Literature DB >> 16986629

Unravelling the regulatory structure of biochemical networks using stimulus response experiments and large-scale model selection.

S A Wahl1, M D Haunschild, M Oldiges, W Wiechert.   

Abstract

To unravel the complex in vivo regulatory interdependences of biochemical networks, experiments with the living organism are absolutely necessary. Stimulus response experiments (SREs) have become increasingly popular in recent years. The response of metabolite concentrations from all major parts of the central metabolism is monitored over time by modem analytical methods, producing several thousand data points. SREs are applied to determine enzyme kinetic parameters and to find unknown enzyme regulatory mechanisms. Owing to the complex regulatory structure of metabolic networks and the amount of measured data, the evaluation of an SRE has to be extensively supported by modelling. If the enzyme regulatory mechanisms are part of the investigation, a large number of models with different enzyme kinetics have to be tested for their ability to reproduce the observed behaviour. In this contribution, a systematic model-building process for data-driven exploratory modelling is introduced with the aim of discovering essential features of the biological system. The process is based on data pre-processing, correlation-based hypothesis generation, automatic model family generation, large-scale model selection and statistical analysis of the best-fitting models followed by an extraction of common features. It is illustrated by the example of the aromatic amino acid synthesis pathway in Escherichia coli.

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Year:  2006        PMID: 16986629     DOI: 10.1049/ip-syb:20050089

Source DB:  PubMed          Journal:  Syst Biol (Stevenage)        ISSN: 1741-2471


  6 in total

Review 1.  Fluxomics: mass spectrometry versus quantitative imaging.

Authors:  Wolfgang Wiechert; Oliver Schweissgut; Hitomi Takanaga; Wolf B Frommer
Journal:  Curr Opin Plant Biol       Date:  2007-05-03       Impact factor: 7.834

2.  Model-driven analysis of experimentally determined growth phenotypes for 465 yeast gene deletion mutants under 16 different conditions.

Authors:  Evan S Snitkin; Aimée M Dudley; Daniel M Janse; Kaisheen Wong; George M Church; Daniel Segrè
Journal:  Genome Biol       Date:  2008-09-22       Impact factor: 13.583

3.  Effective Estimation of Dynamic Metabolic Fluxes Using (13)C Labeling and Piecewise Affine Approximation: From Theory to Practical Applicability.

Authors:  Robin Schumacher; S Aljoscha Wahl
Journal:  Metabolites       Date:  2015-12-04

4.  13C labeling experiments at metabolic nonstationary conditions: an exploratory study.

Authors:  Sebastian Aljoscha Wahl; Katharina Nöh; Wolfgang Wiechert
Journal:  BMC Bioinformatics       Date:  2008-03-18       Impact factor: 3.169

5.  Reverse engineering cellular networks with information theoretic methods.

Authors:  Alejandro F Villaverde; John Ross; Julio R Banga
Journal:  Cells       Date:  2013-05-10       Impact factor: 6.600

6.  Learning stochastic process-based models of dynamical systems from knowledge and data.

Authors:  Jovan Tanevski; Ljupčo Todorovski; Sašo Džeroski
Journal:  BMC Syst Biol       Date:  2016-03-22
  6 in total

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