Abstract

BackgroundThe ability to perform quantitative studies using isotope tracers and metabolic flux analysis (MFA) is critical for detecting pathway bottlenecks and elucidating network regulation in biological systems, especially those that have been engineered to alter their native metabolic capacities. Mathematically, MFA models are traditionally formulated using separate state variables for reaction fluxes and isotopomer abundances. Analysis of isotope labeling experiments using this set of variables results in a non-convex optimization problem that suffers from both implementation complexity and convergence problems.ResultsThis article addresses the mathematical and computational formulation of 13C MFA models using a new set of variables referred to as fluxomers. These composite variables combine both fluxes and isotopomer abundances, which results in a simply-posed formulation and an improved error model that is insensitive to isotopomer measurement normalization. A powerful fluxomer iterative algorithm (FIA) is developed and applied to solve the MFA optimization problem. For moderate-sized networks, the algorithm is shown to outperform the commonly used 13CFLUX cumomer-based algorithm and the more recently introduced OpenFLUX software that relies upon an elementary metabolite unit (EMU) network decomposition, both in terms of convergence time and output variability.ConclusionsSubstantial improvements in convergence time and statistical quality of results can be achieved by applying fluxomer variables and the FIA algorithm to compute best-fit solutions to MFA models. We expect that the fluxomer formulation will provide a more suitable basis for future algorithms that analyze very large scale networks and design optimal isotope labeling experiments.

Highlights

  • The ability to perform quantitative studies using isotope tracers and metabolic flux analysis (MFA) is critical for detecting pathway bottlenecks and elucidating network regulation in biological systems, especially those that have been engineered to alter their native metabolic capacities

  • We compared our fluxomer iterative algorithm (FIA) algorithm to the widely used MFA software 13CFLUX [17], which relies on the cumomer approach, and to the more recent OpenFLUX [15] software, which is based on the elementary metabolite unit (EMU) [14] approach

  • FIA vs. OpenFLUX Comparison: Lysine Production by C. glutamicum we examine the analysis of the central metabolism of two lysine-overproducing strains of Corynebacterium glutamicum: ATCC 13032 and its PEFTUfbp mutant

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Summary

Introduction

The ability to perform quantitative studies using isotope tracers and metabolic flux analysis (MFA) is critical for detecting pathway bottlenecks and elucidating network regulation in biological systems, especially those that have been engineered to alter their native metabolic capacities. Results: This article addresses the mathematical and computational formulation of 13C MFA models using a new set of variables referred to as fluxomers. The step in the progression of metabolic pathway research involves quantification of the rates of these various chemical reactions, known as “fluxes”. The values of these rates are affected by various environmental conditions and can change rapidly in response to perturbations. This, implies that the rates of their input and output reactions must balance The latter imposes a set of linear constraints on the metabolic fluxes, known as “stoichiometric balance equations” [4]. In order to overcome this lack of information, additional constraints must be provided to the stoichiometric mathematical model to estimate the values of the network fluxes [5]

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