Sparsity as Cellular Objective to Infer Directed Metabolic Networks from Steady-State Metabolome Data: A Theoretical Analysis

被引:9
作者
Oksuz, Melik [1 ,2 ]
Sadikoglu, Hasan [2 ]
Cakir, Tunahan [1 ]
机构
[1] Gebze Inst Technol, Dept Bioengn, TR-41400 Gebze, Kocaeli, Turkey
[2] Gebze Inst Technol, Dept Chem Engn, TR-41400 Gebze, Kocaeli, Turkey
关键词
GENE REGULATORY NETWORKS; RECONSTRUCTION; YEAST;
D O I
10.1371/journal.pone.0084505
中图分类号
O [数理科学和化学]; P [天文学、地球科学]; Q [生物科学]; N [自然科学总论];
学科分类号
07 ; 0710 ; 09 ;
摘要
Since metabolome data are derived from the underlying metabolic network, reverse engineering of such data to recover the network topology is of wide interest. Lyapunov equation puts a constraint to the link between data and network by coupling the covariance of data with the strength of interactions (Jacobian matrix). This equation, when expressed as a linear set of equations at steady state, constitutes a basis to infer the network structure given the covariance matrix of data. The sparse structure of metabolic networks points to reactions which are active based on minimal enzyme production, hinting at sparsity as a cellular objective. Therefore, for a given covariance matrix, we solved Lyapunov equation to calculate Jacobian matrix by a simultaneous use of minimization of Euclidean norm of residuals and maximization of sparsity (the number of zeros in Jacobian matrix) as objective functions to infer directed small-scale networks from three kingdoms of life (bacteria, fungi, mammalian). The inference performance of the approach was found to be promising, with zero False Positive Rate, and almost one True positive Rate. The effect of missing data on results was additionally analyzed, revealing superiority over similarity-based approaches which infer undirected networks. Our findings suggest that the covariance of metabolome data implies an underlying network with sparsest pattern. The theoretical analysis forms a framework for further investigation of sparsity-based inference of metabolic networks from real metabolome data.
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页数:7
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共 33 条
[1]   Modelling of the coupling between brain electrical activity and metabolism [J].
Aubert, A ;
Costalat, R ;
Valabrègue, R .
ACTA BIOTHEORETICA, 2001, 49 (04) :301-326
[2]   The nature of systems biology [J].
Bruggeman, Frank J. ;
Westerhoff, Hans V. .
TRENDS IN MICROBIOLOGY, 2007, 15 (01) :45-50
[3]   Metabolic pathway analysis of yeast strengthens the bridge between transcriptomics and metabolic networks [J].
Çakir, T ;
Kirdar, B ;
Ülgen, KÖ .
BIOTECHNOLOGY AND BIOENGINEERING, 2004, 86 (03) :251-260
[4]   Metabolic network discovery through reverse engineering of metabolome data [J].
Cakir, Tunahan ;
Hendriks, Margriet M. W. B. ;
Westerhuis, Johan A. ;
Smilde, Age K. .
METABOLOMICS, 2009, 5 (03) :318-329
[5]   Dynamic modeling of the central carbon metabolism of Escherichia coli [J].
Chassagnole, C ;
Noisommit-Rizzi, N ;
Schmid, JW ;
Mauch, K ;
Reuss, M .
BIOTECHNOLOGY AND BIOENGINEERING, 2002, 79 (01) :53-73
[6]   Discovery of meaningful associations in genomic data using partial correlation coefficients [J].
de la Fuente, A ;
Bing, N ;
Hoeschele, I ;
Mendes, P .
BIOINFORMATICS, 2004, 20 (18) :3565-3574
[7]   Linking the genes: inferring quantitative gene networks from microarray data [J].
de la Fuente, A ;
Brazhnik, P ;
Mendes, P .
TRENDS IN GENETICS, 2002, 18 (08) :395-398
[8]   Advantages and limitations of current network inference methods [J].
De Smet, Riet ;
Marchal, Kathleen .
NATURE REVIEWS MICROBIOLOGY, 2010, 8 (10) :717-729
[9]   Reverse engineering of metabolic networks, a critical assessment [J].
Hendrickx, Diana M. ;
Hendriks, Margriet M. W. B. ;
Eilers, Paul H. C. ;
Smilde, Age K. ;
Hoefsloot, Huub C. J. .
MOLECULAR BIOSYSTEMS, 2011, 7 (02) :511-520
[10]   Untangling the wires: A strategy to trace functional interactions in signaling and gene networks [J].
Kholodenko, BN ;
Kiyatkin, A ;
Bruggeman, FJ ;
Sontag, E ;
Westerhoff, HV ;
Hoek, JB .
PROCEEDINGS OF THE NATIONAL ACADEMY OF SCIENCES OF THE UNITED STATES OF AMERICA, 2002, 99 (20) :12841-12846