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[基于预测方程对不同体育活动水平运动员基础代谢率的比较评估]

[Comparative assessment of the basal metabolic rate in athletes with different level of physical activity based on prediction equations].

作者信息

Radjabkadiev R M, Vybornaya K V, Sokolov A I, Nikityuk D B

机构信息

Federal Research Centre for Nutrition, Biotechnology and Food Safety, 109240, Moscow, Russian Federation.

I.M. Sechenov First Moscow State Medical University, Ministry of Health of the Russian Federation (Sechenov University), 119991, Moscow, Russian Federation.

出版信息

Vopr Pitan. 2024;93(5):35-42. doi: 10.33029/0042-8833-2024-93-5-35-42. Epub 2024 Sep 26.

Abstract

The use of laboratory methods for assessing energy expenditure in athletes requires the availability of appropriate equipment and trained personnel, which is very difficult in the context of everyday sports activities. Therefore, the use of predictive equations that most accurately reflect energy expenditure is of paramount importance for developing dietary and recovery recommendations for athletes. of this research was to compare the basal metabolic rate (BMR) of highly skilled athletes obtained using predictive equations. . The results of the examination of 180 elite athletes, members of the Russian national teams in four sports (shooting, biathlon, bobsleigh, snowboarding), of both sexes (107 men and 73 women aged 18 to 30 years), conducted in the morning, on an empty stomach, 10-12 hours after training, were analyzed during the pre-competition period of sports training. BMR was assessed using the InBody 720 bioimpedance analyzer (Katch-McArdle formula) and calculated using Mifflin-St Jeor, Cunningham, De Lorenzo and Harris-Benedict predictive equations. Lean body mass (LBM) was determined using an InBody 720 bioimpedance analyzer and calculated using Boer, Hume and James predictive equations. . When assessing the BMR in athletes, the lowest values were obtained using the Katch-McArdle equation which is built into the InBody 720 analyzer. The highest values for men were obtained using the De Lorenzo equation, they exceeded the calculated values obtained using the Harris-Benedict, Mifflin-St Jeor and Katch-McArdle equations by 3.9-15.5% (p<0.05). In the female groups, the highest BMR values were obtained using the Mifflin-St Jeor equation; they exceeded the data calculated according to the Katch-McArdle, Cunningham and Harris-Benedict equations by 13.8-30.8% (p<0.05). The Cunningham formula, which is used to calculate the BMR based on the LBM, showed significantly higher values compared to the Katch-McArdle formula (p<0.05), the differences were about 180 kcal for the male groups and about 160 kcal for the female groups. In male athletes, the lowest LBM values were obtained using the Hume equation. These values were significantly lower (р<0.05) than the results of LBM calculation using the Boer and James equations (by 5.4-8.3%), as well as when assessing LBM using the InBody 720 analyzer (by 7.1-7.7%). In female sports groups, the lowest LBM values were obtained using the hardware method, while calculations using predictive equations showed higher values (the maximum LBM values using the Boer equation), but the differences were not statistically significant. . When using prediction equations to assess the BMR in athletes of different specializations, it should be taken into account that the results may differ by 3.9-15.5% when assessed in male groups and by 13.8-30.8% in female groups. Since the BMR is the starting point for calculating an athlete's needs for nutrients and energy, it is recommended to use equations that take into account body composition, namely the content of LBM, or use a bioimpedance analyzer. BMT can also be calculated using prediction equations if a body composition analyzer is not available, but it should be taken into account that there are differences between the measured and calculated values of this indicator.

摘要

使用实验室方法评估运动员的能量消耗需要具备合适的设备和训练有素的人员,而在日常体育活动中这很难做到。因此,使用能最准确反映能量消耗的预测方程对于为运动员制定饮食和恢复建议至关重要。本研究的目的是比较使用预测方程得出的高水平运动员的基础代谢率(BMR)。对180名精英运动员进行了检测,他们是俄罗斯国家队四个项目(射击、冬季两项、雪橇、单板滑雪)的队员,男女皆有(107名男性和73名女性,年龄在18至30岁之间),检测在运动训练的赛前阶段进行,于早晨空腹、训练后10 - 12小时进行。使用InBody 720生物电阻抗分析仪(Katch - McArdle公式)评估BMR,并使用Mifflin - St Jeor、Cunningham、De Lorenzo和Harris - Benedict预测方程进行计算。使用InBody 720生物电阻抗分析仪测定瘦体重(LBM),并使用Boer、Hume和James预测方程进行计算。在评估运动员的BMR时,使用InBody 720分析仪内置的Katch - McArdle方程得出的数值最低。男性使用De Lorenzo方程得出的数值最高,比使用Harris - Benedict、Mifflin - St Jeor和Katch - McArdle方程计算得出的数值高出3.9 - 15.5%(p<0.05)。在女性组中,使用Mifflin - St Jeor方程得出的BMR数值最高;比根据Katch - McArdle、Cunningham和Harris - Benedict方程计算的数据高出13.8 - 30.8%(p<0.05)。用于根据LBM计算BMR的Cunningham公式与Katch - McArdle公式相比,数值显著更高(p<0.05),男性组差异约为180千卡,女性组差异约为160千卡。在男性运动员中,使用Hume方程得出的LBM数值最低。这些数值显著低于(р<0.05)使用Boer和James方程计算LBM的结果(低5.4 - 8.3%),也低于使用InBody 720分析仪评估LBM的结果(低7.1 - 7.7%)。在女性运动组中,使用硬件方法得出的LBM数值最低,而使用预测方程计算得出的数值更高(使用Boer方程时LBM数值最高),但差异无统计学意义。在使用预测方程评估不同专业运动员的BMR时,应考虑到男性组评估结果可能相差3.9 - 15.5%,女性组相差13.8 - 30.8%。由于BMR是计算运动员营养和能量需求的起点,建议使用考虑身体成分(即LBM含量)的方程,或使用生物电阻抗分析仪。如果没有身体成分分析仪,也可以使用预测方程计算BMT,但应考虑到该指标的测量值和计算值之间存在差异。

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