AI Article Synopsis

  • Accurate estimation of resting energy expenditure (REE) is vital for optimizing diet and maintaining body composition in elite athletes, leading to better sports performance and health.
  • The study involved 126 elite athletes aged 18-40, where new equations for estimating REE were developed using anthropometry and bioimpedance analysis (BIA), and their accuracy was validated against existing equations.
  • Results showed that the new equations provided high accuracy in predicting REE, with a mean bias of around -0.3% to -0.6% and more than 75% precision accuracy at the individual level, particularly highlighting the effectiveness of BIA-derived phase angle as a predictor.

Article Abstract

Background: An accurate estimation of athletes' energy needs is crucial in diet planning to improve sport performance and to maintain an appropriate body composition. This study aimed to develop and validate in elite athletes new equations for estimating resting energy expenditure (REE) based on anthropometric parameters as well as bioimpedance analysis (BIA)-derived raw variables and to validate the accuracy of selected predictive equations.

Methods: Adult elite athletes aged 18-40 yrs were studied. Anthropometry, indirect calorimetry and BIA were performed in all subjects. The new predictive equations were generated using different regression models. The accuracy of the new equations was assessed at the group level (bias) and at the individual level (precision accuracy), and then compared with the one of five equations used in the general population or three athletes-specific formulas.

Results: One-hundred and twenty-six male athletes (age 26.9 ± 9.1 yrs; weight 71.3 ± 10.9 kg; BMI 22.8 ± 2.7 kg/m) from different sport specialties were randomly assigned to the calibration (n = 75) or validation group (n = 51). REE was directly correlated with individual characteristics, except for age, and raw BIA variables. Most of the equations from the literature were reasonably accurate at the population level (bias within ±5%). The new equations showed a mean bias -0.3% (Eq. A based on anthropometric parameters) and -0.6% (Eq. B based on BIA-derived raw variables). Precision accuracy (individual predicted-measured differences within ±5%) was ~75% in six out of eight of the selected equations and even higher for Eq. A (82.4%) and Eq. B (92.2%).

Conclusion: In elite athletes, BIA-derived phase angle is a significant predictor of REE. The new equations have a very good prediction accuracy at both group and individual levels. The use of phase angle as predictor of REE requires further research with respect to different sport specialties, training programs and training level.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC8549253PMC
http://dx.doi.org/10.1186/s12970-021-00465-xDOI Listing

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