Department of Exercise Science, Lindenwood University, St. Charles, Missouri.
Exercise & Sport Science Department, University of Wisconsin-La Crosse, La Crosse, Wisconsin.
J Strength Cond Res. 2018 Jul;32(7):1875-1881. doi: 10.1519/JSC.0000000000002111.
Jagim, AR, Camic, CL, Kisiolek, J, Luedke, J, Erickson, J, Jones, MT, and Oliver, JM. Accuracy of resting metabolic rate prediction equations in athletes. J Strength Cond Res 32(7): 1875-1881, 2018-The purpose of this study was to determine the accuracy of 5 different resting metabolic rate (RMR) prediction equations in male and female athletes. Twenty-two female (19.7 ± 1.4 years; 166.2 ± 5.5 cm; 63.5 ± 7.3 kg; 49.2 ± 4.3 kg of fat-free mass (FFM); 23.4 ± 4.4 body fat (BF) percent) and 28 male (20.2 ± 1.6 years; 181.9 ± 6.1 cm; 94.5 ± 16.2 kg; 79.1 ± 7.2 kg of FFM; 15.1 ± 8.5% BF) athletes were recruited to participate in 1 day of metabolic testing. Assessments comprised RMR measurements using indirect calorimetry, and body composition analyses using air displacement plethysmography. One-way repeated-measures analysis of variance with follow-up paired t tests were selected to determine differences between indirect calorimetry and 5 RMR prediction equations. Linear regression analysis was used to assess the accuracy of each RMR prediction method. An alpha level of p ≤ 0.05 was used to determine statistical significance. All the prediction equations significantly underestimated RMR while the Cunningham equation had the smallest mean difference (-165 kcals). In men, the Harris-Benedict equation was found to be the best prediction formula with the lowest root-mean-square prediction error value of 284 kcals. In women, the Cunningham equation was found to be the best prediction equation with the lowest root-mean-squared error value of 110 kcals. Resting metabolic rate prediction equations consistently seem to underestimate RMR in male and female athletes. The Harris-Benedict equation seems to be most accurate for male athletes, whereas the Cunningham equation may be better suited for female athletes.
雅吉姆、卡梅克、基西奥莱克、卢德克、埃里克森、琼斯和奥利弗。运动员静息代谢率预测方程的准确性。《力量与调节研究杂志》32(7):1875-1881,2018 年——本研究的目的是确定 5 种不同的静息代谢率(RMR)预测方程在男性和女性运动员中的准确性。招募了 22 名女性(19.7±1.4 岁;166.2±5.5cm;63.5±7.3kg;49.2±4.3kg 去脂体重(FFM);23.4±4.4%体脂(BF))和 28 名男性(20.2±1.6 岁;181.9±6.1cm;94.5±16.2kg;79.1±7.2kg FFM;15.1±8.5% BF)运动员参加了 1 天的代谢测试。评估包括使用间接测热法测量 RMR 和使用空气置换体积描记法进行身体成分分析。选择单向重复测量方差分析,结合后续配对 t 检验来确定间接测热法与 5 种 RMR 预测方程之间的差异。线性回归分析用于评估每种 RMR 预测方法的准确性。p≤0.05 的显著性水平用于确定统计学意义。所有预测方程均显著低估 RMR,而坎宁安方程的平均差异最小(-165 千卡)。在男性中,哈里斯-本尼迪克特方程被发现是最好的预测公式,其均方根预测误差值最低,为 284 千卡。在女性中,坎宁安方程被发现是最好的预测方程,均方根误差值最低,为 110 千卡。静息代谢率预测方程似乎在男性和女性运动员中都一致地低估了 RMR。哈里斯-本尼迪克特方程似乎对男性运动员最准确,而坎宁安方程可能更适合女性运动员。