1 Jean Mayer USDA Human Nutrition Research Center on Aging at Tufts University, Boston 02111; 2 New England Medical Center Hospital, Boston 02111, Massachusetts; and 3 Body Composition Unit, St. Luke's-Roosevelt Hospital Center, New York, New York 10025
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ABSTRACT |
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Body composition
methods were examined in 20 women [body mass index (BMI) 48.7 ± 8.8 kg/m2] before and after weight loss [44.8 ± 14.6 (SD) kg] after gastric bypass (GBP) surgery. The reference
method, a three-compartment (3C) model using body density by air
displacement plethysmography and total body water (TBW) by
H218O dilution
(3C-H218O), showed a decrease in percent body
fat (%BF) from 51.4 to 34.6%. Fat-free mass hydration was
significantly higher than the reference value (0.738) in extreme
obesity (0.756; P < 0.001) but not after weight
reduction (0.747; P = 0.16). %BF by
H218O dilution and air displacement
plethysmography differed significantly from %BF by
3C-H218O in extreme obesity (P < 0.05) and 3C models using 2H2O or
bioelectrical impedance analysis (BIA) to determine TBW improved mean
%BF estimates over most other methods at both time points. BIA results
varied with the equation used, but BIA better predicted %BF than did
BMI at both time points. All methods except BIA using the Segal
equation were comparable to the reference method for determining
changes over time. A simple 3C model utilizing air displacement
plethysmography and BIA is useful for clinical evaluation in this population.
three-compartment models
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INTRODUCTION |
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THE PREVALENCE OF
EXTREME OBESITY [defined as body mass index (BMI) 40
kg/m2] has increased threefold in the US in the last four
decades, and 3% of adults are classified as extremely obese
(18). Recent reports additionally confirm a rise in the
prevalence rates in this population (17). One consequence
of this demographic shift is that there is now a need for evaluating
the body composition of extremely obese individuals, both in clinical
practice and as part of research to evaluate the efficacy of different
treatment programs. However, there is very little published research on what body composition methods can be used with confidence in this now
prevalent population, either for groups of subjects or for individuals
(2, 3, 19). Probably in part due to this lack of
methodological examination, recent reports on the composition of weight
loss in extremely obese subjects use a wide range of methods, and the
reported composition of weight loss varies substantially (66-80%
fat) (1, 37, 43).
Several traditional reference methods for measuring body composition in nonobese and moderately obese individuals appear to be inaccurate for use in extremely obese individuals or are inappropriate for practical reasons. For example, dual-energy X-ray absorptiometry and in vivo neutron activation are used as reference techniques (22) in nonobese and moderately obese subjects, but extremely obese subjects frequently exceed the tested weight limits of the instruments and in some cases cannot physically fit into the measurement compartment. Widely accepted two-compartment body composition models, such as 2H2O dilution and densitometry, which rely on standard assumptions of fat-free mass (FFM) hydration [0.738, (8)] and density [1.1 g/ml (34)], may be inaccurate in this population, because extremely obese individuals (38) and even postobese individuals (14-16, 20, 24, 26) have excess extracellular water that invalidates these assumptions (8, 34, 35). Three-compartment models that include measurement of total body water (TBW) are theoretically more accurate than the two-compartment models for measuring body composition of extremely obese individuals, since they take into account individual variability in hydration (34), but they are not widely used because they require sophisticated equipment only available in a few research laboratories worldwide.
We therefore conducted a study to characterize the body composition of extremely obese subjects before and after gastric bypass surgery (GBP) and to measure the composition of their weight loss by use of sophisticated research techniques. Furthermore, we evaluated several clinical and research body composition techniques for their ability to measure body composition and the composition of weight loss in these subjects. As part of this study, we explored the potential for combining simple body composition methods to develop alternative methods that are simple to use and comparable to the accuracy achieved with research techniques. This general approach has been reported for nonobese and moderately obese individuals (14, 20) but has not been examined in extremely obese persons.
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SUBJECTS |
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The subjects were 20 women aged 39 ± 10 yr with a BMI of 37.5-76.4 kg/m2. They were patients who underwent GBP surgery for weight reduction at the Tufts-New England Medical Center Hospital and had measurements made of body composition before surgery (extreme obesity) and after weight loss and weight restabilization at 14 ± 2 mo (weight-reduced state). Exclusions for the study included diabetes, cancer, coronary heart disease, endocrine disorders or other acute or chronic diseases, and use of medications known to influence body composition (such as diuretics and corticosteroids). Measurements were conducted in the Clinical Study Unit of Tufts-New England Medical Center Hospital and at the Jean Mayer USDA Human Nutrition Research Center at Tufts University. The study was approved by the Human Investigation Review Committee of Tufts University and the Tufts-New England Medical Center Hospital. All subjects gave written, informed consent before participating.
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METHODS |
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Study protocol. Percent body fat (%BF) and FFM were determined by densitometry, isotope dilution, bioelectrical impedance analysis (BIA), and three-compartment modeling during a period of weight stability in the extremely obese state before GBP surgery and at a weight-reduced follow-up 14 ± 2 mo later. To ensure weight stabilization at each time period, subjects weighed themselves at home or at the clinical facility three times a week in the fasting state in the month before scheduled testing. Subjects who were not weight stable (defined as within 2.3 kg of starting weight) during this period were monitored further and were scheduled when the defined weight stability was achieved. All body composition measurements were conducted after a 12-h overnight fast and by the same scientist (S. K. Das) at each time point.
Subjects were admitted to the Clinical Study Unit on the evening before the start of the study. On the following morning, TBW was measured by H218O and 2H2O dilutions, and extracellular water (ECW) volume was measured using sodium bromide (NaBr) dilution. One week later, subjects were readmitted to the Clinical Study Unit, body density was determined by air displacement plethysmography and hydrostatic weighing, and BIA was conducted. This study was part of a 2-wk doubly labeled water study, and it was not possible for all measurements to be performed on the same day because of protocol-related aspects. However, subjects were weight stable during this 2-wk period and also during the month before each testing phase. Body weight was measured on cross-calibrated scales each test day, and differences in body weight between the 2 days were assumed to be due to differences in body water, as we will describe.Densitometry. Air displacement plethysmography (BOD POD, Life Measurement, Concord, CA) was used to measure body density, as described elsewhere (28). The principles of this method have been detailed previously (13). Measurements were conducted with the subject in a Lycra-style swim cap and minimal skin-tight shorts or underwear, dry, and in the resting state according to the manufacturer's instructions. Body weight was measured to the nearest 1 g on the instrument's electronic scale, which was calibrated daily. After the standard calibration of the plethysmograph's chamber, subjects entered the chamber for measurements of raw body volume and thoracic gas volume (VTG). VTG measurements were repeated until a figure of merit value <1.0 (signifying compliance) was obtained for all subjects. The obtained VTG and the average of two raw body volume measurements that agreed within 0.2% were used in subsequent calculations. Body density was calculated as body weight per body volume, where body volume was corrected for VTG and a surface area artifact, as described previously (13). Body weight and the corrected body volume were used to calculate body density, and %BF was derived by using the two-compartment Siri formula (35). Calculations were performed by the BOD POD's software (version 1.69).
Body density was also determined by hydrostatic weighing in a subset of the study group (n = 11) in the extremely obese state only, and %BF was calculated using the Siri formula (35). Reasons for excluding other subjects from the hydrostatic weighing procedure included subjects' expression of discomfort and/or apprehension about being tested in the water tank, inability to perform the maneuvers required for satisfactory testing, and other such physical constraints. In subjects who performed the procedure, weight under water during maximal exhalation to residual lung volume (VR) was determined until three body fat estimates agreed within 1% [for this preliminary agreement, a predicted VR (10) was temporarily used]. VR was measured at the pulmonary laboratory at Tufts-New England Medical Center Hospital before hydrostatic weighing by nitrogen washout (12) with a Sensor Medics Vmax 229 (Yorba Linda, CA) with software version 4.8. Measurements were made until three values were within 10%, and the best values (criteria for "best" as defined by the Sensor Medics operation manual section 9.23, p. 0296C) were used in the calculation of %BF. No correction was made for gastrointestinal gas volume. The three %BF values were recalculated using measured VR, and the mean was used in data analysis.Isotope dilution.
On day 1, subjects were given a mixed dose of
2H2O and H218O
containing 0.1 g of 18O and 0.07 g of
2H2 per kg body weight for determination of
TBW. The dose was administered orally after a collection of baseline
urine early in the morning. Subjects remained in the Clinical Study
Unit while urine specimens were collected every hour for 5 h after
dose administration. All samples were aliquoted into airtight storage
tubes (Cryos cryogenic vials, Vangard International, Neptune, NJ)
immediately after collection and were stored at 20°C until analysis.
ECW.
The intravenous NaBr method (36) was used to determine ECW
volume. An intravenous dose of a 3% solution of NaBr was administered at 1 ml/kg body wt. Blood samples were collected before the dose was
administered and 2, 3, and 4 h after dose administration. The
bromide concentration in plasma samples was analyzed by ion chromatography (44). Since there were no significant
differences between the measurements at the three time points,
indicating that bromide had equilibrated in the extracellular space by
2 h, the mean of 2-, 3-, and 4-h measurements was used for the
calculation of dilution space. ECW was calculated from the increase in
bromide concentration between baseline and mean postdose blood samples, the amount of bromide injected (44), an assumed factor of
0.90 for the nonextracellular distribution of bromide (9),
and the Donnan equilibrium factor of 0.95 (9). ECW was
calculated as a volume measurement and converted to kilograms by using
the conversion factor of 0.99336 (density of water at normal body
temperature). Intracellular water (ICW) was calculated as TBW ECW. To further examine the metabolically active component of FFM,
cellular mass (CM) was calculated as FFM
ECW, where FFM was
calculated by the Siri 3C-H218O method
described below. Solids were not measured in this study but were
estimated as 100
ECW + ICW + fat mass, each expressed as a percentage of body weight. The NaBr protocol was ready for use
only after the first four subjects completed all of their presurgery
measurements, and therefore ECW measurements could not be obtained in
these four subjects. The "n" is therefore equal to 16 in
analyses involving ECW data.
BIA. BIA measurements were made using a four-terminal bioelectrical impedance analyzer (model 103B, RJL Systems, Mt. Clemens, MI) in thermoneutral ambient conditions. Subjects removed their shoes, socks, and all accessories containing metal. They then rested supine for 15 min before the start of the measurement. During the measurement, the subject rested supine on a nonconducting surface and without limbs touching each other or any other part of the body. A small electrical current of 800 µA at 50 kHz was introduced through two of the terminals, which were affixed to the skin on the dorsal surfaces of the left hand and foot with self-adhesive spot electrodes. The two detection terminals, again attached to the skin of the left hand and foot with self-adhesive electrode pads, were placed between the distal prominences of the radius and ulna and between the lateral and medial malleoli. Three values for resistance and reactance were recorded at each measurement, and the means were used in subsequent calculations. FFM was calculated using the equations of RJL (the manufacturer), Lukaski et al. (25), and the obese-specific equations of Segal et al. (33). TBW by BIA was also calculated using the equations of Kushner and Schoeller (23).
Anthropometry. Height was measured to the nearest 0.1 cm with a wall-mounted stadiometer, and weight was measured to the nearest 1 g by use of a calibrated scale (Detecto-Cardinal Scale Manufacturing model CN-20, Webb City, MO). One week later, body weight was measured to the nearest 1 g on a different calibrated electronic scale (BOD POD, Life Measurement). There was no significant difference in the accuracy of the two scales as determined by calibration weights, and any differences in body weight between the two test days were assumed to be water. Waist circumference was measured at the level of the umbilicus, and hip circumference was measured with a quilting tape as the maximal circumference at the level of the buttocks.
3C models.
The 3C model of Siri (35) modified by Modlesky et al.
(29), which incorporates body density (d) and TBW as a
fraction of body weight (w), was used to calculate %BF as
2.1176/d 0.78w
1.351, and FFM was calculated as the
difference between body weight and fat mass. The modification by
Modlesky et al. incorporated the assumption that the mineral-to-protein
ratio in the fat-free body is a constant (6.8/19.4), on the basis of
work by Brozek et al. (8), whereas the original equation
by Siri (34, 35) assumes that the mineral-to-protein ratio
is 5/12.
FFM hydration coefficient. The FFM hydration coefficient was calculated in standard fashion as TBW/FFM (4), by use of TBW determined from 2H2O and FFM determined by 3C-H218O. By using different isotope dilutions for TBW (2H2O) and FFM (H218O) in the calculation, the denominator remained independent of the numerator, and error propagation was minimized.
"The Reference Female." For the purposes of this paper, the Reference Female values used were obtained as follows. The value for the %BF compartment was obtained from the Reference Female model work done by Katch and colleagues (21, 27) with the theoretical model of Behnke and Wilmore (5, 6). For body water compartments, i.e., ECW and ICW, the values for the Reference Man in the review by Wang et al. (42) were used. Solids were derived as 100% minus the sum of %BF and %TBW.
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STATISTICS |
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Statistical analyses were performed by using SPSS 10.0.7 and SYSTAT 9.0.1 (SPPS, Chicago, IL) and SAS (version 8, SAS Institute, Cary, NC). Values are expressed as means ± SD unless otherwise specified. Student's t-tests for paired data were used to examine whether there were significant changes over time in body compartments after weight loss, and one-sample t-tests were used to compare body composition in the extremely obese and weight-reduced states with Reference Female values. Bonferroni corrections were made to adjust for multiple comparisons. Linear regression analysis was used to determine whether FFM hydration varied systematically with %BF.
The agreement between the reference method and the test method was assessed by using ANOVA and Bland-Altman analysis (7). The mean ± SE difference (bias) for %BF between the reference method (3C-H218O) and the alternative methods was calculated by subtracting each alternative method from the reference method. Bland-Altman analysis was performed, and limits of agreement were calculated to determine the range of agreement between methods for individual subjects. ANOVA with Dunnett's post hoc test was used to determine whether %BF by the alternative methods differed significantly from the reference method.
Regression analysis was used to determine the relationships between BMI and %BF and between FFM and fat mass. Pearson correlation coefficients were calculated to determine the associations between the mean difference of each method and the reference method and physiological characteristics, such as ECW, ICW, ratio of ECW to ICW, ECW as % of TBW, FFM hydration, BMI, and waist-to-hip ratio to determine whether these characteristics affected the accuracy of the methods.
For all tests, statistical significance was accepted at P < 0.05.
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RESULTS |
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Table 1 shows the body composition
of the subjects in the extremely obese and weight-reduced states by use
of the reference 3C-H218O method for body
composition. Weight loss was substantial, with mean BMI decreasing from
47.8 to 30.4 kg/m2. Also, as shown in Table 1, weight loss
was primarily as fat mass loss (79 ± 11% of weight loss was fat,
and 21 ± 8% was FFM). In both the extremely obese and
weight-reduced states, the subjects had relatively high FFM hydration
compared with the reference value of 0.738 (8), but the
difference was significant only in the extremely obese state
(P < 0.001). No significant difference in FFM
hydration was observed between the two physiological states. ECW/ICW
ratios also did not differ significantly between extreme obesity and
weight-reduced states and were significantly higher than reference
values (0.76) (42). Figure 1
shows the body compartments of the subjects expressed as a percentage
of body weight compared with values in our Reference Female. Both ECW
and ICW expressed as percentages of body weight were significantly
lower (P < 0.05) in the extremely obese state compared
with the Reference Female values. In the weight-reduced state only, ICW
expressed as a percentage of body weight was significantly lower
(P < 0.05) than the Reference Female values. As shown
in Fig. 2, FFM hydration did not increase significantly with increasing %BF, either in extreme obesity
(r = 0.06; P < 0.81) or after weight
reduction (r = 0.28; P < 0.22). However, FFM hydration was more variable after weight reduction, with
values ranging from 0.733 to 0.798 in extreme obesity and from 0.663 to
0.786 after weight reduction. In addition, the ratio of ECW to ICW
increased with increasing %BF both in extreme obesity (r = 0.54; P < 0.05) and in the
weight-reduced state (r = 0.61; P < 0.05) (data not shown).
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Table 2 shows a comparison of %BF
determined by the different methods in the extremely obese and
weight-reduced states, with the 3C-H218O model
used as the reference method. In general, mean differences in %BF
(reference method alternative method) for each method did not
differ significantly from the reference method in extreme obesity or in
the weight-reduced state, with the exception of H218O and 2H2O
dilutions (with assumed hydration values), air displacement plethysmography in the extremely obese state, and BIA at both time
points (which varied with the particular prediction equation used;
P < 0.05). However, for each method, interindividual
variability was greater in the weight-reduced state than in extreme
obesity, as indicated by the larger SEs and Bland-Altman limits of
agreement. In both the extremely obese and weight-reduced states, the
methods that gave mean values closest to the reference method were the 3C-2H2O and 3C-BIA models and
2H2O dilution calculated with the mean measured
FFM hydration coefficient. %BF determined by
H218O dilution and 2H2O
dilution using the standard hydration coefficient of 0.738 had narrower
limits of agreement than 3C-BIA, but the mean %BF values were
1.0-1.3%BF higher than the reference method (significant for
H218O and 2H2O dilution
with the assumed hydration coefficient in extreme obesity,
P < 0.05). %BF measured by air displacement
plethysmography averaged 1.8%BF higher than the reference method
(significant in extreme obesity, P < 0.05), and the
limits of agreement were similar to or slightly larger than for
dilutions. Hydrostatic weighing also slightly overestimated %BF, by
0.6%BF in extreme obesity, but limits of agreement were somewhat wider
than those for air displacement plethysmography. [There was a strong
agreement between body volume measured by hydrostatic weighing and that by air displacement plethysmography (adjusted
R2 = 0.9995; P < 0.0001)]. For %BF determined by BIA (Table 2), each of the three
equations tested resulted in %BF that differed significantly from the
reference method. We found that the equations by Lukaski et al.
(25) provided mean %BF values that were closest to the
%BF measured by the reference method at both time points. Although
mean %BF values by the Segal equation (33) were 1.5%BF lower than the reference method in extreme obesity, the mean difference was large (4.8%BF) and significantly different from the reference method (P < 0.01) in the weight-reduced state.
Estimates of %BF using the (RJL) manufacturers' equation were also
significantly and largely different from the reference method both in
extreme obesity and after weight reduction (P < 0.05).
For all BIA equations tested, the limits of agreement were much wider
than for the two-compartment (dilution, densitometry) and 3C models.
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For measuring changes over time with weight reduction (also shown in
Table 2), nearly all methods gave mean results that were similar to
those of the reference technique. The 3C and two-compartment models all
provided group mean estimates of the change in %BF that were nearly
identical to the reference method. BIA estimates of mean %BF change
were also good when the RJL or Lukaski et al. (25)
equations were used (0.5,
0.4%BF, respectively), but not when the
Segal equation (33) was used. For estimating %BF change
in individual subjects, the 3C-BIA model and
2H2O dilution (with either the standard or the
mean measured FFM hydration coefficients) resulted in wider limits of
agreement than the 3C-2H2O model,
H218O dilution, or air displacement
plethysmography. Therefore, using BIA with body density in a
three-compartment model (3C-BIA) did not offer an advantage over air
displacement plethysmography alone for measuring changes over time in
this population. In addition, the limits of agreement were much wider
for all BIA equations than for the other techniques.
The relationship between %BF by the reference method and BMI was also
examined at baseline and follow-up and is summarized in Fig.
3. BMI was significantly associated with
%BF in both extremely obese and weight-reduced states, but the
correlation was stronger in the weight-reduced state than in the
extremely obese state. Partial correlations of BMI with fat mass
(controlled for FFM) and FFM (controlled for fat mass) showed that,
both in extreme obesity and after weight reduction, BMI was
significantly associated with fat mass independent of FFM but not with
FFM itself.
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Selected subject characteristics related to body size and hydration,
including FFM hydration and BMI, were examined as predictors of method
differences in %BF (reference method minus alternative method) to help
determine potential factors associated with method differences. In
extreme obesity, %BF was increasingly underestimated with increasing
FFM hydration by use of dilution techniques (r = 0.911-0.943; P < 0.0001) and by BIA with the RJL
equation (r = 0.49; P = 0.051), but it
was increasingly overestimated with increasing FFM hydration when air
displacement plethysmography (r = 0.937;
P < 0 .0001) was used. In contrast, in the
weight-reduced state, only the difference in %BF for
2H2O dilution (with either the actual or
assumed hydration coefficient; r = 0.99;
P < 0.0001) was increasingly underestimated with
increasing FFM hydration.
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DISCUSSION |
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Extreme obesity poses challenges to the measurement of body composition because of altered body hydration, large individual variations in the hydration state, other potential alterations in the composition of FFM (26, 38, 39), and physical size limitations. However, our results show that %BF in the extremely obese and the weight-reduced states and the change in body composition with weight loss can be measured in groups and individuals by using a variety of techniques, including three-compartment models combining methods such as air displacement plethysmography and BIA that are commercially available, technically simple to perform, and minimally invasive. Using these methods and also the reference 3C-H218O technique, we found that the mean composition of massive weight loss in extremely obese patients undergoing GBP surgery was comparable to reported summaries of the composition of weight loss in overweight individuals losing modest amounts of weight (32), indicating relatively stable body composition changes under widely different weight loss circumstances. As characterized in this study, the compartmental shifts with respect to fat and FFM were large relative to the Reference Female with normal body weight, and despite massive weight loss, some of these variations persisted. The mean FFM hydration remained somewhat elevated after weight reduction induced by GBP compared with the reference value (0.747 vs. 0.738), although not significantly so. However, in contrast to what was speculated previously (40), FFM hydration did not increase systematically with increasing %BF within the range of 20-50%BF. It should be noted that this study may not be adequately powered to conclusively establish the nature of this relationship, and further research in a large number of subjects is needed to validate this finding. Although some of the observed individual variation in FFM hydration may be attributed to biological variations and measurement error, these findings imply that the hydration-related assumptions associated with the two-compartment models may not be the same for all individuals across varying %BF levels in this population (i.e., the assumed hydration of 0.738 may not be applicable through the range of %BF of the subjects in either the extremely obese or weight-reduced states, as demonstrated by the small and nonsignificant mean difference in %BF between the reference method and 2H2O dilution method when the mean measured FFM hydration value was used instead of the assumed hydration value). The findings also help to explain why nearly all of the models and methods tested performed very well compared with the reference method for measuring changes in %BF in our subjects.
A three-compartment model that incorporates measurements of body density and TBW has been used increasingly since first proposed by Siri in 1961 (35). This model allows for substantial improvements in accuracy over two-compartment models because, unlike two-compartment models, it does not rely on assumptions of standard hydration [0.738, (8)] or FFM density [1.1 g/ml (35)] for its validity. In a comparison of 16 body composition methods against a reference six-compartment model, Wang et al. showed that the Siri three-compartment model provided the most accurate estimates of %BF (41). However, three-compartment models have typically been used only in research laboratories specializing in body composition assessment, because they require highly specialized and complex facilities, such as a hydrostatic weighing tank and isotope ratio mass spectrometry. Moreover, hydrostatic weighing is impossible to perform in many extremely obese subjects because of their physical limitations. Alternative three-compartment models combining simpler methods, such as body density using skinfolds and TBW using BIA, have been reported previously in normal-weight populations by some groups (14, 20, 45). Although the study of Evans et al. (14) did not support the use of such a three-compartment model in a normal-weight (and normally hydrated) population, their usefulness in extreme obesity and for measuring changes in body composition with massive weight loss has not been examined. In the present study, we found for the first time that a three-compartment model combining determinations of body density by air displacement plethysmography with determinations of TBW by BIA [using the equation of Kushner and Schoeller (23)] provided values for %BF in the extremely obese and weight-reduced states that were in close agreement with values determined by the reference 3C-H218O method and that also did not differ significantly from the reference method for group mean assessment of the change in %BF over time. We also found that air displacement plethysmography alone provided an assessment of the change in %BF (as did more experimentally complex methods, such as isotope dilution combined with a population-specific hydration coefficient) comparable to the assessment obtained by the reference three-compartment model. Air displacement plethysmography alone provided a slightly higher estimate of %BF (by ~1.8%BF) in the extremely obese state and in the weight-reduced state (with measured VTG used at both time points) relative to the reference method; however, our subjects were able to perform these measurements with relative ease compared with hydrostatic weighing, and there were no size constraints imposed by the machine over the wide range of BMI (37-77 kg/m2) tested in our study. The ease and speed with which measurements can be obtained and other considerations (for example, if quantifying fat mass loss is the objective) make air displacement plethysmography an attractive option for measurement of body composition in the extremely obese and weight-reduced states provided that a simple group mean correction can be made for the small overestimation.
Concerning the other methods tested in this study, isotope dilution to measure TBW gave slightly higher values for %BF than the three-compartment models when a standard hydration factor was used because of high hydration in the extremely obese state (mean water % in FFM was 75.6% compared with the reference value of 73.8%). It was also noted that the hydration of FFM was higher (although not significantly so) than the reference value after weight loss, suggesting that the standard hydration factor may also be inappropriate for use in a weight-reduced population that was formerly extremely obese. However, these findings need to be validated in larger studies. The relative accuracy of the dilution techniques for the group of subjects as a whole was improved by using the group mean measured hydration coefficient for FFM in the population; however, in the absence of accepted published values for different population groups, a measurement of actual hydration may be required for each population studied, and this would require technically demanding measurements of TBW by both 2H2O and H218O. Additionally, FFM hydration appeared to be associated with the mean difference in %BF of some of the tested methods compared with the reference method in both the extremely obese and the weight-reduced state, further indicating the need for population-specific values for FFM hydration. The relative accuracy of the other method tested, BIA, was highly dependent on the equations used to calculate %BF, with the Lukaski et al. equation (25) providing mean %BF values closest to the reference method in the extremely obese and weight-reduced states and for changes over time. Furthermore, even when this equation was used, the %BF limits of agreement were much broader than for the other methods, making BIA a method more suitable for population groups than for individuals.
An additional result from this study was that the relationship between BMI and %BF appeared to change between the extremely obese and weight-reduced states, perhaps indicating a plateau in the relationship between %BF and BMI at higher BMI values. Although both BMI and %BF represent a mathematical combination of fat mass and FFM, we found that BMI was associated with fat mass but not FFM at both time points, in contrast to our previous findings in subjects ranging from 12 to 47%BF (45). These findings indicate that further research is needed to examine the utility of BMI to accurately predict %BF in different subject groups. In the meantime, it should be noted that BIA (using any of the tested equations) was more strongly associated with %BF than BMI and therefore could be more widely used as a tool to measure body fatness in clinical practice and population-based research.
In conclusion, a simple three-compartment model combining measurements of body density by air displacement plethysmography and TBW by BIA can provide measurements of %BF that are comparable to a traditional, highly technical three-compartment model in the extremely obese and weight-reduced states and for measuring changes in %BF over time; it is an attractive alternative to three-compartment models requiring facilities such as isotope ratio mass spectrometry, which require very substantial technical expertise. Most methods gave values for body composition change that were comparable to values obtained by the reference method, including isotope dilution combined with a group-specific factor for the hydration of FFM and air displacement plethysmography alone. Further studies are needed to confirm the broad utility of these assessments of body composition methodology in extremely obese and other populations.
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ACKNOWLEDGEMENTS |
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We thank all of the patients who participated in the study; Dr. Marshall Otter and Irene Ellis for their assistance with mass spectrometry; the nursing staff at the General Clinical Research Center, Tufts-New England Medical Center, for their expert patient care and support; and the Body Composition Unit at St. Luke's Roosevelt Hospital for the sodium bromide analysis.
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FOOTNOTES |
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This study was supported by National Institutes of Health Grants MH/DK-54092-01A3, M01-RR-00054 (provided to the New England Medical Center General Clinical Research Center through the National Center for Research Services), and P30 DK-46200 (provided to the Boston Obesity Nutrition Research Center) and by the US Department of Agriculture, Agricultural Research Service, under contract 53-3K06-5-10. Contents of this publication do not necessarily reflect the views or policies of the US Department of Agriculture.
Address for reprint requests and other correspondence: Dr. Megan A McCrory, Energy Metabolism Laboratory, Rm. 614, Jean Mayer USDA Human Nutrition Research Center on Aging at Tufts Univ., 711 Washington St., Boston, MA 02111 (E-mail: megan.mccrory{at}tufts.edu).
The costs of publication of this article were defrayed in part by the payment of page charges. The article must therefore be hereby marked "advertisement" in accordance with 18 U.S.C. Section 1734 solely to indicate this fact.
First published February 25, 2003;10.1152/ajpendo.00185.2002
Received 1 May 2002; accepted in final form 10 February 2003.
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