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On the identifiability of metabolic network models
- Source :
- Journal of Mathematical Biology, Journal of Mathematical Biology, Springer Verlag (Germany), 2013, 67 (6-7), pp.1795-832. ⟨10.1007/s00285-012-0614-x⟩, Journal of Mathematical Biology, 2013, 67 (6-7), pp.1795-832. ⟨10.1007/s00285-012-0614-x⟩, Journal of Mathematical Biology, 67, 6-7, pp. 1795-832, Journal of Mathematical Biology, 67, 1795-832
- Publication Year :
- 2012
- Publisher :
- Springer Science and Business Media LLC, 2012.
-
Abstract
- Item does not contain fulltext A major problem for the identification of metabolic network models is parameter identifiability, that is, the possibility to unambiguously infer the parameter values from the data. Identifiability problems may be due to the structure of the model, in particular implicit dependencies between the parameters, or to limitations in the quantity and quality of the available data. We address the detection and resolution of identifiability problems for a class of pseudo-linear models of metabolism, so-called linlog models. Linlog models have the advantage that parameter estimation reduces to linear or orthogonal regression, which facilitates the analysis of identifiability. We develop precise definitions of structural and practical identifiability, and clarify the fundamental relations between these concepts. In addition, we use singular value decomposition to detect identifiability problems and reduce the model to an identifiable approximation by a principal component analysis approach. The criterion is adapted to real data, which are frequently scarce, incomplete, and noisy. The test of the criterion on a model with simulated data shows that it is capable of correctly identifying the principal components of the data vector. The application to a state-of-the-art dataset on central carbon metabolism in Escherichia coli yields the surprising result that only 4 out of 31 reactions, and 37 out of 100 parameters, are identifiable. This underlines the practical importance of identifiability analysis and model reduction in the modeling of large-scale metabolic networks. Although our approach has been developed in the context of linlog models, it carries over to other pseudo-linear models, such as generalized mass-action (power-law) models. Moreover, it provides useful hints for the identifiability analysis of more general classes of nonlinear models of metabolism. 01 december 2013
- Subjects :
- Metabolic network modeling
Biology and other natural sciences
Principal component analysis
Metabolic network
Context (language use)
Models, Biological
03 medical and health sciences
0302 clinical medicine
Control
Singular value decomposition
Escherichia coli
Parameter estimation
Econometrics
Computer Simulation
System theory
Total least squares
Renal disorder [IGMD 9]
030304 developmental biology
Mathematics
[SDV.GEN]Life Sciences [q-bio]/Genetics
0303 health sciences
Estimation theory
Applied Mathematics
Linear model
Structural and practical identifiability
Escherichia coli carbon metabolism
Agricultural and Biological Sciences (miscellaneous)
Carbon
Kinetics
Modeling and Simulation
Linear Models
Identifiability
Systems biology
Algorithm
Metabolic Networks and Pathways
030217 neurology & neurosurgery
Subjects
Details
- ISSN :
- 14321416 and 03036812
- Volume :
- 67
- Database :
- OpenAIRE
- Journal :
- Journal of Mathematical Biology
- Accession number :
- edsair.doi.dedup.....d15441ce3e99550822820ed1714f25fb
- Full Text :
- https://doi.org/10.1007/s00285-012-0614-x