Parallel isotope differential modeling for instationary 13C fluxomics at the genome scale.

Biotechnol Biofuels

Key Laboratory of Information and Computing Science Guizhou Province, Guizhou Normal University, Guiyang, Guizhou China.

Published: June 2020

AI Article Synopsis

  • A detailed understanding of the metabolic fluxome is crucial for enhancing biofuel and biomass production in photosynthetic organisms, and the advanced method of instationary 13C fluxomics is a key approach in this field.
  • The study introduces a new parallelized modeling method for instationary 13C labeling data, reorganizing the elementary metabolite unit (EMU) framework to improve efficiency, allowing for better handling of complex biological networks.
  • This new algorithm significantly speeds up 13C fluxomics modeling, making it more feasible for broad application in metabolic engineering research.

Article Abstract

Background: A precise map of the metabolic fluxome, the closest surrogate to the physiological phenotype, is becoming progressively more important in the metabolic engineering of photosynthetic organisms for biofuel and biomass production. For photosynthetic organisms, the state-of-the-art method for this purpose is instationary 13C fluxomics, which has arisen as a sibling of transcriptomics or proteomics. Instationary 13C data processing requires solving high-dimensional nonlinear differential equations and leads to large computational and time costs when its scope is expanded to a genome-scale metabolic network.

Result: Here, we present a parallelized method to model instationary 13C labeling data. The elementary metabolite unit (EMU) framework is reorganized to allow treating individual mass isotopomers and breaking up of their networks into strongly connected components (SCCs). A variable domain parallel algorithm is introduced to process ordinary differential equations in a parallel way. 15-fold acceleration is achieved for constant-step-size modeling and ~ fivefold acceleration for adaptive-step-size modeling.

Conclusion: This algorithm is universally applicable to isotope granules such as EMUs and cumomers and can substantially accelerate instationary 13C fluxomics modeling. It thus has great potential to be widely adopted in any instationary 13C fluxomics modeling.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC7278083PMC
http://dx.doi.org/10.1186/s13068-020-01737-5DOI Listing

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