| Literature DB >> 31172916 |
Ralph S Caraballo1, Ketra L Rice2, Linda J Neff2, Bridgette E Garrett2.
Abstract
INTRODUCTION: Our objective was to identify social and physical environmental factors associated with current cigarette smoking among adults by metropolitan county in the United States.Entities:
Mesh:
Year: 2019 PMID: 31172916 PMCID: PMC6583817 DOI: 10.5888/pcd16.180373
Source DB: PubMed Journal: Prev Chronic Dis ISSN: 1545-1151 Impact factor: 2.830
Descriptive Statistics (Percentage, Mean, or Rate) and 95% Confidence Intervals of 182,172 Survey Respondents and 179 Aggregated US Counties, Behavioral Risk Factor Surveillance System, 2012
| Characteristic | Unweighted % (95% CI) |
|---|---|
|
| |
|
| 17.7 (17.0–18.5) |
|
| |
| 18–24 | 5.7 (5.7–5.9) |
| 25–44 | 25.5 (25.0–25.9) |
| 45–64 | 39.2 (38.8–39.8) |
| ≥65 | 29.4 (28.9–30.0) |
|
| |
| Male | 41.0 (40.8–41.2) |
| Female | 59.0 (58.8–59.2) |
|
| |
| Non-Hispanic white | 73.3 (73.1–73.5) |
| Non-Hispanic black | 10.4 (10.2–10.5) |
| Hispanic | 9.1 (8.9–9.2) |
| Non-Hispanic Asian | 3.1 (2.9–3.1) |
| Non-Hispanic other | 4.1 (4.1–4.2) |
|
| |
| High school graduate or equivalent or less | 32.3 (32.1–32.5) |
| Some college or more | 67.7 (67.5–67.9) |
|
| |
| Yes | 89.0 (88.8–89.1) |
| No | 11.0 (10.8–11.1) |
|
| |
| Excellent | 19.5 (19.4–19.7) |
| Very good | 33.5 (33.3–33.7) |
| Good | 29.8 (29.6–30.0) |
| Fair | 12.5 (12.4–12.6) |
| Poor | 4.7 (4.6–4.8) |
|
| |
|
| 18.3 (17.7–18.9) |
|
| |
| Percentage of large central metro | 24.6 (18.8–31.5) |
| Percentage of large fringe metro | 29.6 (23.3–36.8) |
| Percentage of medium metro | 30.7 (24.4–37.9) |
| Percentage of small metro | 15.1 (10.5–21.2) |
|
| 6.6 (6.3–7.1) |
|
| 0.45 (0.44–0.45) |
|
| 33.6 (30.7–36.4) |
|
| 448.4 (407.6–489.2) |
|
| 33.6 (30.7–36.4) |
|
| 38.8 (37.6–40.1) |
Self-reported current cigarette smokers are respondents who answered to have smoked 100 or more cigarettes (5 packs) in their life and who now smoke cigarettes every day or some days.
County current cigarette smoking prevalence was calculated by using county-level small area estimation methods.
Large central metro counties in metropolitan statistical areas (MSAs) of 1 million or more population that either contain the entire population of the largest principal city of the MSA, the largest principal city of the MSA, or at least 250,000 inhabitants of any principal city of the MSA.
Large fringe metro counties in MSAs of 1 million or more population that did not qualify as large central metro counties.
Medium metro counties in MSAs of populations of 250,000 to 999,999.
Small metro counties in MSAs of populations less than 250,000.
The number of primary care physicians in the county per 10,000 of the county population.
The Gini index measures the degree of inequality in the distribution of family income in a country, region, or county. The more nearly equal a county’s income distribution, the lower its Gini index. The more unequal a county’s income distribution, the higher its Gini index. If income were distributed with perfect equality the index would be zero; if income were distributed with perfect inequality, the index would be 1.
Percentage of people living in the county classified other than non-Hispanic white.
The number of violent crimes committed in the county per 100,000 population.
Those aged 18–64 years with low income and uninsured.
Spatial Regression Models Measuring the Association Between 179 Aggregated US Metropolitan Counties and County Cigarette Smoking Prevalence, 2012
| Characteristic | OLS | Spatial Lag | Spatial Error | ||||||
|---|---|---|---|---|---|---|---|---|---|
| Coefficient | T-Statistic |
| Coefficient | Z-Value |
| Coefficient | Z-Value |
| |
| ρ (WPrevalence) | 0.015 | 0.579 | .56 | ||||||
| λ | 0.383 | 5.390 | <.001 | ||||||
| Constant | 5.103 | 2.773 | .006 | 4.783 | 2.510 | .012 | 7.465 | 4.111 | <.001 |
| Metropolitan county type | 0.305 | 0.233 | .192 | 0.337 | 1.432 | .15 | 0.187 | 0.818 | .41 |
| Primary care physician density | 0.124 | 1.223 | .22 | 0.126 | 1.270 | .20 | 0.060 | 0.638 | .52 |
| Minority population | −0.146 | −9.349 | <.001 | −0.146 | −9.548 | <.001 | −0.143 | −9.191 | <.001 |
| Violent crime rate | 0.007 | 7.109 | <.001 | 0.007 | 7.089 | <.001 | 0.006 | 7.020 | <.001 |
| Low-income uninsured population | 0.062 | 2.234 | .026 | 0.064 | 2.325 | .02 | 0.038 | 1.346 | .18 |
| Education | 0.291 | 9.299 | <.001 | 0.288 | 9.355 | <.001 | 0.277 | 9.048 | <.001 |
| Adjusted | 0.562 | 0.563 | 0.633 | ||||||
| Log-likelihood | −437 | −437 | −426 | ||||||
| Akaike information criterion | 888 | 889 | 866 | ||||||
| Moran I | 0.288 | <.001 | |||||||
| Robust Lagrange multiplier (lag) | 0.624 | .43 | |||||||
| Robust Lagrange multiplier (error) | 20.574 | <.001 | |||||||
| Likelihood ratio | 0.347 | .56 | 21.523 | <.001 | |||||
Abbreviations: OLS, ordinary least squares; ρ (WPrevalence), the coefficient in the spatial lag model (it measures the extent to which the dependent variable can be explained by the average of prevalence values of its nearest counties); λ, the coefficient in the spatial error model (lambda is also called the spatial error coefficient, and it will have a value of 0 if there is no spatial correlation between the error terms).
OLS estimates provided as reference, with Moran I statistic denoting spatial autocorrelation.
Maximum likelihood estimation.
Modeled with rook contiguity spatial weights matrix.
Spatial error results presented in text.
Odds of Being a Current Smoker, From Individual-Level and Metropolitan County–Level Characteristics, 2012a
| Variable | Model 1 (Null Model) | Model 2 (Individual-Level Only) | Model 3 (County-Level Only) | Model 4 (Individual- and County-Level) | ||||
|---|---|---|---|---|---|---|---|---|
| AOR (95% CI) |
| AOR (95% CI) |
| AOR (95% CI) |
| AOR (95% CI) |
| |
|
| ||||||||
| Intercept | 0.177 (0.170–0.186) | <.001 | 6.095 (5.333–6.966) | <.001 | 23.642 (20.731–26.963) | <.001 | ||
| Health status (ordinal) | 0.717 (0.706–0.728) | <.001 | 0.719 (0.708–0.730) | <.001 | ||||
| Has health insurance (vs no health insurance) | 0.570 (0.543–0.598) | <.001 | 0.574 (0.553–0.597) | <.001 | ||||
| Age (continuous) | 0.974 (0.973–0.976) | <.001 | 0.974 (0.974–0.975) | <.001 | ||||
| Education level (ordinal) | 0.668 (0.654–0.681) | <.001 | 0.670 (0.658–0.683) | <.001 | ||||
| Male | 1.195 (1.157–1.233) | <.001 | 1.195 (1.163–1.228) | <.001 | ||||
| Non-Hispanic black (vs non-Hispanic white) | 0.900 (0.846–0.958) | <.001 | 0.900 (0.859–0.942) | <.001 | ||||
| Non-Hispanic Asian (vs non-Hispanic white) | 0.437 (0.390–0.489) | <.001 | 0.438 (0.388–0.494) | <.001 | ||||
| Hispanic (vs non-Hispanic white) | 0.380 (0.343–0.422) | <.001 | 0.384 (0.363–0.407) | <.001 | ||||
| All other non-Hispanic racial/ethnic minorities (vs non-Hispanic white) | 1.173 (1.071–1.285) | <.001 | 1.171 (1.097–1.250) | <.001 | ||||
|
| ||||||||
| County type | 1.034 (0.999–1.071) | .06 | ||||||
| Primary care physician density (continuous) | 0.980 (0.964–0.997) | .02 | 0.992 | .011 | ||||
| Minority population (vs. non-Hispanic white) (continuous) | 0.994 (0.992–0.997) | <.001 | 1.004 | <.001 | ||||
| Violent crime rate (continuous) | 1.000 (1.000–1.001) | <.001 | ||||||
| Low-income uninsured population (continuous) | 0.999 (0.996–1.004) | .98 | ||||||
| Variance of random effects | 0.074 | |||||||
| χ2 (178 degrees of freedom) | 1,675.987 | <.001 | 10,699.90 | <.001 | 1,185.859 | <.001 | 10,704.96 | <.001 |
Abbreviations: AOR, adjusted odds ratio; CI, confidence interval.
Based on unit-specific model with robust standard errors, restricted penalized quasi-likelihood (PQL). All continuous variables grand mean centered. Model 1, intercept only model; model 2, random coefficients model; model 3, means as outcomes model; model 4, random intercepts and slopes model.
Cross-level interactions: minority population and education; primary care physician density, and health.
| Characteristic | Database Used | Variable Definition |
|---|---|---|
|
| ||
| County type | 2013 National Center for Health Statistics Rural Urban County Codes, 2013 | The metropolitan county categories are
|
| Primary care physician density | 2012 Health Services and Resources Administration data, which has county health care professions files | The number of primary care physicians in the county per 10,000 of the county population. |
|
| ||
| Income inequality (Gini index) | 2008–2012 American Community Survey 5-year estimates | The Gini index measures the degree of inequality in the distribution of family income in a country, region, or county. The more nearly equal a county’s income distribution, the lower its Gini index. The more unequal a county’s income distribution, the higher its Gini index. If income were distributed with perfect equality the index would be zero; if income were distributed with perfect inequality, the index would be 1. |
| Minority population | 2008–2012 American Community Survey 5-year estimates | Percentage of people living in the county classified other than non-Hispanic white. |
| Violent crime rate | 2010–2012 County Health Rankings, Uniform Crime Reporting, 2010–2012 | The number of violent crimes committed in the county per 100,000 population. |
| Low-income uninsured population | US Census Bureau Small Area Health Insurance Estimates (SAHIE) for 2012 | Those aged 18–64 years with low income and uninsured. |
| Education | 2008–2012 American Community Survey 5-year estimates | Percentage of adult population in the county with a high school diploma or equivalenct or less. |