| Literature DB >> 25297840 |
Jennie L Hill1, Wen You, Jamie M Zoellner.
Abstract
BACKGROUND: The burden of obesity and obesity-related conditions is not borne equally and disparities in prevalence are well documented for low-income, minority and rural adults in the United States. The current literature on rural versus urban disparities is largely derived from national surveillance data which may not reflect regional nuances. There is little practical research that supports the reality of local service providers such as county health departments that may serve both urban and rural residents in a given area. Conducted through a community-academic partnership, the primary aim of this study is to quantify the current levels of obesity (BMI), fruit and vegetable (FV) intake and physical activity (PA) in a predominately rural health disparate region. Secondary aims are to determine if a gradient exists within the region in which rural residents have poorer outcomes on these indicators compared to urban residents.Entities:
Mesh:
Year: 2014 PMID: 25297840 PMCID: PMC4198673 DOI: 10.1186/1471-2458-14-1051
Source DB: PubMed Journal: BMC Public Health ISSN: 1471-2458 Impact factor: 3.295
Characteristics of study sample by rural and urban residency
| Characteristic | Total sample | Urban | Rural |
|
|---|---|---|---|---|
| N=784 | n=210 | n=574 | ||
| Age, M ± SD | 56.4±15.3 | 61.6±14.7 | 59.1± 15.6 | 0.14 |
| Gender | %(n) | %(n) | %(n) | |
| Female | 73 (573) | 74 (156) | 73 (417) | 0.36 |
| Race | <.001 | |||
| White | 76(578) | 68(137) | 78(441) | |
| Black | 22(167) | 29(59) | 19(108) | |
| More than 1 race | 2(21) | 3(7) | 3(14) | |
| Income | 0.004 | |||
| <$20,000 | 34(221) | 44(75) | 30(146) | |
| $20,000-$50,000 | 39(257) | 32(54) | 42(203) | |
| >$50,000 | 27(178) | 24(42) | 28(136) | |
| Education | 0.65 | |||
| < HS | 15(119) | 14(30) | 16(89) | |
| HS diploma/GED | 33(224) | 35(72) | 35(202) | |
| Some college | 31(245) | 30(63) | 31(182) | |
| College grad or higher | 21(145) | 21(45) | 18(100) | |
| Employment | 0.01 | |||
| Employed | 36(277) | 34(69) | 36(208) | |
| Unemployed | 8(63) | 6(13) | 9(50) | |
| Homemaker/Student | 8(58) | 6(13) | 8(45) | |
| Retired | 39(301) | 38(78) | 39(223) | |
| Unable to work | 9(79) | 16(24) | 8(45) | |
| Marital Status | <.001 | |||
| Married/living w/ partner | 57(443) | 48(99) | 60(344) | |
| Divorced/separated | 18(135) | 17(35) | 18(100) | |
| Widowed | 15(121) | 20(41) | 14(80) | |
| Never married | 10 (46) | 15(32) | 8(46) |
*ANOVA (F-test) or χ2 tests to determine if differences exist based rural or urban residency.
Description including means, standard deviations and percent meeting recommendations for primary outcomes of fruit and vegetable (FV) intake, physical activity (PA) and BMI by residency
| Outcome | Total sample | Urban | Rural |
|
|---|---|---|---|---|
| (N=784) | (n=210) | (n=574) | ||
| FV intake, M±SD cups/day | 2.8±2.5 | 2.8±1.9 | 2.9±2.8 | 0.19 |
| FV, % meeting recommendations | 9 | 9 | 9 | 0.50 |
| PA, Minutes of moderate-vigorous activity/week | 127±182 | 122±182 | 132±183 | 0.49 |
| PA, Minutes of strength training/week | 25±205 | 18±77 | 31±256 | 0.65 |
| PA, % meeting recommendationsa | 38 | 31 | 41 | 0.005 |
| PA, % meeting recommendationsb | 11 | 9 | 12 | 0.33 |
| BMI (kg/m2), M±SD | 29.1±5.8 | 29.0±6.8 | 28.3±5.3 | 0.11 |
| BMI, categorical %(n)+ | ||||
| Normal Weight (18.05-24.9) | 29(223) | 32(66) | 28(155) | <0.001 |
| Overweight (25.0-29.9) | 35(265) | 24(48) | 39(217) | |
| Obese (30–39.9) | 31(231) | 37(74) | 29(157) | |
| Morbidly Obese (>40) | 5(33) | 7(14) | 4(19) |
*p-value for either ANOVA (F-test) or χ2 tests to determine if differences exist based on urban or rural residency.
PA meeting recommendationsa = >150 minutes of moderate to vigorous activity.
PA meeting recommendationsb= >150 minutes of moderate to vigorous activity plus 2 days of strength training activities.
+N=752, n=202 urban; n=550 rural. Differential responses due to missing data for BMI.
Linear regression model to test effects of residency on FV intake, physical activity and weight status when controlling for covariates
| Covariates | FV, Cups/day | PA, Min. of MVPA | BMI, kg/m 2 |
|---|---|---|---|
| β | β | β | |
| Urban | -0.10 | -4.53 | 0.55 |
| Female | 0.54** | -51.09** | -0.56 |
| White | -0.08 | 22.00 | -2.60*** |
| College | 0.54** | 21.19 | -0.51 |
| Employed | -0.00 | 48.99** | 0.33 |
*p<.05; **p<.01; ***p <.001.
Odds of residents meeting recommendations for FV intake, PA and weight status when controlling for covariates
| FV, Meeting recommendations a | PA, Meeting recommendations b | BMI, overweight/obese c | |
|---|---|---|---|
| Covariates | OR (95% CI) | OR (95% CI) | OR (95% CI) |
| Urban | 0.91 (0.52, 1.60) | 0.65 (0.46, 0.93)* | 0.78 (0.54, 1.12) |
| Female | 2.25 (1.16, 4.34)* | 0.63 (0.45, 0.88)** | 0.74 (0.51, 1.08) |
| White | 0.85 (0.49, 1.48) | 1.19 (0.83, 1.71) | 0.48 (0.31, 0.72)** |
| College degree | 1.93 (1.15, 3.23)** | 1.46 (1.07, 1.98)* | 0.74 (0.79, 1.58) |
| Employed | 0.85 (0.50, 1.43) | 1.76 (1.29, 2.41)*** | 1.12 (0.79, 1.58) |
*p<.05; **p<.01; ***p <.001.
aFV Meeting Recommendations= >5 cups of FV/day.
bPA meeting recommendations= >150 minutes of mod-vig activity plus 2 days of strength training activities.
cBMI is dichotomized to overweight/obese compared to normal weight.
Figure 1Quantile regression models demonstrating effects of residency and demographic factors along the BMI distribution. Note: The dependent variable is continuous BMI. The vertical axis shows the associated covariates while the horizontal axis shows the continuous BMI quantiles. The dashed lines denote the OLS regression coefficients estimates for the covariate shown in each panel; the solid lines denote the quantile regression coefficient estimates; the shaded areas are the 95% confidence intervals for the quantile estimates. Take the first panel for example: the dashed line shows the OLS estimates of the BMI differences between urban and rural (it shows that on average urban population is relatively heavier than rural but it is not statistically significant); the solid lines shows the quantile regression estimates of the BMI differences between urban and rural across the distribution of the BMI (it shows that the only statistically significant urban/rural gradient exists among those who had relatively smaller BMI).