Institute for Sport and Health and School of Public Health, Physiotherapy and Sport Science, University College Dublin, Belfield, Dublin 4, Ireland.
School of Public Health, Physiotherapy and Sport Science, University College Dublin, Dublin 4, Ireland.
Sports Med. 2023 Dec;53(12):2373-2398. doi: 10.1007/s40279-023-01896-z. Epub 2023 Aug 26.
Resting metabolic rate (RMR) prediction equations are often used to calculate RMR in athletes; however, their accuracy and precision can vary greatly.
The aim of this systematic review and meta-analysis was to determine which RMR prediction equations are (i) most accurate (average predicted values closest to measured values) and (ii) most precise (number of individuals within 10% of measured value).
A systematic search of PubMed, CINAHL, SPORTDiscus, Embase, and Web of Science up to November 2021 was conducted.
Randomised controlled trials, cross-sectional observational studies, case studies or any other study wherein RMR, measured by indirect calorimetry, was compared with RMR predicted via prediction equations in adult athletes were included.
A narrative synthesis and random-effects meta-analysis (where possible) was conducted. To explore heterogeneity and factors influencing accuracy, subgroup analysis was conducted based on sex, body composition measurement method, athlete characteristics (athlete status, energy availability, body weight), and RMR measurement characteristics (adherence to best practice guidelines, test preparation and prior physical activity).
Twenty-nine studies (mixed sports/disciplines n = 8, endurance n = 5, recreational exercisers n = 5, rugby n = 3, other n = 8), with a total of 1430 participants (822 F, 608 M) and 100 different RMR prediction equations were included. Eleven equations satisfied criteria for meta-analysis for accuracy. Effect sizes for accuracy ranged from 0.04 to - 1.49. Predicted RMR values did not differ significantly from measured values for five equations (Cunningham (1980), Harris-Benedict (1918), Cunningham (1991), De Lorenzo, Ten-Haaf), whereas all others significantly underestimated or overestimated RMR (p < 0.05) (Mifflin-St. Jeor, Owen, FAO/WHO/UNU, Nelson, Koehler). Of the five equations, large heterogeneity was observed for all (p < 0.05, I range: 80-93%) except the Ten-Haaf (p = 0.48, I = 0%). Significant differences between subgroups were observed for some but not all equations for sex, athlete status, fasting status prior to RMR testing, and RMR measurement methodology. Nine equations satisfied criteria for meta-analysis for precision. Of the nine equations, the Ten-Haaf was found to be the most precise, predicting 80.2% of participants to be within ± 10% of measured values with all others ranging from 40.7 to 63.7%.
Many RMR prediction equations have been used in athletes, which can differ widely in accuracy and precision. While no single equation is guaranteed to be superior, the Ten-Haaf (age, weight, height) equation appears to be the most accurate and precise in most situations. Some equations are documented as consistently underperforming and should be avoided. Choosing a prediction equation based on a population of similar characteristics (physical characteristics, sex, sport, athlete status) is preferable. Caution is warranted when interpreting RMR ratio of measured to predicted values as a proxy of energy availability from a single measurement.
CRD42020218212.
静息代谢率(RMR)预测方程常用于计算运动员的 RMR;然而,它们的准确性和精密度可能有很大差异。
本系统评价和荟萃分析旨在确定哪些 RMR 预测方程(i)最准确(平均预测值最接近测量值)和(ii)最精确(有多少个体在测量值的 10%以内)。
对 PubMed、CINAHL、SPORTDiscus、Embase 和 Web of Science 进行了系统搜索,截至 2021 年 11 月。
随机对照试验、横断面观察性研究、病例研究或任何其他研究,其中 RMR 通过间接测热法测量,并通过预测方程与通过预测方程预测的 RMR 进行比较在成年运动员中。
进行了叙述性综合和随机效应荟萃分析(如果可能)。为了探讨异质性和影响准确性的因素,根据性别、身体成分测量方法、运动员特征(运动员状态、能量可用性、体重)和 RMR 测量特征(最佳实践指南的依从性、测试准备和之前的体力活动)进行了亚组分析。
共纳入 29 项研究(混合运动/学科 n=8、耐力 n=5、休闲运动员 n=5、橄榄球 n=3、其他 n=8),共 1430 名参与者(822 名女性,608 名男性)和 100 种不同的 RMR 预测方程。11 个方程符合准确性的荟萃分析标准。准确性的效应大小范围从 0.04 到-1.49。对于五个方程(Cunningham(1980)、Harris-Benedict(1918)、Cunningham(1991)、De Lorenzo、Ten-Haaf),预测的 RMR 值与测量值没有显著差异,而其他所有方程都显著低估或高估了 RMR(p<0.05)(Mifflin-St. Jeor、Owen、FAO/WHO/UNU、Nelson、Koehler)。在这五个方程中,除了 Ten-Haaf(p=0.48,I=0%)之外,所有方程的异质性都很大(p<0.05,I 范围:80-93%)。对于一些但不是所有方程,在性别、运动员状态、RMR 测试前禁食状态和 RMR 测量方法方面观察到了亚组之间的显著差异。有 9 个方程符合精度的荟萃分析标准。在这 9 个方程中,Ten-Haaf 被发现是最精确的,预测有 80.2%的参与者的测量值在±10%以内,而其他方程的范围在 40.7%到 63.7%之间。
许多 RMR 预测方程已在运动员中使用,它们在准确性和精密度方面可能有很大差异。虽然不能保证任何单一方程都具有优势,但 Ten-Haaf(年龄、体重、身高)方程在大多数情况下似乎是最准确和最精确的。一些方程被证明性能持续不佳,应避免使用。根据相似特征(身体特征、性别、运动、运动员状态)的人群选择预测方程是可取的。当从单次测量中解释测量值与预测值的 RMR 比值作为能量可用性的代理时,应谨慎。
PROSPERO 注册号:CRD42020218212。