| Literature DB >> 22413041 |
Myung-Hee Kim1, Jae-Hee Kim, Eun-Kyung Kim.
Abstract
Weight-controlling can be supported by a proper prescription of energy intake. The individual energy requirement is usually determined through resting energy expenditure (REE) and physical activity. Because REE contributes to 60-70% of daily energy expenditure, the assessment of REE is very important. REE is often predicted using various equations, which are usually based on the body weight, height, age, gender, and so on. The aim of this study is to validate the published predictive equations for resting energy expenditure in 76 normal weight and 52 obese Korean children and adolescents in the 7-18 years old age group. The open-circuit indirect calorimetry using a ventilated hood system was used to measure REE. Sixteen REE predictive equations were included, which were based on weight and/or height of children and adolescents, or which were commonly used in clinical settings despite its use based on adults. The accuracy of the equations was evaluated on bias, RMSPE, and percentage of accurate prediction. The means of age and height were not significantly different among the groups. Weight and BMI were significantly higher in obese group (64.0 kg, 25.9 kg/m(2)) than in the non-obese group (44.8 kg, 19.0 kg/m(2)). For the obese group, the Molnar, Mifflin, Liu, and Harris-Benedict equations provided the accurate predictions of > 70% (87%, 79% 77%, and 73%, respectively). On the other hand, for non-obese group, only the Molnar equation had a high level of accuracy (bias of 0.6%, RMSPE of 90.4 kcal/d, and accurate prediction of 72%). The accurate prediction of the Schofield (W/WH), WHO (W/WH), and Henry (W/WH) equations was less than 60% for all groups. Our results showed that the Molnar equation appears to be the most accurate and precise for both the non-obese and the obese groups. This equation might be useful for clinical professionals when calculating energy needs in Korean children and adolescents.Entities:
Keywords: Resting energy expenditure; adolescents; children; indirect calorimetry; predictive equation
Year: 2012 PMID: 22413041 PMCID: PMC3296923 DOI: 10.4162/nrp.2012.6.1.51
Source DB: PubMed Journal: Nutr Res Pract ISSN: 1976-1457 Impact factor: 1.926
Equations used to predict the resting energy expenditure (REE) in our study
Abbreviation: WT, weight in kg; HT, height in cm; AGE in years.
1)FAO/WHO/UNU Expert Consultation
2)Institute of Medicine of the National Academies
Anthropometric measurements of the subjects
1)Mean ± SD
2)Measured by Inbody 720
3)[Fat mass (kg) / Weight (kg)]×100
4)[Weight (kg) - Fat mass (kg)]
5)Calculated by Heymsfield's formula
6)***P < 0.001 Significantly different by t-test
Evaluation of resting energy expenditure (REE) predictive equations in 76 non-obese children and adolescents based on bias, root mean squared prediction error (RMPSE), and percentage of accurate prediction
1)Mean ± SD
2)Mean (range)
3)*P < 0.05, ***P < 0.001 Significantly different by paired t-test between predicted REE and measured REE
4)[(predicted REE - measured REE) / measured REE] × 100
5)Root Mean Squared Prediction Error = √(Σ(Predicted REE-Measured REE)
6)Percentage of subjects predicted by equation within 90% to 110% of measured REE
7)Percentage of subjects predicted by equation < 90% of measured REE
8)Percentage of subjects predicted by equation > 110% of measured REE
Evaluation of resting energy expenditure (REE) predictive equations in 52 obese children and adolescents based on bias, root mean squared prediction error (RMPSE), and percentage of accurate prediction
1)Mean ± SD
2)Mean (range)
3)*P < 0.05, **P < 0.01, ***P < 0.001 Significantly different by paired t-test between predicted REE and measured REE
4)[(predicted REE - measured REE) / measured REE] × 100
5)Root Mean Squared Prediction Error = √(Σ(Predicted REE-Measured REE)
6)Percentage of subjects predicted by equation within 90% to 110% of measured REE
7)Percentage of subjects predicted by equation < 90% of measured REE
8)Percentage of subjects predicted by equation > 110% of measured REE
Fig. 1Percentage of bias, root mean squared prediction error (RMSPE), and percentage of subjects with accurate predictions by 16 resting energy expenditure predictive equations for non-obese boys (◯, n = 27), non-obese girls (△, n = 49), obese boys (●, n = 32), obese girls (▲, n = 20), and total (line, n = 128) of the subjects
Fig. 2Bland-Altman plots for measured REE (MREE) and predicted REE (PREE) by 3 best-performing REE predictive equations (Molnar, Mifflin, and Harris-Benedict) for non-obese (◯, left panels) and obese (●, right panels) children and adolescents