1. 18722 Association between neighborhood overcrowdedness, multigenerational households, and COVID-19 in New York City
- Author
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Sara Venkatraman, Evgeniya Reshetnyak, Jonathan D. Prince, Monika M. Safford, Mangala Rajan, Nathaniel Hupert, Orysya Soroka, Arnab K. Ghosh, Christopher Gonzalez, Said A. Ibrahim, Charles DiMaggio, Anjile An, and John K. Chae
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Disease surveillance ,business.industry ,Confounding ,General Medicine ,Emergency department ,symbols.namesake ,Quartile ,symbols ,Population study ,Medicine ,Poisson regression ,Risk factor ,business ,Socioeconomic status ,Demography - Abstract
IMPACT: Patients living in overcrowded zip codes were at increased risk of contracting severe COVID-19 after controlling for confounding disease and socioeconomic factors OBJECTIVES/GOALS: This study sought to examine whether residences in over-crowded zip codes with higher reported over-crowding represented an independent risk factor for severe COVID-19 infection, defined by presentation to an emergency department. METHODS/STUDY POPULATION: In this zip code tabulated area (ZCTA)-level analysis, we used NYC Department of Health disease surveillance data in March 2020 merged with data from the CDC and ACS to model suspected COVID-19 case rates by zip code over-crowdedness (households with greater than 1 occupant per room, in quartiles). We defined suspected COVID-19 cases as emergency department reported cases of pneumonia and influenza-like illness. Our final model employed a multivariate Poisson regression models with controls for known COVID-19 clinical (prevalence of obesity, coronary artery disease, and smoking) and related socioeconomic risk factors (percentage below federal poverty line, median income by zip-code, percentage White, and proportion of multigenerational households) after accounting for multicollinearity. RESULTS/ANTICIPATED RESULTS: Our analysis examined 39,923 suspected COVID-19 cases across 173 ZCTAs in NYC between March 1 and March 30 2020. We found that, after adjusted analysis, for every quartile increase in defined over-crowdedness, case rates increased by 32.8% (95% CI: 22.7%% to 34.0%, P < 0.001). DISCUSSION/SIGNIFICANCE OF FINDINGS: Over-crowdedness by zip code may be an independent risk factor for severe COVID-19. Social distancing measures such as school closures that increase house-bound populations may inadvertently worsen the risk of COVID-19 contraction in this setting.
- Published
- 2021
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