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NMR Methods for Determining Lipid Turnover via Stable Isotope Resolved Metabolomics.


ABSTRACT: Lipids comprise diverse classes of compounds that are important for the structure and properties of membranes, as high-energy fuel sources and as signaling molecules. Therefore, the turnover rates of these varied classes of lipids are fundamental to cellular function. However, their enormous chemical diversity and dynamic range in cells makes detailed analysis very complex. Furthermore, although stable isotope tracers enable the determination of synthesis and degradation of complex lipids, the numbers of distinguishable molecules increase enormously, which exacerbates the problem. Although LC-MS-MS (Liquid Chromatography-Tandem Mass Spectrometry) is the standard for lipidomics, NMR can add value in global lipid analysis and isotopomer distributions of intact lipids. Here, we describe new developments in NMR analysis for assessing global lipid content and isotopic enrichment of mixtures of complex lipids for two cell lines (PC3 and UMUC3) using both 13C6 glucose and 13C5 glutamine tracers.

SUBMITTER: Lin P 

PROVIDER: S-EPMC8065598 | biostudies-literature | 2021 Mar

REPOSITORIES: biostudies-literature

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NMR Methods for Determining Lipid Turnover via Stable Isotope Resolved Metabolomics.

Lin Penghui P   Dai Li L   Crooks Daniel R DR   Neckers Leonard M LM   Higashi Richard M RM   Fan Teresa W-M TW   Lane Andrew N AN  

Metabolites 20210329 4


Lipids comprise diverse classes of compounds that are important for the structure and properties of membranes, as high-energy fuel sources and as signaling molecules. Therefore, the turnover rates of these varied classes of lipids are fundamental to cellular function. However, their enormous chemical diversity and dynamic range in cells makes detailed analysis very complex. Furthermore, although stable isotope tracers enable the determination of synthesis and degradation of complex lipids, the n  ...[more]

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