
Journal:  Sci Rep       Date:  2017-04-07       Impact factor: 4.379

8.  Escherichia coli metabolism under short-term repetitive substrate dynamics: adaptation and trade-offs.

Authors:  Eleni Vasilakou; Mark C M van Loosdrecht; S Aljoscha Wahl
Journal:  Microb Cell Fact       Date:  2020-05-29       Impact factor: 5.328

9.  Dynamic elementary mode modelling of non-steady state flux data.

Authors:  Abel Folch-Fortuny; Bas Teusink; Huub C J Hoefsloot; Age K Smilde; Alberto Ferrer
Journal:  BMC Syst Biol       Date:  2018-06-18

Review 10.  Metabolic Modelling as a Framework for Metabolomics Data Integration and Analysis.

Authors:  Svetlana Volkova; Marta R A Matos; Matthias Mattanovich; Igor Marín de Mas
Journal:  Metabolites       Date:  2020-07-24
  10 in total

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