| Literature DB >> 32701937 |
Hilda Razzaghi, Yan Wang, Hua Lu, Katherine E Marshall, Nicole F Dowling, Gabriela Paz-Bailey, Evelyn R Twentyman, Georgina Peacock, Kurt J Greenlund.
Abstract
Risk for severe coronavirus disease 2019 (COVID-19)-associated illness (illness requiring hospitalization, intensive care unit [ICU] admission, mechanical ventilation, or resulting in death) increases with increasing age as well as presence of underlying medical conditions that have shown strong and consistent evidence, including chronic obstructive pulmonary disease, cardiovascular disease, diabetes, chronic kidney disease, and obesity (1-4). Identifying and describing the prevalence of these conditions at the local level can help guide decision-making and efforts to prevent or control severe COVID-19-associated illness. Below state-level estimates, there is a lack of standardized publicly available data on underlying medical conditions that increase the risk for severe COVID-19-associated illness. A small area estimation approach was used to estimate county-level prevalence of selected conditions associated with severe COVID-19 disease among U.S. adults aged ≥18 years (5,6) using self-reported data from the 2018 Behavioral Risk Factor Surveillance System (BRFSS) and U.S. Census population data. The median prevalence of any underlying medical condition in residents among 3,142 counties in all 50 states and the District of Columbia (DC) was 47.2% (range = 22.0%-66.2%); counties with the highest prevalence were concentrated in the Southeast and Appalachian region. Whereas the estimated number of persons with any underlying medical condition was higher in population-dense metropolitan areas, overall prevalence was higher in rural nonmetropolitan areas. These data can provide important local-level information about the estimated number and proportion of persons with certain underlying medical conditions to help guide decisions regarding additional resource investment, and mitigation and prevention measures to slow the spread of COVID-19.Entities:
Mesh:
Year: 2020 PMID: 32701937 PMCID: PMC7377821 DOI: 10.15585/mmwr.mm6929a1
Source DB: PubMed Journal: MMWR Morb Mortal Wkly Rep ISSN: 0149-2195 Impact factor: 17.586
Nationwide and model-based county-level (n = 3,142) estimates of prevalence and number of adults aged ≥18 years with selected underlying medical conditions that might increase risk for severe COVID-19–associated illness — United States, 2018
| Selected underlying medical condition* | Nationwide prevalence† % (95% CI) | Median county prevalence§ % (range) | Median county no. of adults† (range) |
|---|---|---|---|
| Any | 40.7 (40.4, 41.0) | 47.2 (22.0–66.2) | 9,743 (41–2,877,316) |
| Obesity (BMI ≥30 kg/m2) | 30.9 (30.6, 31.2) | 35.4 (15.2– 49.9) | 7,174 (25–2,097,906) |
| Diabetes mellitus | 11.4 (11.2, 11.6) | 12.8 (6.1–25.6) | 2,742 (11–952,335) |
| COPD | 6.9 (6.7, 7.0) | 8.9 (3.5–19.9) | 1,962 (7–434, 075) |
| Heart disease | 6.8 (6.7, 7.0) | 8.6 (3.5–15.1) | 1, 811 (7–434,790) |
| Chronic kidney disease | 3.1 (3.0, 3.3) | 3.4 (1.8–6.2) | 717 (3–237,766) |
Abbreviations: BMI = body mass index; CI = confidence interval; COPD = chronic obstructive pulmonary disease; COVID-19 = coronavirus disease 2019.
* Diabetes mellitus includes both type 1 and type 2 diabetes. COPD includes emphysema and chronic bronchitis. Heart disease includes angina or coronary heart disease, and heart attack or myocardial infarction.
† Weighted direct estimates from the Behavioral Risk Factor Surveillance System, 2018.
§ Prevalence and number of adults estimated for 3,142 counties using a multilevel regression and poststratification approach applied to 2018 Behavioral Risk Factor Surveillance System data.
FIGUREModel-based estimates of U.S. prevalence (A) and number (B) of adults aged ≥18 years with any selected underlying medical condition,* by county — United States, 2018
* Selected underlying conditions include chronic obstructive pulmonary disease, emphysema, or chronic bronchitis; heart disease (angina or coronary heart disease, heart attack, or myocardial infarction); diabetes; chronic kidney disease; or obesity (body mass index ≥30 kg/m2).
Model-based estimates of prevalence and number of persons aged ≥18 years with any select underlying medical condition, by urban/rural county classification — United States, 2018
| County classification* | No. of counties | Median county prevalence % (range) | Median county no. of persons (range) |
|---|---|---|---|
|
| |||
| Large central metro† | 68 | 39.4 (23.9–48.1) | 301,744 (43,770–2,877,316) |
| Large fringe metro§ | 368 | 43.9 (26.4–56.9) | 34,221 (1,611–725,284) |
| Medium metro¶ | 372 | 45.5 (22.0–61.7) | 33,687 (659–332,209) |
| Small metro** | 358 | 45.8 (27.8–62.2) | 26,683 (41–87,153) |
|
| |||
| Micropolitan†† | 641 | 47.8 (24.3–64.6) | 13,979 (176–59,820) |
| Noncore§§ | 1,335 | 48.8 (26.8–66.2) | 4,300 (47–29,469) |
* Based on 2013 Urban-Rural Classification Scheme for Counties from the National Center for Health Statistics, CDC.
† Large central metro counties in metropolitan statistical areas (MSAs) of 1 million population that 1) contain the entire population of the largest principal city of the MSA, or 2) are completely contained within the largest principal city of the MSA, or 3) contain ≥250,000 residents of any principal city in the MSA.
§ Large fringe metro counties in MSA of ≥1 million population that do not qualify as large central.
¶ Medium metro counties in MSA of 250,000–999,999 population.
** Small metro counties are counties in MSAs of <250,000 population.
†† Micropolitan counties in MSAs.
§§ Noncore counties not in MSAs.