High-resolution agent-based modeling of COVID-19 spreading in a small town (2101.05171v3)
Abstract: Amid the ongoing COVID-19 pandemic, public health authorities and the general population are striving to achieve a balance between safety and normalcy. Ever changing conditions call for the development of theory and simulation tools to finely describe multiple strata of society while supporting the evaluation of "what-if" scenarios. Particularly important is to assess the effectiveness of potential testing approaches and vaccination strategies. Here, an agent-based modeling platform is proposed to simulate the spreading of COVID-19 in small towns and cities, with a single-individual resolution. The platform is validated on real data from New Rochelle, NY -- one of the first outbreaks registered in the United States. Supported by expert knowledge and informed by reported data, the model incorporates detailed elements of the spreading within a statistically realistic population. Along with pertinent functionality such as testing, treatment, and vaccination options, the model accounts for the burden of other illnesses with symptoms similar to COVID-19. Unique to the model is the possibility to explore different testing approaches -- in hospitals or drive-through facilities -- and vaccination strategies that could prioritize vulnerable groups. Decision making by public authorities could benefit from the model, for its fine-grain resolution, open-source nature, and wide range of features.
- Agnieszka Truszkowska (2 papers)
- Brandon Behring (1 paper)
- Jalil Hasanyan (2 papers)
- Lorenzo Zino (28 papers)
- Sachit Butail (5 papers)
- Emanuele Caroppo (2 papers)
- Zhong-Ping Jiang (28 papers)
- Alessandro Rizzo (23 papers)
- Maurizio Porfiri (20 papers)