Theodoros Stampoulis, Alexandra Avloniti, Dimitrios Draganidis, Dimitrios Balampanos, Polyxeni Efthimia Chalastra, Anastasia Gkachtsou, Dimitrios Pantazis, Nikolaos-Orestis Retzepis, Maria Protopapa, Athanasios Poulios, Nikolaos Zaras, Maria Michalopoulou, Ioannis G Fatouros, Athanasios Chatzinikolaou
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Correlation and agreement were evaluated by using Pearson's correlation coefficients and Bland-Altman analysis. Multiple linear regression was applied for the estimation of RMR and a one-way ANOVA was used to compare the new BIA-based equations with other specific formulas. A significant correlation was noted between the BIA and DXA measurements. The final equation, applicable to both genders, was significantly correlated with intracellular water (ICW) and trunk fat, predicting 71.1% of RMR variance. When analyzed separately, body weight and protein displayed a moderate correlation with RMR in men (r = 0.616, <i>p</i> < 0.001), while ICW was correlated with the percentage of body fat in women (r = 0.579, <i>p</i> < 0.001). In the validation group, the values obtained through the three BIA-based equations were similar to the measured RMR, but differed significantly from those obtained through the four existing equations for trained individuals. 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引用次数: 0
摘要
静息代谢率(RMR)显著影响每日总能量消耗,特别是在训练日,并且在训练个体之间有所不同。估计这一人群RMR的研究显示出显著的差异。本研究旨在为年轻运动员开发和验证新的基于生物电阻抗分析(BIA)的RMR方程,分别使用219名和51名参与者进行校准和验证。通过间接量热法测量RMR,通过DXA和BIA评估体成分。采用Pearson相关系数和Bland-Altman分析评价相关性和一致性。采用多元线性回归估计RMR,并使用单向方差分析将新的基于bia的方程与其他特定公式进行比较。BIA和DXA测量值之间存在显著的相关性。最终方程适用于男女,与细胞内水分(ICW)和躯干脂肪显著相关,预测RMR方差为71.1%。当单独分析时,体重和蛋白质与男性的RMR呈中等相关性(r = 0.616, p < 0.001),而ICW与女性的体脂百分比相关(r = 0.579, p < 0.001)。在验证组中,通过三个基于bia的方程获得的值与测量的RMR相似,但与通过训练个体的四个现有方程获得的值存在显着差异。综上所述,基于bia介导的体成分分析的方程为估计训练人群的每日RMR提供了可靠的方法。
New Bioelectrical Impedance-Based Equations to Estimate Resting Metabolic Rate in Young Athletes.
Resting metabolic rate (RMR) significantly impacts total daily energy expenditure, particularly on training days, and varies among trained individuals. Studies estimating RMR in this population show notable discrepancies. This study aimed to develop and validate new bioelectrical impedance analysis-based (BIA) RMR equations for young athletes, using a calibration and a validation group of 219 and 51 participants, respectively. RMR was measured via indirect calorimetry, while body composition was assessed through DXA and BIA. Correlation and agreement were evaluated by using Pearson's correlation coefficients and Bland-Altman analysis. Multiple linear regression was applied for the estimation of RMR and a one-way ANOVA was used to compare the new BIA-based equations with other specific formulas. A significant correlation was noted between the BIA and DXA measurements. The final equation, applicable to both genders, was significantly correlated with intracellular water (ICW) and trunk fat, predicting 71.1% of RMR variance. When analyzed separately, body weight and protein displayed a moderate correlation with RMR in men (r = 0.616, p < 0.001), while ICW was correlated with the percentage of body fat in women (r = 0.579, p < 0.001). In the validation group, the values obtained through the three BIA-based equations were similar to the measured RMR, but differed significantly from those obtained through the four existing equations for trained individuals. In conclusion, the developed equations based on BIA-mediated body composition analysis provide a reliable method for estimating RMR in trained populations daily.