Boullata Joseph, Williams Jennifer, Cottrell Faith, Hudson Lauren, Compher Charlene
University of Pennsylvania, Philadelphia, PA 19104-6096, USA.
J Am Diet Assoc. 2007 Mar;107(3):393-401. doi: 10.1016/j.jada.2006.12.014.
To evaluate the accuracy of seven predictive equations, including the Harris-Benedict and the Mifflin equations, against measured resting energy expenditure (REE) in hospitalized patients, including patients with obesity and critical illness.
A retrospective evaluation using the nutrition support service database of a patient cohort from a similar timeframe as those used to develop the Mifflin equations.
SUBJECTS/SETTING: All patients with an ordered nutrition assessment who underwent indirect calorimetry at our institution over a 1-year period were included.
Available data was applied to REE predictive equations, and results were compared to REE measurements.
Accuracy was defined as predictions within 90% to 110% of the measured REE. Differences >10% or 250 kcal from REE were considered clinically unacceptable.
Regression analysis was performed to identify variables that may predict accuracy. Limits-of-agreement analysis was carried out to describe the level of bias for each equation.
A total of 395 patients, mostly white (61%) and African American (36%), were included in this analysis. Mean age+/-standard deviation was 56+/-18 years (range 16 to 92 years) in this group, and mean body mass index was 24+/-5.6 (range 13 to 53). Measured REE was 1,617+/-355 kcal/day for the entire group, 1,790+/-397 kcal/day in the obese group (n=51), and 1,730+/-402 kcal/day in the critically ill group (n=141). The most accurate prediction was the Harris-Benedict equation when a factor of 1.1 was multiplied to the equation (Harris-Benedict 1.1), but only in 61% of all the patients, with significant under- and over-predictions. In the patients with obesity, the Harris-Benedict equation using actual weight was most accurate, but only in 62% of patients; and in the critically ill patients the Harris-Benedict 1.1 was most accurate, but only in 55% of patients. The bias was also lowest with Harris-Benedict 1.1 (mean error -9 kcal/day, range +403 to -421 kcal/day); but errors across all equations were clinically unacceptable.
No equation accurately predicted REE in most hospitalized patients. Without a reliable predictive equation, only indirect calorimetry will provide accurate assessment of energy needs. Although indirect calorimetry is considered the standard for assessing REE in hospitalized patients, several predictive equations are commonly used in practice. Their accuracy in hospitalized patients has been questioned. This study evaluated several of these equations, and found that even the most accurate equation (the Harris-Benedict 1.1) was inaccurate in 39% of patients and had an unacceptably high error. Without knowing which patient's REE is being accurately predicted, indirect calorimetry may still be necessary in difficult to manage hospitalized patients.
评估包括哈里斯-本尼迪克特方程和米夫林方程在内的7种预测方程,针对住院患者(包括肥胖患者和危重症患者)测量的静息能量消耗(REE)的准确性。
使用与开发米夫林方程时相同时间范围内的患者队列营养支持服务数据库进行回顾性评估。
研究对象/设置:纳入了在我们机构进行间接测热法的所有接受营养评估的患者。
将可用数据应用于REE预测方程,并将结果与REE测量值进行比较。
准确性定义为预测值在测量的REE的90%至110%范围内。与REE相差>10%或250千卡被认为在临床上不可接受。
进行回归分析以确定可能预测准确性的变量。进行一致性界限分析以描述每个方程的偏差水平。
本分析共纳入395例患者,大多数为白人(61%)和非裔美国人(36%)。该组患者的平均年龄±标准差为56±18岁(范围16至92岁),平均体重指数为24±5.6(范围13至53)。整个组的测量REE为1617±355千卡/天,肥胖组(n = 51)为1790±397千卡/天,危重症组(n = 141)为1730±402千卡/天。最准确的预测是将哈里斯-本尼迪克特方程乘以1.1因子(哈里斯-本尼迪克特1.1)时,但仅在所有患者的61%中,存在明显的预测不足和过度预测。在肥胖患者中,使用实际体重的哈里斯-本尼迪克特方程最准确,但仅在62%的患者中;在危重症患者中,哈里斯-本尼迪克特1.1最准确,但仅在55%的患者中。哈里斯-本尼迪克特1.1的偏差也最低(平均误差-9千卡/天,范围+403至-421千卡/天);但所有方程的误差在临床上均不可接受。
在大多数住院患者中,没有方程能准确预测REE。没有可靠的预测方程,只有间接测热法才能提供能量需求的准确评估。虽然间接测热法被认为是评估住院患者REE的标准,但在实践中常用几种预测方程。它们在住院患者中的准确性受到质疑。本研究评估了其中几种方程,发现即使是最准确的方程(哈里斯-本尼迪克特1.1)在39%的患者中不准确且误差高得不可接受。在不知道哪些患者的REE能被准确预测的情况下,对于难以管理的住院患者,间接测热法可能仍然是必要的。