| Literature DB >> 20798863 |
Dolores M Wolongevicz1, Lei Zhu, Michael J Pencina, Ruth W Kimokoti, P K Newby, Ralph B D'Agostino, Barbara E Millen.
Abstract
Background. Links between dietary quality and abdominal obesity are poorly understood. Objective. To examine the association between an obesity-specific dietary quality index and abdominal obesity risk in women. Methods. Over 12 years, we followed 288 Framingham Offspring/Spouse Study women, aged 30-69 years, without metabolic syndrome risk factors, cardiovascular disease, cancer, or diabetes at baseline. An 11-nutrient obesity-specific dietary quality index was derived using mean ranks of nutrient intakes from 3-day dietary records. Abdominal obesity (waist circumference >88 cm) was assessed during follow-up. Results. Using multiple logistic regression, women with poorer dietary quality were more likely to develop abdominal obesity compared to those with higher dietary quality (OR 1.87; 95% CI, 1.01, 3.47; P for trend = .048) independent of age, physical activity, smoking, and menopausal status. Conclusions. An obesity-specific dietary quality index predicted abdominal obesity in women, suggesting targets for dietary quality assessment, intervention, and treatment to address abdominal adiposity.Entities:
Year: 2010 PMID: 20798863 PMCID: PMC2925475 DOI: 10.1155/2010/945987
Source DB: PubMed Journal: J Obes ISSN: 2090-0708
Baseline characteristics of 288 healthy women without abdominal obesity (waist circumference ≤88 cm) in the Framingham Offspring-Spouse Study according to dietary quality1,2.
| Obesity-Specific Nutritional Risk Score3 | |||
|---|---|---|---|
| Higher | Lower | ||
| Dietary Quality | Dietary Quality | ||
| Tertile 1 | Tertile 2 | Tertile 3 | |
| Characteristic | |||
| Age (years) | 51.7 (0.88)a | 48.0 (0.88)b | 46.1 (0.88)b |
| Weight (kg)4 | 60.0 (0.74) | 59.9 (0.72) | 60.6 (0.73) |
| BMI (kg/m2) | 22.9 (0.23) | 22.6 (0.23) | 23.0 (0.23) |
| Waist Circumference (cm) | 71.9 (0.63) | 72.0 (0.62) | 73.4 (0.63) |
| Physical Activity Index5 | 37.5 (0.65) | 37.4 (0.64) | 36.2 (0.65) |
| Current Smoker (%) | 10.4 | 12.5 | 19.8 |
| Smoking (pack years) | 6.0 (1.46)a | 6.8 (1.40)a | 11.8 (1.44)b |
| Current Dieter (%) | 94.7 | 94.7 | 94.6 |
| Fluctuating Weight (%) | 10.1 | 9.8 | 11.4 |
| Postmenopausal (%) | 59.4 | 35.4 | 36.5 |
| On Hormone Replacement Therapy (%) | 9.4 | 9.5 | 6.3 |
| Parity (# of births) | 2.1 (0.15) | 2.6 (0.14) | 2.4 (0.14) |
| Systolic Blood Pressure (mmHg) | 111.6 (1.03) | 110.3 (1.00) | 110.9 (1.01) |
| Diastolic Blood Pressure (mmHg) | 71.8 (0.72) | 70.3 (0.70) | 70.9 (0.71) |
| Total Cholesterol (mmol/L)6 | 5.11 (0.09) | 4.98 (0.08) | 5.05 (0.09) |
| High Density Lipoprotein Cholesterol (mmol/L) | 1.64 (0.03) | 1.72 (0.03) | 1.72 (0.03) |
| Low Density Lipoprotein Cholesterol (mmol/L) | 3.08 (0.08) | 2.9 (0.08) | 2.98 (0.08) |
| Triglycerides (mmol/L)7 | 0.84 (0.03) | 0.77 (0.03) | 0.75 (0.03) |
| Glucose (mmol/L)8 | 4.75 (0.04) | 4.77 (0.04) | 4.78 (0.04) |
1Values are least squares means (SE) or percent. The GLM procedure in SAS (analysis of covariance) was used to obtain age-adjusted means for continuous variables and to identify subgroups that differed significantly. Logistic regression (SAS procedure LOGISTIC) was used to obtain age-adjusted proportions for dichotomous variables and to identify subgroups that differed significantly. Both sets of analyses used Bonferroni's correction for each variable.
2Values in a row with different superscript letters are significantly different from each other (P < .05). Rows with no superscript letters indicate NS differences.
3The risk score was calculated from the consumption of 11 nutrients (protein, carbohydrate, fiber, calcium, alcohol, total fat, polyunsaturated fat, monounsaturated fat, saturated fat, energy density, and total energy), which were ranked for each woman in the sample.
4To convert kg to pounds divide by 0.454.
5Physical Activity Index scores range from 24 (total bed rest) up to 120.
6To convert mmol/L cholesterol to mg/dL divide by 0.0259.
7To convert mmol/L triglyceride to mg/dL divide by 0.0113.
8To convert mmol/L glucose to mg/dL divide by 0.0555.
Baseline daily nutrient intake profiles of 288 healthy women without abdominal obesity (waist circumference ≤88 cm) in the Framingham Offspring-Spouse Study according to dietary quality1, 2.
| Obesity-Specific Nutritional Risk Score3 | |||
|---|---|---|---|
| Higher | Lower | ||
| Dietary Quality | Dietary Quality | ||
| Tertile 1 | Tertile 2 | Tertile 3 | |
| Nutrient | |||
| Total Energy (kJ)4 | 6258.8 (205.9)a | 7124.5 (201.7)b | 7247.9 (204.2)b |
| Energy Density (kJ/g)5 | 3.05 (0.08)a | 3.77 (0.08)b | 4.18 (0.08)c |
| Total Fat (% energy) | 31.6 (0.43)a | 37.7 (0.42)b | 44.2 (0.43)c |
| Polyunsaturated Fat (% energy) | 6.4 (0.29)a | 8.0 (0.28)b | 9.4 (0.29)c |
| Monounsaturated Fat (% energy) | 11.1 (0.18)a | 13.7 (0.18)b | 16.2 (0.18)c |
| Saturated Fat (% energy) | 11.4 (0.26)a | 13.2 (0.26)b | 15.4 (0.26)c |
| Alcohol (% energy) | 2.9 (0.57) | 3.5 (0.55) | 4.0 (0.56) |
| Protein (% energy) | 18.1 (0.39)a | 16.1 (0.36)b | 15.9 (0.37)b |
| Carbohydrate (% energy) | 49.4 (0.65)a | 44.4 (0.63)b | 37.1 (0.64)c |
| Fiber (g/4184 kJ) | 14.9 (0.57)a | 13.6 (0.56)a | 11.1 (0.56)b |
| Calcium (mg/4184 kJ) | 678.3 (28.3)a | 685.8 (27.7)a | 571.1 (28.1)b |
1Values are least squares means (SE). The GLM procedure in SAS (analysis of covariance) was used to obtain age-adjusted means for continuous variables and to identify subgroups that differed significantly. This set of analyses used Bonferroni's correction for each variable.
2Values in a row with different superscript letters are significantly different from each other (P < .05). Rows with no superscript letters indicate NS differences.
3The risk score was calculated from the consumption of 11 nutrients (protein, carbohydrate, fiber, calcium, alcohol, total fat, polyunsaturated fat, monounsaturated fat, saturated fat, energy density, and total energy), which were ranked for each woman in the sample.
4To convert kJ to kcal divide by 4.184.
5Energy density was calculated by dividing total energy intake by total gram weight of all foods and beverages reported on the 3-day dietary records.
Development of abdominal obesity over 12 years in 288 healthy women in the Framingham Offspring-Spouse Study according to dietary quality1.
| Obesity-Specific Nutritional Risk Score3 | ||||
|---|---|---|---|---|
| Higher | Lower | |||
| Dietary Quality | Dietary Quality | |||
| Tertile 1 | Tertile 2 | Tertile 3 | ||
| Abdominally obese | Overall | |||
| Incidence | ||||
| 47 (49) | 47 (49) | 55 (57.3) | 149 (51.7) | |
| Odds ratio (95% CI) | ||||
| Age-adjusted | 1 | 1.20 (0.67, 2.16) | 1.86 (1.01, 3.41) | 0.044 |
| Multivariate-adjusted4 | 1 | 1.23 (0.68, 2.24) | 1.87 (1.01, 3.47) | 0.048 |
1Abdominal obesity defined as waist circumference >88 cm.
2The risk score was calculated from the consumption of 11 nutrients (protein, carbohydrate, fiber, calcium, alcohol, total fat, polyunsaturated fat, monounsaturated fat, saturated fat, energy density, and total energy), which were ranked for each woman in the sample.
3The P-value for trend was determined using the tertile groups of the Obesity-Specific Nutritional Risk Score in a continuous form. Significance testing P < .05.
4Multiple logistic regression model adjusted for age, smoking, physical activity, and menopause.