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Metabolomic analysis of insulin resistance across different mouse strains and diets.

Authors :
Stöckli J
Fisher-Wellman KH
Chaudhuri R
Zeng XY
Fazakerley DJ
Meoli CC
Thomas KC
Hoffman NJ
Mangiafico SP
Xirouchaki CE
Yang CH
Ilkayeva O
Wong K
Cooney GJ
Andrikopoulos S
Muoio DM
James DE
Source :
The Journal of biological chemistry [J Biol Chem] 2017 Nov 24; Vol. 292 (47), pp. 19135-19145. Date of Electronic Publication: 2017 Oct 05.
Publication Year :
2017

Abstract

Insulin resistance is a major risk factor for many diseases. However, its underlying mechanism remains unclear in part because it is triggered by a complex relationship between multiple factors, including genes and the environment. Here, we used metabolomics combined with computational methods to identify factors that classified insulin resistance across individual mice derived from three different mouse strains fed two different diets. Three inbred ILSXISS strains were fed high-fat or chow diets and subjected to metabolic phenotyping and metabolomics analysis of skeletal muscle. There was significant metabolic heterogeneity between strains, diets, and individual animals. Distinct metabolites were changed with insulin resistance, diet, and between strains. Computational analysis revealed 113 metabolites that were correlated with metabolic phenotypes. Using these 113 metabolites, combined with machine learning to segregate mice based on insulin sensitivity, we identified C22:1-CoA, C2-carnitine, and C16-ceramide as the best classifiers. Strikingly, when these three metabolites were combined into one signature, they classified mice based on insulin sensitivity more accurately than each metabolite on its own or other published metabolic signatures. Furthermore, C22:1-CoA was 2.3-fold higher in insulin-resistant mice and correlated significantly with insulin resistance. We have identified a metabolomic signature composed of three functionally unrelated metabolites that accurately predicts whole-body insulin sensitivity across three mouse strains. These data indicate the power of simultaneous analysis of individual, genetic, and environmental variance in mice for identifying novel factors that accurately predict metabolic phenotypes like whole-body insulin sensitivity.<br /> (© 2017 by The American Society for Biochemistry and Molecular Biology, Inc.)

Details

Language :
English
ISSN :
1083-351X
Volume :
292
Issue :
47
Database :
MEDLINE
Journal :
The Journal of biological chemistry
Publication Type :
Academic Journal
Accession number :
28982973
Full Text :
https://doi.org/10.1074/jbc.M117.818351