Development and validation of anthropometric prediction equations for estimation of lean body mass and appendicular lean soft tissue in Indian men and women

Author:

Kulkarni Bharati12,Kuper Hannah3,Taylor Amy4,Wells Jonathan C.5,Radhakrishna K. V.2,Kinra Sanjay3,Ben-Shlomo Yoav4,Smith George Davey4,Ebrahim Shah36,Byrne Nuala M.1,Hills Andrew P.7

Affiliation:

1. Institute of Health and Biomedical Innovation, Queensland University of Technology, Brisbane, Australia;

2. National Institute of Nutrition, Hyderabad, India;

3. Department of Non-communicable Disease Epidemiology, London School of Hygiene and Tropical Medicine, London, United Kingdom;

4. School of Social and Community Medicine, University of Bristol, Bristol, United Kingdom;

5. Childhood Nutrition Research Centre, University College London Institute of Child Health, London, United Kingdom;

6. South Asia Network for Chronic Disease, Public Health Foundation of India, New Delhi, India; and

7. Mater Mothers' Hospital, Mater Research and Griffith Health Institute, Griffith University, Brisbane, Australia

Abstract

Lean body mass (LBM) and muscle mass remain difficult to quantify in large epidemiological studies due to the unavailability of inexpensive methods. We therefore developed anthropometric prediction equations to estimate the LBM and appendicular lean soft tissue (ALST) using dual-energy X-ray absorptiometry (DXA) as a reference method. Healthy volunteers ( n = 2,220; 36% women; age 18-79 yr), representing a wide range of body mass index (14–44 kg/m2), participated in this study. Their LBM, including ALST, was assessed by DXA along with anthropometric measurements. The sample was divided into prediction (60%) and validation (40%) sets. In the prediction set, a number of prediction models were constructed using DXA-measured LBM and ALST estimates as dependent variables and a combination of anthropometric indices as independent variables. These equations were cross-validated in the validation set. Simple equations using age, height, and weight explained >90% variation in the LBM and ALST in both men and women. Additional variables (hip and limb circumferences and sum of skinfold thicknesses) increased the explained variation by 5–8% in the fully adjusted models predicting LBM and ALST. More complex equations using all of the above anthropometric variables could predict the DXA-measured LBM and ALST accurately, as indicated by low standard error of the estimate (LBM: 1.47 kg and 1.63 kg for men and women, respectively), as well as good agreement by Bland-Altman analyses (Bland JM, Altman D. Lancet 1: 307–310, 1986). These equations could be a valuable tool in large epidemiological studies assessing these body compartments in Indians and other population groups with similar body composition.

Publisher

American Physiological Society

Subject

Physiology (medical),Physiology

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