Mojdeh Faraji1, Eberhard O Voit1. 1. Department of Biomedical Engineering, Georgia Institute of Technology, Atlanta, GA, USA.
Abstract
MOTIVATION: Most metabolic pathways contain more reactions than metabolites and therefore have a wide stoichiometric matrix that corresponds to infinitely many possible flux distributions that are perfectly compatible with the dynamics of the metabolites in a given dataset. This under-determinedness poses a challenge for the quantitative characterization of flux distributions from time series data and thus for the design of adequate, predictive models. Here we propose a method that reduces the degrees of freedom in a stepwise manner and leads to a dynamic flux distribution that is, in a statistical sense, likely to be close to the true distribution. RESULTS: We applied the proposed method to the lignin biosynthesis pathway in switchgrass. The system consists of 16 metabolites and 23 enzymatic reactions. It has seven degrees of freedom and therefore admits a large space of dynamic flux distributions that all fit a set of metabolic time series data equally well. The proposed method reduces this space in a systematic and biologically reasonable manner and converges to a likely dynamic flux distribution in just a few iterations. The estimated solution and the true flux distribution, which is known in this case, show excellent agreement and thereby lend support to the method. AVAILABILITY AND IMPLEMENTATION: The computational model was implemented in MATLAB (version R2014a, The MathWorks, Natick, MA). The source code is available at https://github.gatech.edu/VoitLab/Stepwise-Inference-of-Likely-Dynamic-Flux-Distributions and www.bst.bme.gatech.edu/research.php . CONTACT: mojdeh@gatech.edu or eberhard.voit@bme.gatech.edu. SUPPLEMENTARY INFORMATION: Supplementary data are available at Bioinformatics online.
MOTIVATION: Most metabolic pathways contain more reactions than metabolites and therefore have a wide stoichiometric matrix that corresponds to infinitely many possible flux distributions that are perfectly compatible with the dynamics of the metabolites in a given dataset. This under-determinedness poses a challenge for the quantitative characterization of flux distributions from time series data and thus for the design of adequate, predictive models. Here we propose a method that reduces the degrees of freedom in a stepwise manner and leads to a dynamic flux distribution that is, in a statistical sense, likely to be close to the true distribution. RESULTS: We applied the proposed method to the lignin biosynthesis pathway in switchgrass. The system consists of 16 metabolites and 23 enzymatic reactions. It has seven degrees of freedom and therefore admits a large space of dynamic flux distributions that all fit a set of metabolic time series data equally well. The proposed method reduces this space in a systematic and biologically reasonable manner and converges to a likely dynamic flux distribution in just a few iterations. The estimated solution and the true flux distribution, which is known in this case, show excellent agreement and thereby lend support to the method. AVAILABILITY AND IMPLEMENTATION: The computational model was implemented in MATLAB (version R2014a, The MathWorks, Natick, MA). The source code is available at https://github.gatech.edu/VoitLab/Stepwise-Inference-of-Likely-Dynamic-Flux-Distributions and www.bst.bme.gatech.edu/research.php . CONTACT: mojdeh@gatech.edu or eberhard.voit@bme.gatech.edu. SUPPLEMENTARY INFORMATION: Supplementary data are available at Bioinformatics online.
Authors: Robert V Bruggner; Bernd Bodenmiller; David L Dill; Robert J Tibshirani; Garry P Nolan Journal: Proc Natl Acad Sci U S A Date: 2014-06-16 Impact factor: 11.205
Authors: Mojdeh Faraji; Luis L Fonseca; Luis Escamilla-Treviño; Richard A Dixon; Eberhard O Voit Journal: Biotechnol Biofuels Date: 2015-09-17 Impact factor: 6.040
Authors: Shuzhao Li; Youngja Park; Sai Duraisingham; Frederick H Strobel; Nooruddin Khan; Quinlyn A Soltow; Dean P Jones; Bali Pulendran Journal: PLoS Comput Biol Date: 2013-07-04 Impact factor: 4.475
Authors: Mojdeh Faraji; Luis L Fonseca; Luis Escamilla-Treviño; Jaime Barros-Rios; Nancy Engle; Zamin K Yang; Timothy J Tschaplinski; Richard A Dixon; Eberhard O Voit Journal: Biotechnol Biofuels Date: 2018-02-09 Impact factor: 6.040