The Use of Penalized Regression Analysis to Identify County-Level Demographic and Socioeconomic Variables Predictive of Increased COVID-19 Cumulative Case Rates in the State of Georgia
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Population and Data Sources
2.2. Outcome of Interest
2.3. Data Analysis
3. Results
4. Discussion
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Conflicts of Interest
References
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Variable | Median | Mean | Standard Deviation | Standardized Coefficient βz |
---|---|---|---|---|
Cumulative cases/100,000 residents | 1538.46 | 1748.341 | 889.452 | |
Log transformed case rates (used for analysis) | 7.3385 | 7.3563 | 0.4629 | |
Percent with long commute who drive alone | 36.8 | 36.92 | 11.95 | −0.1828 |
Percent non-Hispanic White residents | 61.78 | 61.96 | 17.26 | −0.1741 |
Percent of children qualifying for free lunch | 74.61 | 73.43 | 20.47 | 0.1154 |
Percent who report poor or fair health | 20.16 | 20.1 | 3.73 | 0.0897 |
Percent not proficient in English | 0.93 | 1.62 | 1.95 | 0.0856 |
Segregation index: Black/White | 29.9 | 29.52 | 15.09 | 0.0876 |
Percent of uninsured adults | 19.74 | 20.1 | 3.27 | 0.0779 |
Percent female | 51.11 | 50.39 | 3.2 | –0.0671 |
Percent with annual influenza vaccine | 42 | 41.13 | 5.62 | –0.0622 |
Teen birth rate | 37.23 | 35.79 | 13.4 | 0.0351 |
Percent under 18 years of age | 22.78 | 22.4 | 3.14 | 0.0344 |
Child mortality rate | 71.96 | 73.1 | 24.26 | 0.0114 |
Category | 4/1/2020 | 5/1/2020 | 6/1/2020 | 7/1/2020 | 8/1/2020 |
---|---|---|---|---|---|
Demographics | Percent non-Hispanic White (βz = −0.056) | Percent non-Hispanic White (βz = −0.11) | Percent non-Hispanic White (βz = −0.055) | Percent non-Hispanic White (βz = −0.174) | |
Segregation index—Black:White (βz = 0.088) | |||||
Percent under 18 years of age (βz = 0.034) | |||||
Percent female (βz = −0.067) | |||||
Percent not proficient in English (βz = 0.086) | |||||
Health indicators | Percent who report poor or fair health (βz = 0.192) | Percent who report poor or fair health (βz = 0.09) | |||
Access to care | Women with annual mammography (βz = 0.055) | ||||
Percent with annual flu vaccine (βz = −0.062) | |||||
Urban vs. rural spread | Violent crimes rate (βz = 0.14) | Violent crimes rate (βz = 0.063) | |||
Long commute who drive alone (βz = −0.066) | Long commute who drive alone (βz = −0.183) | ||||
Average daily PM2.5 (βz = 0.069) | |||||
Socioeconomic | Children in single-family homes (βz = 0.132) | Children in single-family homes (βz = 0.012) | Teen birth rate (βz = 0.035) | ||
Children in poverty (βz = 0.116) | Children in poverty (βz = 0.125) | ||||
Low birthweight (βz = 0.015) | Low birthweight (βz = −0.076) | Children qualifying for free lunch (βz = 0.115) | |||
Child mortality rate (βz = 0.19) | Child mortality rate (βz = 0.042) | Child mortality rate (βz = 0.11) | |||
Uninsured adults (βz = −0.054) | Uninsured adults (βz = 0.078) | ||||
Model adjusted r-squared | 0.0930 | 0.2011 | 0.1421 | 0.2322 | 0.4525 |
Model F statistic | 16.99 | 7.63 | 6.23 | 10.56 | 11.88 |
Model p-value | <0.0001 | <0.0001 | <0.0001 | <0.0001 | <0.0001 |
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Richmond, H.L.; Tome, J.; Rochani, H.; Fung, I.C.-H.; Shah, G.H.; Schwind, J.S. The Use of Penalized Regression Analysis to Identify County-Level Demographic and Socioeconomic Variables Predictive of Increased COVID-19 Cumulative Case Rates in the State of Georgia. Int. J. Environ. Res. Public Health 2020, 17, 8036. https://doi.org/10.3390/ijerph17218036
Richmond HL, Tome J, Rochani H, Fung IC-H, Shah GH, Schwind JS. The Use of Penalized Regression Analysis to Identify County-Level Demographic and Socioeconomic Variables Predictive of Increased COVID-19 Cumulative Case Rates in the State of Georgia. International Journal of Environmental Research and Public Health. 2020; 17(21):8036. https://doi.org/10.3390/ijerph17218036
Chicago/Turabian StyleRichmond, Holly L., Joana Tome, Haresh Rochani, Isaac Chun-Hai Fung, Gulzar H. Shah, and Jessica S. Schwind. 2020. "The Use of Penalized Regression Analysis to Identify County-Level Demographic and Socioeconomic Variables Predictive of Increased COVID-19 Cumulative Case Rates in the State of Georgia" International Journal of Environmental Research and Public Health 17, no. 21: 8036. https://doi.org/10.3390/ijerph17218036
APA StyleRichmond, H. L., Tome, J., Rochani, H., Fung, I. C. -H., Shah, G. H., & Schwind, J. S. (2020). The Use of Penalized Regression Analysis to Identify County-Level Demographic and Socioeconomic Variables Predictive of Increased COVID-19 Cumulative Case Rates in the State of Georgia. International Journal of Environmental Research and Public Health, 17(21), 8036. https://doi.org/10.3390/ijerph17218036