4.7 Article

Untargeted Profiling of Concordant/Discordant Phenotypes of High Insulin Resistance and Obesity To Predict the Risk of Developing Diabetes

Journal

JOURNAL OF PROTEOME RESEARCH
Volume 17, Issue 7, Pages 2307-2317

Publisher

AMER CHEMICAL SOC
DOI: 10.1021/acs.jproteome.7b00855

Keywords

adrenic acid; diglycerides; insulin resistance; metabolic profiles; metabolomics; obesity; observational study; predictive model; ROC curves; uric acid

Funding

  1. Fundacion Progreso y Salud, Consejeria de Salud y Bienestar Social, Junta de Andalucia [PI-0557-2013]
  2. CIBERfes
  3. CIBERobn
  4. Fondo Europeo de Desarrollo Regional (FEDER)
  5. Generalitat de Catalunya's Agency AGAUR [2017 SGR 1546]
  6. Juan de la Cierva postdoctoral fellowship (MINECO)
  7. APIF fellowship (University of Barcelona)
  8. ISCII-Subdireccion General de Evaluacion y Fomento de la Investigacion
  9. [PI13/01172]

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This study explores the metabolic profiles of concordant/discordant phenotypes of high insulin resistance (IR) and obesity. Through untargeted metabolomics (LC-ESI-QTOF-MS), we analyzed the fasting serum of subjects with high IR and/or obesity (n = 64). An partial least-squares discriminant analysis with orthogonal signal correction followed by univariate statistics and enrichment analysis allowed exploration of these metabolic profiles. A multivariate regression method (LASSO) was used for variable selection and a predictive biomarker model to identify subjects with high IR regardless of obesity was built. Adrenic acid and a dyglyceride (DG) were shared by high IR and obesity. Uric and margaric acids, 14 DGs, ketocholesterol, and hydroxycorticosterone were unique to high IR, while arachidonic, hydroxyeicosatetraenoic (HETE), palmitoleic, triHETE, and glycocholic acids, HETE lactone, leukotriene B4, and two glutamyl-peptides to obesity. DGs and adrenic acid differed in concordant/discordant phenotypes, thereby revealing protective mechanisms against high IR also in obesity. A biomarker model formed by DGs, uric and adrenic acids presented a high predictive power to identify subjects with high IR [AUC 80.1% (68.9-91.4)]. These findings could become relevant for diabetes risk detection and unveil new potential targets in therapeutic treatments of IR, diabetes, and obesity. An independent validated cohort is needed to confirm these results.

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