Anthropometric-based predictive equations developed with multi-component models for estimating body composition in athletes
Purpose
Body composition can be estimated using anthropometric-based regression models, which are population-specific and should not be used interchangeably. However, the widespread availability of predictive equations in the literature makes selecting the most valid equations challenging. This systematic review compiles anthropometric-based predictive equations for estimating body mass components, focusing on those developed specifically for athletes using multicomponent models (i.e. separation of body mass into = 3 components).
Methods
Twenty-nine studies published between 2000 and 2024 were identified through a systematic search of international electronic databases (PubMed and Scopus). Studies using substandard procedures or developing predictive equations for non-athletic populations were excluded.
Results
A total of 40 equations were identified from the 29 studies. Of these, 36 were applicable to males and 17 to females. Twenty-six equations were developed to estimate fat mass, 10 for fat-free mass, three for appendicular lean soft tissue, and one for skeletal muscle mass. Thirteen equations were designed for mixed athletes, while others focused on specific contexts: soccer (n = 8); handball and rugby (n = 3 each); jockeys, swimming, and Gaelic football (n = 2 each); and futsal, padel, basketball, volleyball, American football, karate, and wheelchair athletes (n = 1 each).
Conclusions
This review presented high-standards anthropometric-based predictive equations for assessing body composition in athletes and encourages the development of new equations for underrepresented sports in the current literature.
© Copyright 2024 European Journal of Applied Physiology. Springer. All rights reserved.
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| Notations: | technical and natural sciences biological and medical sciences |
| Published in: | European Journal of Applied Physiology |
| Language: | English |
| Published: |
2024
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| Online Access: | https://doi.org/10.1007/s00421-024-05672-3 |
| Volume: | 125 |
| Issue: | 3 |
| Pages: | 595 - 610 |
| Document types: | article |
| Level: | advanced |