Moiety Modeling Framework for Deriving Moiety Abundances from Mass Spectrometry Measured Isotopologues
Moiety Modeling Framework for Deriving Moiety Abundances from Mass Spectrometry Measured Isotopologues
Abstract BackgroundStable isotope tracing can follow individual atoms through metabolic transformations through the detection of the incorporation of stable isotope within metabolites. This resulting data can be interpreted in terms related to metabolic flux. However, detection of a stable isotope in metabolites by mass spectrometry produces a profile of isotopologue peaks that requires deconvolution to ascertain the localization of isotope incorporation. ResultsTo aid the interpretation of the mass spectroscopy isotopologue profile, we have developed a moiety modeling framework for deconvoluting metabolite isotopologue profiles involving single and multiple isotope tracers. This moiety modeling framework provides facilities for moiety model representation, moiety model optimization, and moiety model selection. The moiety_modeling package was developed from the idea of metabolite decomposition into moiety units based on metabolic transformations, i.e. a moiety model. A SAGA-optimize package, solving a boundary-value inverse problem through a combined simulated annealing and genetic algorithm, was developed for model optimization. Additional optimization methods from the Python scipy library are utilized as well. Several forms of the Akaike information criterion and Bayesian information criterion are provided for selecting between moiety models. Moiety models and associated isotopologue data are defined in the JSON format.By testing the moiety modeling framework on the timecourses of 13C isotopologue data for UDP-N-acetyl-D-glucosamine (UDP-GlcNAc) in human prostate cancer LnCaP-LN3 cells, we were able to confirm its robust performance in isotopologue deconvolution and moiety model selection. ConclusionsSAGA-optimize is a useful Python package for solving boundary-value inverse problems, and the moiety_modeling package is an easy-to-use tool for mass spectroscopy isotopologue profile deconvolution involving single and multiple isotope tracers. Both packages are freely freely available on GitHub and via the Python Package Index.
Moseley Hunter N.B.、Jin Huan
Department of Molecular & Cellular Biochemistry, University of Kentucky||Markey Cancer Center, University of Kentucky||Resource Center for Stable Isotope Resolved Metabolomics, University of Kentucky||Institute for Biomedical Informatics, University of KentuckyDepartment of Toxicology and Cancer Biology, University of Kentucky
生物科学研究方法、生物科学研究技术生物化学生物物理学
stable isotope resolved metabolomics (SIRM)moiety modelisotopologue deconvolution
Moseley Hunter N.B.,Jin Huan.Moiety Modeling Framework for Deriving Moiety Abundances from Mass Spectrometry Measured Isotopologues[EB/OL].(2025-03-28)[2025-04-27].https://www.biorxiv.org/content/10.1101/595348.点此复制
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