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2.
J Am Diet Assoc ; 109(5): 836-45, 2009 May.
Article in English | MEDLINE | ID: mdl-19394470

ABSTRACT

OBJECTIVE: To compare standardized prediction equations to a hand-held indirect calorimeter in estimating resting energy and total energy requirements in overweight women. DESIGN: Resting energy expenditure (REE) was measured by hand-held indirect calorimeter and calculated by prediction equations Harris-Benedict, Mifflin-St Jeor, World Health Organization/Food and Agriculture Organization/United Nations University (WHO), and Dietary Reference Intakes (DRI). Physical activity level, assessed by questionnaire, was used to estimate total energy expenditure (TEE). SUBJECTS: Subjects (n=39) were female nonsmokers older than 25 years of age with body mass index more than 25. STATISTICAL ANALYSES: Repeated measures analysis of variance, Bland-Altman plot, and fitted regression line of difference. A difference within +/-10% of two methods indicated agreement. RESULTS: Significant proportional bias was present between hand-held indirect calorimeter and prediction equations for REE and TEE (P<0.01); prediction equations overestimated at lower values and underestimated at higher values. Mean differences (+/-standard error) for REE and TEE between hand-held indirect calorimeter and Harris-Benedict were -5.98+/-46.7 kcal/day (P=0.90) and 21.40+/-75.7 kcal/day (P=0.78); between hand-held indirect calorimeter and Mifflin-St Jeor were 69.93+/-46.7 kcal/day (P=0.14) and 116.44+/-75.9 kcal/day (P=0.13); between hand-held indirect calorimeter and WHO were -22.03+/-48.4 kcal/day (P=0.65) and -15.8+/-77.9 kcal/day (P=0.84); and between hand-held indirect calorimeter and DRI were 39.65+/-47.4 kcal/day (P=0.41) and 56.36+/-85.5 kcal/day (P=0.51). Less than 50% of predictive equation values were within +/-10% of hand-held indirect calorimeter values, indicating poor agreement. CONCLUSIONS: A significant discrepancy between predicted and measured energy expenditure was observed. Further evaluation of hand-held indirect calorimeter research screening is needed.


Subject(s)
Basal Metabolism/physiology , Calorimetry, Indirect/standards , Energy Metabolism/physiology , Exercise/physiology , Overweight/metabolism , Adult , Aged , Analysis of Variance , Body Mass Index , Calorimetry, Indirect/methods , Female , Humans , Life Style , Mathematics , Middle Aged , Nutrition Policy , Nutritional Requirements , Predictive Value of Tests , Reference Values , Regression Analysis , Reproducibility of Results , Sensitivity and Specificity , World Health Organization
3.
BMC Med Res Methodol ; 8: 38, 2008 Jun 09.
Article in English | MEDLINE | ID: mdl-18541038

ABSTRACT

BACKGROUND: Activity monitors (AM) are small, electronic devices used to quantify the amount and intensity of physical activity (PA). Unfortunately, it has been demonstrated that data loss that occurs when AMs are not worn by subjects (removals during sleeping and waking hours) tend to result in biased estimates of PA and total energy expenditure (TEE). No study has reported the degree of data loss in a large study of adults, and/or the degree to which the estimates of PA and TEE are affected. Also, no study in adults has proposed a methodology to minimize the effects of AM removals. METHODS: Adherence estimates were generated from a pool of 524 women and men that wore AMs for 13 - 15 consecutive days. To simulate the effect of data loss due to AM removal, a reference dataset was first compiled from a subset consisting of 35 highly adherent subjects (24 HR; minimum of 20 hrs/day for seven consecutive days). AM removals were then simulated during sleep and between one and ten waking hours using this 24 HR dataset. Differences in the mean values for PA and TEE between the 24 HR reference dataset and the different simulations were compared using paired t-tests and/or coefficients of variation. RESULTS: The estimated average adherence of the pool of 524 subjects was 15.8 +/- 3.4 hrs/day for approximately 11.7 +/- 2.0 days. Simulated data loss due to AM removals during sleeping hours in the 24 HR database (n = 35), resulted in biased estimates of PA (p < 0.05), but not TEE. Losing as little as one hour of data from the 24 HR dataset during waking hours results in significant biases (p < 0.0001) and variability (coefficients of variation between 7 and 21%) in the estimates of PA. Inserting a constant value for sleep and imputing estimates for missing data during waking hours significantly improved the estimates of PA. CONCLUSION: Although estimated adherence was good, measurements of PA can be improved by relatively simple imputation of missing AM data.


Subject(s)
Ergometry/instrumentation , Exercise , Motor Activity , Patient Compliance , Acceleration , Adult , Aged , Attitude to Health/ethnology , Body Composition , Circadian Rhythm , Data Interpretation, Statistical , Energy Metabolism/physiology , Female , Humans , Male , Middle Aged , Reproducibility of Results
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