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Original Research Communication |
1 From the Pennington Biomedical Research Center, Louisiana State University, Baton Rouge.
2 Supported by NIH grant R01-DK50736A (to JCL). 3 Address reprint requests to JC Lovejoy, Women's Nutrition Research Program, Pennington Biomedical Research Center, 6400 Perkins Road, Baton Rouge, LA 70808. E-mail: lovejoj{at}pbrc.edu.
| ABSTRACT |
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Objective: We compared dietary intakes and energy expenditure (EE) between middle-aged, premenopausal African American and white women participating in a longitudinal study of the menopausal transition.
Design: Dietary intakes by food record, EE by triaxial accelerometer, physical activity by self-report, and body composition by dual-energy X-ray absorptiometry were compared in 97 white and 52 African American women. Twenty-fourhour and sleeping EE were measured by whole-room indirect calorimetry in 56 women.
Results: Sleeping EE (adjusted for lean and fat mass) was lower in African American than in white women (5749 ± 155 compared with 6176 ± 75 kJ/d; P = 0.02); however, there was no significant difference in 24-h EE between groups. Reported leisure activity over the course of a week was less in African American than in white women (556 ± 155 compared with 1079 ± 100 kJ/d; P = 0.02), as were the daily hours spent standing and climbing stairs. Dietary intakes of protein, fiber, calcium, magnesium, and several fatty acids were significantly less in African Americans, whereas there were no observed ethnic differences in intakes of fat or carbohydrate. Body fat within the whole group was positively correlated with total, saturated, and monounsaturated fat intakes and inversely associated with fiber and calcium intakes. Fiber was the strongest single predictor of fatness.
Conclusion: Ethnic differences in EE and the intake of certain nutrients may influence the effect of menopausal transition on obesity in African American women.
Key Words: Menopause energy expenditure physical activity middle-aged women Healthy Transitions Study ethnic differences dietary intakes
| INTRODUCTION |
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Poehlman et al (2) suggested that changes in energy expenditure (EE) and dietary intake patterns may play a role in weight gain during menopause. In a longitudinal study of perimenopausal women, they reported that women who experienced menopause had greater decreases in resting metabolic rate and leisure-time physical activity than did women of the same age who remained premenopausal. Both groups of women slightly increased their energy intake; thus, the women who experienced menopause had a significantly greater positive energy balance than did the premenopausal women.
Several investigators reported differences in EE between premenopausal African American and white women (712). These differences were typically in studies where whole-room calorimetry was used so that sleeping (ie, basal) EE could be measured directly. To our knowledge, the assessment of ethnic differences in EE or physical activity patterns in perimenopausal women has not yet been performed. Because African American women have a high prevalence for obesity (13) and menopause is a time of increased risk for obesity development in women, the present study investigated ethnic differences in EE and dietary intakes in a cohort of women participating in a longitudinal study of the menopause transition. Baseline cross-sectional data from this cohort are presented.
| SUBJECTS AND METHODS |
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43 y of age, and have had
5 menstrual periods in the 6 mo before screening. All potential volunteers underwent a 3-step screening process that included measures of blood chemistry and lipids, a physical exam, and a psychological interview to determine their ability to complete a 4-y longitudinal study. Women were excluded if they were taking medication regularly (including hormones), were not having regular menstrual cycles, or had clinically abnormal results from laboratory tests or the physical examination. If a volunteer was found eligible, she signed an informed consent form and completed baseline assessments (see below). Fifty-two African American and 97 white women who had complete dietary and activity records were included in the present analysis. Race was determined by self-reported black or white ancestry in both parents and grandparents. All procedures were in accord with the ethical standards of the Louisiana State University Institutional Review Board, who approved the protocol and informed consent form.
Body composition
Height and weight were assessed in subjects wearing hospital gowns and who had fasted overnight. Body composition (fat and lean mass) was determined by dual-energy X-ray absorptiometry (DXA) (Hologic QDR2000; Hologic Inc, Waltham, MA).
Physical activity measures
Physical activity was assessed in 3 ways. First, subjects completed a previously validated physical-activity-recall questionnaire (14) that asks about both leisure and occupational physical activity performed over the past year and the past week. For the past year and past week, the average number of hours per week of each activity was calculated and the total hours of all activities were totaled to provide a total for that week. The total hours per week of each activity were multiplied by the estimated metabolic cost of the activity to provide estimated EE (metabolic cost of activity/wk or kcal/wk). Data from the physical activity recall were expressed as leisure activity reported in the week before the clinic visit and total activity (leisure and occupational activity) over the past year. Second, subjects wore a triaxial motion sensor (Tritrac; Reining Inc, Madison, WI) for 4 consecutive days, including 1 weekend day, after their clinic visit. Data from this motion sensor are expressed as total daily EE (which includes measured activity plus the calculated resting metabolic rate) and physical activity EE only. Finally, on the 4 days when subjects wore the accelerometer, they also completed a detailed 24-h activity record (15). On this record the subjects were asked to record whether they were sleeping, sitting, standing, watching television or videos, or exercising during each hour of the day.
Twenty-fourhour EE
Twenty-fourhour EE and its components were determined in a subset of 56 women (12 African Americans and 44 whites) with a whole-room calorimeter. Details about the calorimeter, including validation data, were described previously (16). Briefly, the calorimeter interior measured 32.8 x 39.4 x 26.2 m, corresponding to a volume of
27000 L of air, and operated at an ambient temperature of 22.2 ± 0.5°C and a relative humidity of 50% ± 5%. Subjects entered the calorimeter at 0900 and exited at 0730 the next morning. During this period, all oxygen and carbon dioxide circulating in the chamber was measured. An activity schedule based on the participant's habitual activity level (assessed by triaxial accelerometer) was imposed. Alternating periods of free time (eg, reading and television watching), light physical activity (eg, walking on the treadmill), meal consumption, and sleep occurred at fixed times. On each experimental day, the chambers were calibrated before use with pure gas mixtures. Propane combustion tests lasting 22.5 h were interspersed into the calorimetry schedule once a week to determine the accuracy and precision of the calorimeter.
EE and substrate oxidation were calculated from oxygen consumption (
O2), carbon dioxide production (
CO2), and urinary nitrogen excretion by using the equations of Acheson et al (17). Sleeping EE was calculated from the lowest sustained metabolic rate achieved between 0200 and 0500, extrapolated to 24 h. Exercise EE was calculated as total EE during the prescribed exercise periods, which varied from individual to individual on the basis of their habitual activity. Spontaneous physical activity in the calorimeter was the amount of time (excluding treadmill walking) that the subject moved at a speed above a threshold of ± 7 cm.
Food intake
All subjects completed a 4-d food record following instruction from a dietitian. In most cases this record was collected during the same 4 d that the subjects wore the triaxial motion sensor. Intake data were analyzed by using Moore's Extended Nutrient database (MENu; Pennington Biomedical Research Foundation, 1998). Most foods in the database were derived from the US Department of Agriculture's most current data sets, the Nutrient Database for Standard Reference (release 13, 2000) and the Survey Nutrient Database for the Continuing Survey of Food Intakes by Individuals (19941996). The database also contains many unique regional foods and combination food items. The database was validated and used in multicenter trials funded by the National Institutes of Health (18).
Statistical analysis
Data were analyzed by using SAS-PC version 6.12 (SAS Institute Inc, Cary, NC). Descriptive statistics were calculated for each variable and normality was assessed. Variables that were not normally distributed were log transformed before analysis. The general linear models procedure (PROC GLM) was used to assess differences between African American and white women, adjusted as needed for covariates. Partial correlation analyses (adjusted for total energy intake) were performed to determine the relation between dietary intakes and body-composition variables in the whole population and in African American and white women separately. PROC GLM was used to compare the slopes of the relations between body composition and dietary variables by race. Multiple regression analysis with use of the R2 selection procedure was performed to examine the relative importance of diet and activity factors on body composition. A P value of 0.05 was considered significant.
| RESULTS |
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Partial correlation coefficients (adjusted for total energy intake) between dietary intakes and measures of obesity are shown in Table 4
. Positive correlations between percentage body fat or BMI and total fat, saturated fat, monunsaturated fat, and dietary cholesterol were found. Additionally, intakes of 14:0, palmitic (16:0), palmitoleic (16:1), stearic (18:0), and oleic (18:1) acids were positively correlated with percentage body fat or BMI. Inverse correlations were observed between percentage body fat and fiber, calcium, magnesium, EPA, and docosahexanoic acid (22:6n-3) intakes. In general, the magnitude of the correlations was similar between African American and white women, although a few differences were noted. For example, the absolute magnitude of the correlations between body fat and fiber, calcium, and magnesium was greater in white than in African American women, whereas the correlation between 14:0 and body fat was greater in African American than in white women. When the slopes of the regression equations in the 2 groups were statistically compared by use of general linear models procedures, significant differences between races were found for the relation between BMI and dietary calcium (P = 0.04). The race difference in the slope between calcium and body fat was nearly significant (P = 0.07).
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| DISCUSSION |
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Recently, Luke et al (19) showed that the resting metabolic rate in Nigerian blacks does not differ from that in African Americans, suggesting that the difference in obesity prevalence between these 2 groups results from lifestyle or gene-environment interactions. Although this may be the case for populations that are genetically similar (eg, Nigerian and US blacks), it may not be true for more genetically dissimilar populations. Certainly, our data and the data from the other studies cited above suggest that there are differences in EE between US whites and blacks, although it is not clear whether this lower EE contributes to greater obesity in African Americans.
Race differences in physical activity patterns have not been as widely studied, but several studies have compared physical activity between African American and white women. With the use of a physical-activity-recall instrument, Tuten et al (20) found that white women had a greater mean physical activity in the previous 24-h time frame than did black women and that black women were significantly more sedentary. Additionally, 2 studies that used the doubly labeled water method (21, 22) showed that total daily EE was significantly lower in African American women than in white women, mainly because the African American women had lower physical-activity EEs. A third doubly labeled water study (23) found no significant differences in total daily EE between the 2 races but observed that African American women had lower physical activity EEs.
The present study indicated that in the week prior to assessment, African American women reported less leisure-time activity, fewer hours spent standing, and fewer flights of stairs climbed/d, than did white women. However, the accelerometer data, a more objective measure of EE, showed no significant differences between groups. Furthermore, it is now recognized that inactivity, or sedentary behavior, may be as important a predictor of weight gain as activity per se. Although we did not directly assess inactivity, the fact that the number of hours spent standing was lower in African American women implies that they spent more time sitting or lying down. Television watching, however, a specifically recorded sedentary behavior, did not differ significantly between groups. Thus, it is not clear from the present data whether differences in physical activity contribute to racial differences in obesity.
There is little consensus on dietary differences between African American and white populations. Although some studies reported that total fat consumption is higher in African Americans than in whites in the United States (24), others did not find this difference (25). The present study did not observe a difference in total dietary fat intake; however, intakes of polyunsaturated fat and several specific fatty acids differed between races. Interestingly, both groups of women reported consuming
35% energy as fat, which is higher than the current recommendations, particularly during a period of life involving increased risk of obesity. Additionally, African American women consumed lower amounts of protein, fiber, calcium, and magnesium than did white women. Both high fiber and high protein intakes have been associated with increased satiety and decreased food intake (26, 27), and fiber was the strongest single predictor of body fat in our multiple regression analysis. High protein and high- carbohydrate diets were also shown to increase thermogenesis and satiety, relative to high-fat diets (28).
Recent studies in both animals and humans suggest that high dietary calcium is associated with decreased body weight (29). Although our data generally support this finding, the observation of ethnic differences in calcium intake, and the significantly different relation between calcium intake and body fat in whites and in African Americans indicate that the results should be interpreted with caution. Nevertheless, the dietary pattern followed by the African American women in our study, which consisted of low intakes of protein, fiber, and calcium, and high intakes of certain types of fat, may promote obesity.
The present study had several limitations that deserve comment. First, we recognize that cross-sectional data provide little information about the predictive value of ethnic differences in EE and diet. A longitudinal study of this cohort is in progress that should provide important information on whether activity or dietary patterns predict weight gain during the menopause transition.
Second, the limitations of self-reported physical activity and dietary intakes are well recognized. Our data indicate obvious underreporting of dietary intake in relation to the more objective triaxial motion sensor measures of EE. As shown in Tables 2 and 3![]()
, subjects reported consuming
67007100 kJ/d (1600 1700 kcal/d) although their measured EE was
8300 kJ/d (2000 kcal/d). Assuming that most individuals were weight stable, this represents an underreporting of intake of
12501675 kJ/d (300400 kcal/d). On the other hand, self-reported physical activity may have been overestimated, particularly estimates of habitual activity over the past year. Activity estimates over the past week (2.5 and 5.1 h/wk in African Americans and whites, respectively) seemed reasonable, especially given that our study population appeared to be somewhat health conscious and may have been more physically active than the average population.
Finally, Kumanyika (30) recently indicated the difficulties in separating socioeconomic and genetic factors from other ethnicity-related factors when interpreting observed differences in variables such as EE. Although our population was fairly well-matched for socioeconomic status with most of the participants being middle class, the genetic issue cannot be easily addressed. Kumanyika also notes the importance of collecting longitudinal data and examining differences within race (ie, factors that differ over time between women who gain excess weight and those who do not). Our ongoing longitudinal study of this population will hopefully allow us to address such issues.
In conclusion, the present study suggests several ethnic differences in factors contributing to the energy balance in women nearing menopause. Specifically, African American women had significantly lower EE, both in terms of basal metabolism and self-reported physical activity, although measured total EE was not lower in this group. Furthermore, although reported total energy and total fat intakes did not differ significantly between groups, there were significant ethnic differences in intakes of fiber, protein, calcium, and specific fatty acids that may have implications for the development of obesity. Longitudinal follow-up of this cohort will clarify the role of such EE and dietary differences on the development of obesity during menopause.
| ACKNOWLEDGMENTS |
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