Quantitative Flux Coupling Analysis
M. Tefagh and S. Boyd
Journal of Mathematical Biology, 78(5): 1459-1484, 2019.
Manuscript
QFCA
Flux coupling analysis (FCA) aims to describe the functional dependencies among reactions
in a metabolic network. Currently studied coupling relations are qualitative in the sense that
they identify pairs of reactions for which the activity of one reaction necessitates the activity
of the other one, but without giving any numerical bounds relating the possible activity rates.
The potential applications of FCA are heavily investigated, however apart from some trivial
cases there is no clue of what bottleneck in the metabolic network causes each dependency.
In this article, we introduce a quantitative approach to the same flux coupling problem named
quantitative flux coupling analysis (QFCA). It generalizes the current concepts as we
show that all the qualitative information provided by FCA is readily available in the quantitative
flux coupling equations of QFCA, without the need for any additional analysis. Moreover, we design
a simple algorithm to efficiently identify these flux coupling equations which scales up to the
genome-scale metabolic networks with thousands of reactions and metabolites in an effective way.
Furthermore, this framework enables us to quantify the strength of the flux coupling relations.
We also provide different biologically meaningful interpretations, including one which gives
an intuitive certificate of precisely which metabolites in the network enforce each flux coupling
relation. Eventually, we conclude by suggesting the possible application of QFCA to the metabolic
gap-filling problem, which we only begin to address here and is left for future research to further
investigate.
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