Dysfunctional Adiposity and Glucose Impairment

Overview

This is a large and comprehensively phenotyped cohort with fasting glycaemia where the predictive value of body composition and anthropometric measures of total and central fat distribution for postprandial carbohydrate intolerance are studied.

Full Title of Study: “Discovering Carbohydrate Metabolism Alterations in Normoglycemic Obese Patients Study”

Study Type

  • Study Type: Observational
  • Study Design
    • Time Perspective: Cross-Sectional
  • Study Primary Completion Date: August 28, 2014

Detailed Description

Subjects aged 18-70 years, who attended the Department of Endocrinology and Nutrition of the Clínica Universidad de Navarra from 2009-2014 for a check-up were offered to participate in the DICAMANO study. 853 subjects agreed to take part. Only those individuals with a normal fasting glucose level (≤5.5 mmol l-1) were analysed. Subjects with T2DM or severe renal, liver or thyroid dysfunction were excluded. Participants were instructed to temporarily discontinue for 48 hours any medication known to affect glucose or lipid metabolism. On the day of the study visit, each subject had a complete routine clinical assessment to evaluate the presence of cardiovascular, respiratory, renal or endocrine disorders. All patients underwent a 75-g OGTT with a concomitant anthropometric study, blood pressure monitoring and lipid profile analyses. They were classified by glucose tolerance on the basis of blood glucose levels according to ADA diagnostic criteria for T2DM (2017). Carbohydrate intolerance was defined as a 2-hOGTT glucose level ≥7.8 mmol l-1 (mg dl-1). Body composition, visceral adipose tissue, anthropometry study, OGTT-based parameters and cardiovascular risk factors are measured.

Clinical Trial Outcome Measures

Primary Measures

  • Body fat percentage and carbohydrate intolerance
    • Time Frame: Baseline
    • Investigate whether body fat percentage estimated by air-displacement plethysmography (Bod-Pod®, Life Measurements, Concord, CA, USA) predicts postprandial carbohydrate intolerance early on in the metabolic dysregulation process. Body fat percentage (BF%) is calculated from body density by means of the Siri equation.
  • Neck circumference as screening tool
    • Time Frame: Baseline
    • Examine the predictive value of neck circumference as screening tool for the selection of patients who are most likely to benefit from an oral glucose tolerance test (OGTT)

Secondary Measures

  • Waist-to-hip ratio as screening tool
    • Time Frame: Baseline
    • Examine the predictive value of waist-to-hip ratio as screening tool for the selection of patients who are most likely to benefit from an oral glucose tolerance test (OGTT). Waist-to-hip ratio was calculated as waist circumference divided by hip circumference. Waist circumference was measured at the midpoint between the iliac crest and the rib cage on the mid-axillary line, and hip circumference at the level of the greater trochanters was measured to the nearest millimetre using a flexible tape.
  • Waist-to-height ratio as screening tool
    • Time Frame: Baseline
    • Examine the predictive value of waist-to-height ratio as screening tool for the selection of patients who are most likely to benefit from an oral glucose tolerance test (OGTT). Waist-to-height ratio was calculated as waist circumference divided by height.
  • BMI as screening tool
    • Time Frame: Baseline
    • Examine the predictive value of body adiposity index (BMI) as screening tool for the selection of patients who are most likely to benefit from an oral glucose tolerance test (OGTT). BMI was calculated as weight in kilograms divided by height in meters squared.
  • Body adiposity index as screening tool
    • Time Frame: Baseline
    • Examine the predictive value of body adiposity index (BAI) ([hip circumference/height1.5]-18) as screening tool for the selection of patients who are most likely to benefit from an oral glucose tolerance test (OGTT).
  • Central fat depot and carbohydrate intolerance
    • Time Frame: Baseline
    • Investigate whether central fat depot predicts postprandial carbohydrate intolerance early on in the metabolic dysregulation process. Visceral and abdominal adiposity was quantified by the use of the abdominal bioelectrical impedance analysis device ViScan (Tanita AB-140, Tanita Corp., Tokyo, Japan).
  • Central fat depot and cardiometabolic risk
    • Time Frame: Baseline
    • Investigate whether a higher central fat depot is able to identify those individuals with higher inflammatory parameters (c-reactive protein, homocysteine and uric acid) and cardiovascular risk (higher rate of hypercholesterolemia, hypertension and/or obstructive sleep apnea). Body fat percentage (BF%) is calculated from body density by means of the Siri equation.
  • Body fat percentage and cardiometabolic risk
    • Time Frame: Baseline
    • Investigate whether a higher body fat percentage is able to identify those individuals with higher inflammatory parameters (c-reactive protein, homocysteine and uric acid) and cardiovascular risk (higher rate of hypercholesterolemia, hypertension and/or obstructive sleep apnea). Body fat percentage (BF%) is calculated from body density by means of the Siri equation.
  • Prevalence of postprandial carbohydrate intolerance
    • Time Frame: Baseline
    • Assess the prevalence of postprandial carbohydrate intolerance in individuals with normal fasting glycaemia
  • Oral glucose tolerance test parameters and cardiometabolic profile
    • Time Frame: Baseline
    • Verification of the utility of the two-hour OGTT glucose value to select those individuals with higher cardiometabolic risk (higher rate of hypercholesterolemia, hypertension and/or obstructive sleep apnea).
  • Non-alcoholic fatty liver disease (NAFLD) and glucose dysregulation
    • Time Frame: Baseline
    • Analyse the association between NAFLD and OGTT-based ß-cell function and insulin resistance in non-diabetic subjects.
  • OGTT-based indices as screening tool of NAFLD
    • Time Frame: Baseline
    • Examine whether OGTT-based ß-cell function and insulin resistance indices could be used as screening tools for the selection of patients who are most likely to benefit from a NAFLD-study.
  • OGTT-derived glucose curve as screening tool of NAFLD
    • Time Frame: Baseline
    • Examine whether the glucose response curve could be used as screening tool for the selection of patients who are most likely to benefit from a NAFLD-study.

Participating in This Clinical Trial

Inclusion Criteria

  • Fasting glucose level ≤ 5.5 mmol l-1 – BMI ≥ 25 Exclusion Criteria:

  • Type 2 diabetes mellitus – Severe renal, liver or thyroid dysfunction

Gender Eligibility: All

Minimum Age: 18 Years

Maximum Age: 70 Years

Investigator Details

  • Lead Sponsor
    • Clinica Universidad de Navarra, Universidad de Navarra
  • Collaborator
    • Instituto de Salud Carlos III
  • Provider of Information About this Clinical Study
    • Sponsor
  • Overall Official(s)
    • Gema Frühbeck, PhD, Study Chair, Clínica Universidad de Navarra
    • Belén Pérez Pevida, MD, Principal Investigator, Clínica Universidad de Navarra

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