| Literature DB >> 27520789 |
Ryan T Allen1, Nicholas M Hales1, Andrea Baccarelli2, Michael Jerrett3, Majid Ezzati4, Douglas W Dockery2, C Arden Pope5.
Abstract
BACKGROUND: Income, air pollution, obesity, and smoking are primary factors associated with human health and longevity in population-based studies. These four factors may have countervailing impacts on longevity. This analysis investigates longevity trade-offs between air pollution and income, and explores how relative effects of income and air pollution on human longevity are potentially influenced by accounting for smoking and obesity.Entities:
Keywords: Air pollution; Economic tradeoffs; Income; Life expectancy; Obesity; Smoking
Mesh:
Year: 2016 PMID: 27520789 PMCID: PMC4983078 DOI: 10.1186/s12940-016-0168-2
Source DB: PubMed Journal: Environ Health ISSN: 1476-069X Impact factor: 5.984
Summary statistics and data sources
| Variable (Units) | Mean (SD) | Source |
|---|---|---|
| EA† (Index) | 2275.8 (696.3) | U.S. Census 1980, 2010 |
| LE†† (Years) | 76.9 (2.0) | Kulkarni et al. 2011 |
| PM2.5 (μg/m3) | 10.4 (2.8) | Beckerman et al. 2013 |
| Median Income ($1000s) | 35.1 (8.6) | US Census 2000 |
| Daily Smokers (%) | 21.6 (3.7) | Institute for Health Metrics and Evaluation 2014 |
| Obesity Prevalence (%) | 28.1 (3.6) | Centers for Disease Control and Prevention 2013 |
| Black (%) | 8.7 (14.5) | US Census 2000 |
| Hispanic (%) | 6.2 (12.0) | US Census 2000 |
| Median Age (Years) | 37.4 (3.9) | US Census 2000 |
| Over 65 (%) | 14.8 (4.0) | US Census 2000 |
| Migration Rates | ||
| 1980s, 55–60-year-olds‡ | 4.3 (16.6) | Winkler et al. 2013 |
| 1980s, 60–64-year-olds‡ | 7.0 (19.7) | Winkler et al. 2013 |
| 1990s, 65–70-year-olds‡ | 9.9 (19.9) | Winkler et al. 2013 |
| 1990s, 70–74-year-olds‡ | 4.0 (12.7) | Winkler et al. 2013 |
| 2000s, 75+ year-olds‡ | −1.0 (14.8) | Winkler et al. 2013 |
† Exceptional Aging
†† Life Expectancy
‡ Age-specific migration rates were calculated by the net migration over the given decade divided by the expected population at the end of the decade, times 100, where net migration is the observed final population minus the expected final population
Pearson correlation coefficients (Weighted by square root of county population)
| Variable | PM2.5 | EA† | LE†† | Median Income | Percent Smokers | Percent Obese |
|---|---|---|---|---|---|---|
| PM2.5 | 1 | −0.22* | −0.27* | 0.12* | 0.20* | 0.27* |
| Exceptional Aging | −0.22* | 1 | 0.51* | 0.38* | −0.32* | −0.41* |
| Life Expectancy | −0.27* | 0.51* | 1 | 0.68* | −0.63* | −0.77* |
| Median Income | 0.12* | 0.38* | 0.68* | 1 | −0.54* | −0.58* |
| Percent Smokers | 0.20* | −0.32* | −0.63* | −0.54* | 1 | 0.64* |
| Percent Obese | 0.27* | −0.41* | −0.77* | −0.58* | 0.64* | 1 |
*p < 0.001
† Exceptional Aging
†† Life Expectancy
Linear regression results. Coefficients represent the changes in the number of exceptionally aged individuals (per 10,000) or years of life expectancy corresponding to a one-unit increase in the explanatory variables (units given in parenthesis)
| Unadjusted Models | Full Models | |||
|---|---|---|---|---|
| Variable (Units) | EA† | LE†† | EA† | LE†† |
| PM2.5 (μg/m3) | −33.68** | −0.12** | −20.22** | −0.05** |
| Median Income ($1000s) | 27.39** | 0.14** | 12.32** | 0.07** |
| Daily Smokers (%) | – | – | −34.79** | −0.16** |
| Obesity Prevalence (%) | – | – | −30.27** | −0.12** |
| Black (%) | 2.38** | −0.04** | 1.27* | −0.05** |
| Hispanic (%) | 4.58** | 0.02** | −0.39 | 0 |
| Median Age (Years) | −51.08** | −0.11** | −32.54** | −0.06** |
| Over 65 (%) | 61.37** | 0.17** | 39.74** | 0.10** |
| Migration Rates | ||||
| 1980s, 55–60-year-olds‡ | −7.51** | – | −8.14** | – |
| 1980s, 60–64-year-olds‡ | 21.07** | – | 21.07** | – |
| 1990s, 65–70-year-olds‡ | −9.21** | – | −9.92** | – |
| 1990s, 70–74-year-olds‡ | 26.46** | – | 29.19** | – |
| 2000s, 75+ year-olds‡ | 21.64** | – | 21.4** | – |
| Census Division Indicators§ | Included | Included | Included | Included |
| R2 | 0.87 | 0.78 | 0.89 | 0.85 |
| N | 2,996 | 2,996 | 2,996 | 2,996 |
*p < 0.05; **p < 0.001
† Exceptional Aging (regressions weighted by square root of county population)
†† Life Expectancy (regressions weighted by inverse of life expectancy confidence intervals)
‡ Age-specific migration rates were calculated by the net migration over the given decade divided by the expected population at the end of the decade, times 100, where net migration is the observed final population minus the expected final population
§ The nine census divisions are defined as follows by the U.S. Census Bureau: New England, Middle Atlantic, East North Central, West North Central, South Atlantic, East South Central, West South Central, Mountain, Pacific
Fig. 1Non-linear relationships between longevity measures and median income. Panels a and b present the relationship between exceptional aging and median income for the unadjusted and fully adjusted models, respectively. Panels c and d present the relationship between life expectancy and median income for the unadjusted and fully adjusted models, respectively. Spline smooth functions allowed for up to four degrees of freedom. Unadjusted models exclude controls for smoking and obesity, while full models include these controls
Fig. 2Non-linear relationships between longevity measures and PM2.5. Panels a and b present the relationship between exceptional aging and PM2.5 for the unadjusted and fully adjusted models, respectively. Panels c and d present the relationship between life expectancy and PM2.5 for the unadjusted and fully adjusted models, respectively. Spline smooth functions allowed for up to four degrees of freedom. Unadjusted models exclude controls for smoking and obesity, while full models include these controls
Fig. 3Bivariate thin-plate smoothing spline of longevity measures relative to median income and PM2.5. Panels a and b present the relationship between exceptional aging relative to median income and PM2.5 for the unadjusted and fully adjusted models, respectively. Panels c and d present the relationship between life expectancy relative to median income and PM2.5 for the unadjusted and fully adjusted models, respectively. Unadjusted models exclude controls for smoking and obesity, while full models include these controls