| Literature DB >> 30723710 |
Nakiya N Showell1, Jacky M Jennings1, Katherine A Johnson1, Jamie Perin1, Rachel L J Thornton1.
Abstract
Introduction: Low-income and racial/ethnic minority preschoolers (aged 2-5 years) are disproportionately affected by obesity and its associated health consequences. Individual-level factors (e.g., diet) and environmental factors (e.g., neighborhood conditions) contribute to these disparities. However, there is limited research examining the role of neighborhood factors on obesity risk specifically among high-risk preschoolers. The objectives of this study are to describe the geographic distribution of preschool patients receiving care at two primary care pediatrics clinics affiliated with an academic medical center, and explore whether exposure to neighborhood crime and poverty is associated with obesity risk among this population.Entities:
Keywords: intervention; neighborhood crime; neighborhood poverty; obesity; primary care pediatrics
Year: 2019 PMID: 30723710 PMCID: PMC6350678 DOI: 10.3389/fped.2018.00433
Source DB: PubMed Journal: Front Pediatr ISSN: 2296-2360 Impact factor: 3.418
Figure 1Flow Chart patient data extraction process.
Figure 2Geographic distribution of neighborhoods of residence for patients residing within Baltimore City limits who received care at two urban, hospital-affiliated primary care clinics. Neighborhoods are depicted as census block groups, and 1.5-mile buffer around each clinic and point location of each clinic are shown.
Individual and neighborhood characteristics overall and by race/ethnicity among a primary care-based clinic sample of preschoolers, October 1, 2017–November 6, 2012, Baltimore City, Maryland.
| 3,684 | 2,531 | 904 | 249 | ||
| Age–mean years (SD) | 4.2 (1.2) | 4.3 (1.2) | 4.0 (1.2) | 3.8 (1.2) | <0.001 |
| Source of insurance | <0.001 | ||||
| Public | 3,365 (91%) | 2,290 (90%) | 895 (99%) | 180 (72%) | |
| Private | 319 (9%) | 241 (10%) | 9 (1%) | 69 (28%) | |
| Weight status | <0.001 | ||||
| Below normal | 130 (4%) | 104 (4%) | 15 (2%) | 11 (4%) | |
| Normal | 2,363 (64%) | 1,677 (66%) | 516 (57%) | 170 (68%) | |
| Overweight | 589 (16%) | 394 (16%) | 162 (18%) | 33 (13%) | |
| Obese | 602 (16%) | 356 (14%) | 211 (23%) | 35 (14%) | |
| Gender | 0.218 | ||||
| Male | 1,858 (50%) | 1,301 (51%) | 436 (48%) | 121 (49%) | |
| Female | 1,826 (50%) | 1,230 (49%) | 468 (52%) | 128 (51%) | |
| CBG more than 20% of HHs in poverty | 1,992 (54%) | 1,548 (61%) | 350 (39%) | 94 (38%) | <0.001 |
| CBG number of violent crimes–mean (SD) | 105.1 (73.0) | 107.0 (71.9) | 103.3 (69.8) | 93.0 (91.6) | 0.010 |
| CBG crime tertile within Baltimore City | <0.001 | ||||
| High crime (>103) | 1,542 (42%) | 1,059 (42%) | 399 (44%) | 84 (34%) | |
| Moderate crime (48–103) | 1,550 (42%) | 1,112 (44%) | 335 (37%) | 103 (42%) | |
| Low crime (less than 48) | 591 (16%) | 360 (14%) | 170 (19%) | 61 (25%) | |
Significance for the association or difference anywhere between race/ethnicity group and given factor, determined by a Chi-square test for categorical factors or ANOVA test for continuous factors.
Associations between obesity, overweight and overweight or obese and average number of violent crimes in each census block group of patient residence.
| Obese vs. Normal weight | Bivariate | 0.979 | (0.961, 0.998) | 0.985 | (0.960, 1.010) | 0.238 | 0.999 | (0.962, 1.038) | 0.962 | |
| Adjusted | 0.978 | (0.959, 0.998) | 0.987 | (0.962, 1.013) | 0.330 | 1.007 | (0.969, 1.046) | 0.718 | ||
| Overweight vs. Normal | Bivariate | 0.998 | (0.983, 1.013) | 0.745 | 1.004 | (0.980, 1.027) | 0.761 | 1.013 | (0.982, 1.044) | 0.424 |
| Adjusted | 0.998 | (0.982, 1.014) | 0.790 | 1.003 | (0.979, 1.027) | 0.836 | 1.012 | (0.981, 1.045) | 0.446 | |
| Overweight OR Obese | Bivariate | 0.990 | (0.977, 1.002) | 0.108 | 0.994 | (0.974, 1.013) | 0.522 | 1.008 | (0.979, 1.037) | 0.599 |
| Adjusted | 0.990 | (0.976, 1.003) | 0.134 | 0.995 | (0.975, 1.015) | 0.594 | 1.011 | (0.982, 1.041) | 0.469 | |
Associations are shown as odds ratios for an increase of 10 crimes.
Adjusted for age, gender and proportion of households living under the poverty line in each census block group.
Associations between obesity, overweight and overweight or obese and poverty per CBG of patient residence. Associations are shown as odds ratios comparing those in CBGs with 20% or more of households below poverty line (high poverty) vs. those with less than 20% (low poverty).
| Obese vs. Normal weight | Bivariate | 0.896 | (0.710, 1.131) | 0.356 | 0.989 | (0.711, 1.375) | 0.947 | 1.604 | (0.771, 3.336) | 0.206 |
| Adjusted | 0.884 | (0.700, 1.117) | 0.302 | 0.970 | (0.695, 1.354) | 0.859 | 1.548 | (0.740, 3.236) | 0.246 | |
| Overweight vs. Normal | Bivariate | 1.048 | (0.836, 1.314) | 0.686 | 1.113 | (0.777, 1.596) | 0.559 | 1.104 | (0.514, 2.371) | 0.800 |
| Adjusted | 1.039 | (0.828, 1.304) | 0.742 | 1.125 | (0.784, 1.616) | 0.522 | 1.089 | (0.505, 2.348) | 0.827 | |
| Overweight OR Obese | Bivariate | 0.972 | (0.815, 1.160) | 0.754 | 1.041 | (0.792, 1.369) | 0.771 | 1.341 | (0.758, 2.373) | 0.314 |
| Adjusted | 0.963 | (0.807, 1.149) | 0.676 | 1.042 | (0.791, 1.373) | 0.768 | 1.314 | (0.740, 2.332) | 0.351 | |
Adjusted for age and gender.