| Literature DB >> 35782364 |
Xianhao Chen1, Guangyu Zhu1, Lan Zhang2, Yuguang Fang1, Linke Guo3, Xinguang Chen4.
Abstract
The risk of severe illness and mortality from COVID-19 significantly increases with age. As a result, age-stratified modeling for COVID-19 dynamics is the key to study how to reduce hospitalizations and mortality from COVID-19. By taking advantage of network theory, we develop an age-stratified epidemic model for COVID-19 in complex contact networks. Specifically, we present an extension of standard SEIR (susceptible-exposed-infectious-removed) compartmental model, called age-stratified SEAHIR (susceptible-exposed-asymptomatic-hospitalized-infectious-removed) model, to capture the spread of COVID-19 over multitype random networks with general degree distributions. We derive several key epidemiological metrics and then propose an age-stratified vaccination strategy to decrease the mortality and hospitalizations. Through extensive study, we discover that the outcome of vaccination prioritization depends on the reproduction number [Formula: see text]. Specifically, the elderly should be prioritized only when [Formula: see text] is relatively high. If ongoing intervention policies, such as universal masking, could suppress [Formula: see text] at a relatively low level, prioritizing the high-transmission age group (i.e., adults aged 20-39) is most effective to reduce both mortality and hospitalizations. These conclusions provide useful recommendations for age-based vaccination prioritization for COVID-19.Entities:
Keywords: COVID-19; epidemic modeling; random network; vaccination
Year: 2021 PMID: 35782364 PMCID: PMC8791431 DOI: 10.1109/TNSE.2021.3075222
Source DB: PubMed Journal: IEEE Trans Netw Sci Eng ISSN: 2327-4697