Literature DB >> 17066125

Evaluation of regression models in metabolic physiology: predicting fluxes from isotopic data without knowledge of the pathway.

Maciek R Antoniewicz1, Gregory Stephanopoulos, Joanne K Kelleher.   

Abstract

This study explores the ability of regression models, with no knowledge of the underlying physiology, to estimate physiological parameters relevant for metabolism and endocrinology. Four regression models were compared: multiple linear regression (MLR), principal component regression (PCR), partial least-squares regression (PLS) and regression using artificial neural networks (ANN). The pathway of mammalian gluconeogenesis was analyzed using [U-(13)C]glucose as tracer. A set of data was simulated by randomly selecting physiologically appropriate metabolic fluxes for the 9 steps of this pathway as independent variables. The isotope labeling patterns of key intermediates in the pathway were then calculated for each set of fluxes, yielding 29 dependent variables. Two thousand sets were created, allowing independent training and test data. Regression models were asked to predict the nine fluxes, given only the 29 isotopomers. For large training sets (>50) the artificial neural network model was superior, capturing 95% of the variability in the gluconeogenic flux, whereas the three linear models captured only 75%. This reflects the ability of neural networks to capture the inherent non-linearities of the metabolic system. The effect of error in the variables and the addition of random variables to the data set was considered. Model sensitivities were used to find the isotopomers that most influenced the predicted flux values. These studies provide the first test of multivariate regression models for the analysis of isotopomer flux data. They provide insight for metabolomics and the future of isotopic tracers in metabolic research where the underlying physiology is complex or unknown.

Entities:  

Year:  2006        PMID: 17066125      PMCID: PMC1622920          DOI: 10.1007/s11306-006-0018-2

Source DB:  PubMed          Journal:  Metabolomics        ISSN: 1573-3882            Impact factor:   4.290


  18 in total

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6.  Modeling isotopomer distributions in biochemical networks using isotopomer mapping matrices.

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Journal:  Biotechnol Bioeng       Date:  1997-09-20       Impact factor: 4.530

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8.  The reciprocal pool model for the measurement of gluconeogenesis by use of [U-(13)C]glucose.

Authors:  M W Haymond; A L Sunehag
Journal:  Am J Physiol Endocrinol Metab       Date:  2000-01       Impact factor: 4.310

Review 9.  Estimating gluconeogenesis with [U-13C]glucose: molecular condensation requires a molecular approach.

Authors:  J K Kelleher
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Journal:  Nat Biotechnol       Date:  2004-12       Impact factor: 54.908

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7.  Projection to latent pathways (PLP): a constrained projection to latent variables (PLS) method for elementary flux modes discrimination.

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8.  Flux prediction using artificial neural network (ANN) for the upper part of glycolysis.

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