Solving the differential biochemical Jacobian from metabolomics covariance data.

High-throughput molecular analysis has become an integral part in organismal systems biology. In contrast, due to a missing systematic linkage of the data with functional and predictive theoretical models of the underlying metabolic network the understanding of the resulting complex data sets is lac...

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Main Authors: Thomas Nägele, Andrea Mair, Xiaoliang Sun, Lena Fragner, Markus Teige, Wolfram Weckwerth
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2014-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC3977476?pdf=render
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spelling doaj-f93c3fdc31554e719d6f5550b7ee0ff92020-11-25T01:27:44ZengPublic Library of Science (PLoS)PLoS ONE1932-62032014-01-0194e9229910.1371/journal.pone.0092299Solving the differential biochemical Jacobian from metabolomics covariance data.Thomas NägeleAndrea MairXiaoliang SunLena FragnerMarkus TeigeWolfram WeckwerthHigh-throughput molecular analysis has become an integral part in organismal systems biology. In contrast, due to a missing systematic linkage of the data with functional and predictive theoretical models of the underlying metabolic network the understanding of the resulting complex data sets is lacking far behind. Here, we present a biomathematical method addressing this problem by using metabolomics data for the inverse calculation of a biochemical Jacobian matrix, thereby linking computer-based genome-scale metabolic reconstruction and in vivo metabolic dynamics. The incongruity of metabolome coverage by typical metabolite profiling approaches and genome-scale metabolic reconstruction was solved by the design of superpathways to define a metabolic interaction matrix. A differential biochemical Jacobian was calculated using an approach which links this metabolic interaction matrix and the covariance of metabolomics data satisfying a Lyapunov equation. The predictions of the differential Jacobian from real metabolomic data were found to be correct by testing the corresponding enzymatic activities. Moreover it is demonstrated that the predictions of the biochemical Jacobian matrix allow for the design of parameter optimization strategies for ODE-based kinetic models of the system. The presented concept combines dynamic modelling strategies with large-scale steady state profiling approaches without the explicit knowledge of individual kinetic parameters. In summary, the presented strategy allows for the identification of regulatory key processes in the biochemical network directly from metabolomics data and is a fundamental achievement for the functional interpretation of metabolomics data.http://europepmc.org/articles/PMC3977476?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Thomas Nägele
Andrea Mair
Xiaoliang Sun
Lena Fragner
Markus Teige
Wolfram Weckwerth
spellingShingle Thomas Nägele
Andrea Mair
Xiaoliang Sun
Lena Fragner
Markus Teige
Wolfram Weckwerth
Solving the differential biochemical Jacobian from metabolomics covariance data.
PLoS ONE
author_facet Thomas Nägele
Andrea Mair
Xiaoliang Sun
Lena Fragner
Markus Teige
Wolfram Weckwerth
author_sort Thomas Nägele
title Solving the differential biochemical Jacobian from metabolomics covariance data.
title_short Solving the differential biochemical Jacobian from metabolomics covariance data.
title_full Solving the differential biochemical Jacobian from metabolomics covariance data.
title_fullStr Solving the differential biochemical Jacobian from metabolomics covariance data.
title_full_unstemmed Solving the differential biochemical Jacobian from metabolomics covariance data.
title_sort solving the differential biochemical jacobian from metabolomics covariance data.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2014-01-01
description High-throughput molecular analysis has become an integral part in organismal systems biology. In contrast, due to a missing systematic linkage of the data with functional and predictive theoretical models of the underlying metabolic network the understanding of the resulting complex data sets is lacking far behind. Here, we present a biomathematical method addressing this problem by using metabolomics data for the inverse calculation of a biochemical Jacobian matrix, thereby linking computer-based genome-scale metabolic reconstruction and in vivo metabolic dynamics. The incongruity of metabolome coverage by typical metabolite profiling approaches and genome-scale metabolic reconstruction was solved by the design of superpathways to define a metabolic interaction matrix. A differential biochemical Jacobian was calculated using an approach which links this metabolic interaction matrix and the covariance of metabolomics data satisfying a Lyapunov equation. The predictions of the differential Jacobian from real metabolomic data were found to be correct by testing the corresponding enzymatic activities. Moreover it is demonstrated that the predictions of the biochemical Jacobian matrix allow for the design of parameter optimization strategies for ODE-based kinetic models of the system. The presented concept combines dynamic modelling strategies with large-scale steady state profiling approaches without the explicit knowledge of individual kinetic parameters. In summary, the presented strategy allows for the identification of regulatory key processes in the biochemical network directly from metabolomics data and is a fundamental achievement for the functional interpretation of metabolomics data.
url http://europepmc.org/articles/PMC3977476?pdf=render
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