Abstract
AbstractFluxomics offers a direct readout of metabolic state but relies on indirect measurement. Stable isotope tracers imprint flux-dependent isotope labeling patterns on metabolites we measure; however, the relationship between labeling patterns and fluxes remains elusive. Here we innovate a two-stage machine learning framework termed ML-Flux that streamlines metabolic flux quantitation from isotope tracing. We train machine learning models by simulating atom transitions across five universal metabolic models starting from 2613C-glucose,2H-glucose, and13C-glutamine tracers within feasible flux space. ML-Flux employs deep-learning-based imputation to take variable measurements of labeling patterns as input and successive neural networks to convert the ensuing comprehensive labeling information into metabolic fluxes. Using ML-Flux with multi-isotope tracing, we obtain fluxes through central carbon metabolism that are comparable to those from a least-squares method but orders-of-magnitude faster. ML-Flux is deployed as a webtool to expand the accessibility of metabolic flux quantitation and afford actionable information on metabolism.
Publisher
Cold Spring Harbor Laboratory
Reference34 articles.
1. Near-equilibrium glycolysis supports metabolic homeostasis and energy yield;Nature Chemical Biology 2019 15:10,2019
2. The BioCyc collection of microbial genomes and metabolic pathways;Brief Bioinform,2019
3. BiGG Models: A platform for integrating, standardizing and sharing genome-scale models
4. KEGG: Kyoto Encyclopedia of Genes and Genomes
5. Ultra-high-performance liquid chromatography high-resolution mass spectrometry variants for metabolomics research;Nature Methods 2021 18:7,2021
Cited by
1 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献