Serum metabolomic profiling highlights pathways associated with liver fat content in a general population sample

Background/Objectives: Fatty liver disease (FLD) is an important intermediate trait along the cardiometabolic disease spectrum and strongly associates with type 2 diabetes. Knowledge of biological pathways implicated in FLD is limited. An untargeted metabolomic approach might unravel novel pathways...

Ausführliche Beschreibung

Gespeichert in:
Bibliographische Detailangaben
Veröffentlicht in:European journal of clinical nutrition 2017-08, Vol.71 (8), p.995-1001
Hauptverfasser: Koch, M, Freitag-Wolf, S, Schlesinger, S, Borggrefe, J, Hov, J R, Jensen, M K, Pick, J, Markus, M R P, Höpfner, T, Jacobs, G, Siegert, S, Artati, A, Kastenmüller, G, Römisch-Margl, W, Adamski, J, Illig, T, Nothnagel, M, Karlsen, T H, Schreiber, S, Franke, A, Krawczak, M, Nöthlings, U, Lieb, W
Format: Artikel
Sprache:eng
Schlagworte:
Online-Zugang:Volltext
Tags: Tag hinzufügen
Keine Tags, Fügen Sie den ersten Tag hinzu!
Beschreibung
Zusammenfassung:Background/Objectives: Fatty liver disease (FLD) is an important intermediate trait along the cardiometabolic disease spectrum and strongly associates with type 2 diabetes. Knowledge of biological pathways implicated in FLD is limited. An untargeted metabolomic approach might unravel novel pathways related to FLD. Subjects/Methods: In a population-based sample ( n =555) from Northern Germany, liver fat content was quantified as liver signal intensity using magnetic resonance imaging. Serum metabolites were determined using a non-targeted approach. Partial least squares regression was applied to derive a metabolomic score, explaining variation in serum metabolites and liver signal intensity. Associations of the metabolomic score with liver signal intensity and FLD were investigated in multivariable-adjusted robust linear and logistic regression models, respectively. Metabolites with a variable importance in the projection >1 were entered in in silico overrepresentation and pathway analyses. Results: In univariate analysis, the metabolomics score explained 23.9% variation in liver signal intensity. A 1-unit increment in the metabolomic score was positively associated with FLD ( n =219; odds ratio: 1.36; 95% confidence interval: 1.27–1.45) adjusting for age, sex, education, smoking and physical activity. A simplified score based on the 15 metabolites with highest variable importance in the projection statistic showed similar associations. Overrepresentation and pathway analyses highlighted branched-chain amino acids and derived gamma-glutamyl dipeptides as significant correlates of FLD. Conclusions: A serum metabolomic profile was associated with FLD and liver fat content. We identified a simplified metabolomics score, which should be evaluated in prospective studies.
ISSN:0954-3007
1476-5640
DOI:10.1038/ejcn.2017.43