Logo image
A data-driven spatially-specific vaccine allocation framework for COVID-19
Journal article   Peer reviewed

A data-driven spatially-specific vaccine allocation framework for COVID-19

Zhaofu Hong, Yingjie Li, Yeming Gong and Wanying Amanda Chen
Annals of Operations Research, Vol.339(1-2), pp.203-226
01/08/2024

Abstract

Data-driven decision making COVID-19 Spatially-specific SEIR model Deep learning Vaccine allocation
Although coronavirus disease 2019 (COVID-19) vaccines have been introduced, their allocation is a challenging problem. We propose a data-driven, spatially-specific vaccine allocation framework that aims to minimize the number of COVID-19-related deaths or infections. The framework combines a regional risk-level classification model solved by a self-organizing map neural network, a spatially-specific disease progression model, and a vaccine allocation model that considers vaccine production capacity. We use data obtained from Wuhan and 35 other cities in China from January 26 to February 11, 2020, to avoid the effects of intervention. Our results suggest that, in region-wise distribution of vaccines, they should be allocated first to the source region of the outbreak and then to the other regions in order of decreasing risk whether the outcome measure is the number of deaths or infections. This spatially-specific vaccine allocation policy significantly outperforms some current allocation policies.
pdf
GONG_a data-driven spatiallity
Restricted Access
url
https://doi.org/10.1007/s10479-022-05037-zView
Published (Version of record) Open

Metrics

34 Record Views

Details

InCites Highlights

These are selected metrics from InCites Benchmarking & Analytics tool, related to this contribution

Collaboration types
Domestic collaboration
International collaboration
Citation topics
1 Clinical & Life Sciences
1.104 Virology - General
1.104.1353 Coronavirus Research
Web of Science research areas
Operations Research & Management Science
Logo image