Literature DB >> 26474788

iSCHRUNK--In Silico Approach to Characterization and Reduction of Uncertainty in the Kinetic Models of Genome-scale Metabolic Networks.

Stefano Andreozzi1, Ljubisa Miskovic2, Vassily Hatzimanikatis3.   

Abstract

Accurate determination of physiological states of cellular metabolism requires detailed information about metabolic fluxes, metabolite concentrations and distribution of enzyme states. Integration of fluxomics and metabolomics data, and thermodynamics-based metabolic flux analysis contribute to improved understanding of steady-state properties of metabolism. However, knowledge about kinetics and enzyme activities though essential for quantitative understanding of metabolic dynamics remains scarce and involves uncertainty. Here, we present a computational methodology that allow us to determine and quantify the kinetic parameters that correspond to a certain physiology as it is described by a given metabolic flux profile and a given metabolite concentration vector. Though we initially determine kinetic parameters that involve a high degree of uncertainty, through the use of kinetic modeling and machine learning principles we are able to obtain more accurate ranges of kinetic parameters, and hence we are able to reduce the uncertainty in the model analysis. We computed the distribution of kinetic parameters for glucose-fed E. coli producing 1,4-butanediol and we discovered that the observed physiological state corresponds to a narrow range of kinetic parameters of only a few enzymes, whereas the kinetic parameters of other enzymes can vary widely. Furthermore, this analysis suggests which are the enzymes that should be manipulated in order to engineer the reference state of the cell in a desired way. The proposed approach also sets up the foundations of a novel type of approaches for efficient, non-asymptotic, uniform sampling of solution spaces.
Copyright © 2015 International Metabolic Engineering Society. Published by Elsevier Inc. All rights reserved.

Entities:  

Keywords:  Enzyme saturations; Kinetic parameters; Large-scale kinetic models; Machine learning; Monte Carlo sampling; Uncertainty reduction

Mesh:

Substances:

Year:  2015        PMID: 26474788     DOI: 10.1016/j.ymben.2015.10.002

Source DB:  PubMed          Journal:  Metab Eng        ISSN: 1096-7176            Impact factor:   9.783


  17 in total

Review 1.  Metabolic kinetic modeling provides insight into complex biological questions, but hurdles remain.

Authors:  Jonathan Strutz; Jacob Martin; Jennifer Greene; Linda Broadbelt; Keith Tyo
Journal:  Curr Opin Biotechnol       Date:  2019-03-07       Impact factor: 9.740

Review 2.  Constraint Based Modeling Going Multicellular.

Authors:  Patricia do Rosario Martins Conde; Thomas Sauter; Thomas Pfau
Journal:  Front Mol Biosci       Date:  2016-02-10

3.  JuPOETs: a constrained multiobjective optimization approach to estimate biochemical model ensembles in the Julia programming language.

Authors:  David M Bassen; Michael Vilkhovoy; Mason Minot; Jonathan T Butcher; Jeffrey D Varner
Journal:  BMC Syst Biol       Date:  2017-01-25

Review 4.  From correlation to causation: analysis of metabolomics data using systems biology approaches.

Authors:  Antonio Rosato; Leonardo Tenori; Marta Cascante; Pedro Ramon De Atauri Carulla; Vitor A P Martins Dos Santos; Edoardo Saccenti
Journal:  Metabolomics       Date:  2018-02-27       Impact factor: 4.290

Review 5.  Machine Learning Methods for Analysis of Metabolic Data and Metabolic Pathway Modeling.

Authors:  Miroslava Cuperlovic-Culf
Journal:  Metabolites       Date:  2018-01-11

6.  Particle-Based Simulation Reveals Macromolecular Crowding Effects on the Michaelis-Menten Mechanism.

Authors:  Daniel R Weilandt; Vassily Hatzimanikatis
Journal:  Biophys J       Date:  2019-06-25       Impact factor: 4.033

Review 7.  Machine and deep learning meet genome-scale metabolic modeling.

Authors:  Guido Zampieri; Supreeta Vijayakumar; Elisabeth Yaneske; Claudio Angione
Journal:  PLoS Comput Biol       Date:  2019-07-11       Impact factor: 4.475

Review 8.  Genome-scale modeling of yeast: chronology, applications and critical perspectives.

Authors:  Helder Lopes; Isabel Rocha
Journal:  FEMS Yeast Res       Date:  2017-08-01       Impact factor: 2.796

9.  A design-build-test cycle using modeling and experiments reveals interdependencies between upper glycolysis and xylose uptake in recombinant S. cerevisiae and improves predictive capabilities of large-scale kinetic models.

Authors:  Ljubisa Miskovic; Susanne Alff-Tuomala; Keng Cher Soh; Dorothee Barth; Laura Salusjärvi; Juha-Pekka Pitkänen; Laura Ruohonen; Merja Penttilä; Vassily Hatzimanikatis
Journal:  Biotechnol Biofuels       Date:  2017-06-26       Impact factor: 6.040

Review 10.  Machine Learning Applications for Mass Spectrometry-Based Metabolomics.

Authors:  Ulf W Liebal; An N T Phan; Malvika Sudhakar; Karthik Raman; Lars M Blank
Journal:  Metabolites       Date:  2020-06-13
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