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Improving the accuracy of flux balance analysis through the implementation of carbon availability constraints for intracellular reactions. | LitMetric

AI Article Synopsis

  • Constraint-based modeling methods like Flux Balance Analysis (FBA) are used to analyze complex datasets and understand cellular metabolism, but they often produce wide ranges of flux values that lead to uncertainty in interpretations.
  • A new approach called carbon constraint Flux Balance Analysis (ccFBA) refines these flux predictions by applying elemental carbon balance, improving the accuracy of predicted fluxes.
  • ccFBA not only enhances the performance of FBA by providing more reliable results, but can also be used alongside other constraint-based methods for even better insights.

Article Abstract

Constraint-based modeling methods, such as Flux Balance Analysis (FBA), have been extensively used to decipher complex, information rich -omics datasets to elicit system-wide behavioral patterns of cellular metabolism. FBA has been successfully used to gain insight in a wide range of applications, such as range of substrate utilization, product yields and to design metabolic engineering strategies to improve bioprocess performance. A well-known challenge associated with large genome-scale metabolic networks is that they result in underdetermined problem formulations. Consequently, rather than unique solutions, FBA and related methods examine ranges of reaction flux values that are consistent with the studied physiological conditions. The wider the reported flux ranges, the higher the uncertainty in the determination of basic reaction properties, limiting interpretability of and confidence in the results. Herein, we propose a new, computationally efficient approach that refines flux range predictions by constraining reaction fluxes on the basis of the elemental balance of carbon. We compared carbon constraint FBA (ccFBA) against experimentally-measured intracellular fluxes using the latest CHO GEM (iCHO1766) and were able to substantially improve the accuracy of predicted flux values compared with FBA. ccFBA can be used as a stand-alone method but is also compatible with and complimentary to other constraint-based approaches.

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Source
http://dx.doi.org/10.1002/bit.27025DOI Listing

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