| Literature DB >> 22179957 |
Javier Gómez-Ambrosi1, Camilo Silva, Victoria Catalán, Amaia Rodríguez, Juan Carlos Galofré, Javier Escalada, Victor Valentí, Fernando Rotellar, Sonia Romero, Beatriz Ramírez, Javier Salvador, Gema Frühbeck.
Abstract
OBJECTIVE: To assess the predictive capacity of a recently described equation that we have termed CUN-BAE (Clínica Universidad de Navarra-Body Adiposity Estimator) based on BMI, sex, and age for estimating body fat percentage (BF%) and to study its clinical usefulness. RESEARCH DESIGN AND METHODS: We conducted a comparison study of the developed equation with many other anthropometric indices regarding its correlation with actual BF% in a large cohort of 6,510 white subjects from both sexes (67% female) representing a wide range of ages (18-80 years) and adiposity. Additionally, a validation study in a separate cohort (n = 1,149) and a further analysis of the clinical usefulness of this prediction equation regarding its association with cardiometabolic risk factors (n = 634) was carried out.Entities:
Mesh:
Year: 2011 PMID: 22179957 PMCID: PMC3263863 DOI: 10.2337/dc11-1334
Source DB: PubMed Journal: Diabetes Care ISSN: 0149-5992 Impact factor: 19.112
Correlation matrix of BF% with different BAEs and anthropometric variables
Figure 1Bland-Altman plot shows the limits of agreement between BF% estimated using CUN-BAE and BF% measured by ADP in the comparison sample of 6,510 subjects. The middle red line represents the mean difference between the estimated and the measured BF%. The dotted lines indicate ± 2 SDs from the mean.
Figure 2Correlation stratified by sex between BF% measured by ADP and BMI (A) and BF% estimated using CUN-BAE (B) in the validation sample of 1,149 subjects (366 men and 783 women). Pearson correlation coefficients and associated P values are shown for the whole sample and stratified by sex. Tendency lines are shown for men and women in panel A and for the whole sample in panel B.
Correlation of BMI, waist circumference, and estimated BF with different cardiometabolic variables