Publication:
Association between phase angle and body composition: New equations to predict fat mass and skeletal muscle mass

Loading...
Thumbnail Image

Publication date

Reading date

Event date

Start date of the public exhibition period

End date of the public exhibition period

Advisors

Authors of photography

Person who provides the photography

Journal Title

Journal ISSN

Volume Title

Publisher

Elsevier
Export

Research Projects

Organizational Units

Journal Issue

Abstract

Objective: The aim of this cross-sectional study was to develop new regression equations for estimating fat mass (FM) and skeletal muscle mass (SMM) in a heterogeneous Caucasian population, using the phase angle (PhA) as a bioelectrical parameter and DXA as the reference method. We also aimed to cross-validate the new equations, and to compare them with the manufacturers’ equations. Methods: The 212 healthy Caucasian participants aged 20–65 years were randomly distributed into two groups: development group (n = 141) and validation group (n = 71). Bioelectrical parameters were obtained with a 50 kHz foot-to-hand phase-sensitive body composition analyzer. The new FM percentage (FM%) and SMM percentage (SMM%) equations were developed by performing multiple forward regression analyses. Agreement between DXA and the different equations was assessed by mean differences, coefficient of determination, standard error of the estimate (SEE), concordance correlation coefficient (CCC), and Bland–Altman plots. Results: The proposed equations explained 89.2% of the variance in the DXA-derived FM% and 91.8% in the DXA-derived SMM%, with low random errors (SEE = 3.04% and 1.92%, respectively), and a very strong agreement (CCC = 0.93 and 0.94, respectively). In addition, they demonstrated no fixed bias and a relatively low individual variability. However, the manufacturer’s equations described a lower percentage of the variance, with higher random errors, obtained fixed bias of -5.77% for FM% and 4.91% for SMM%, as well as higher individual variability. Conclusions: The new regression equations, which include the PhA as a bioelectrical parameter, can accurately predict DXA-derived FM% and SMM% in a heterogeneous Caucasian population, and are better options than the manufacturer’s equations.

Doctoral program

Related publication

Research projects

Description

Bibliographic reference

Daniel Rojano-Ortega, Antonio Jesús Berral-Aguilar, Heliodoro Moya-Amaya, Antonio Molina-López, Francisco José Berral-de la Rosa, Association between phase angle and body composition: New equations to predict fat mass and skeletal muscle mass, Nutrition, Volume 135, 2025, 112772, ISSN 0899-9007, https://doi.org/10.1016/j.nut.2025.112772.

Photography rights