A model for the spread of an epidemic from local to global: A case study of COVID-19 in India
Buddhananda Banerjee, Pradumn Kumar Pandey, Bibhas Adhikari

TL;DR
This paper introduces a multi-level epidemiological model for COVID-19 spread in India, incorporating testing, movement, and preventive measures to predict infection dynamics and assess containment strategies.
Contribution
The model uniquely integrates local and global spread dynamics with testing and migration data, providing detailed predictions and containment insights for COVID-19 in India.
Findings
Increased testing can significantly contain the spread.
Preventive measures combined with testing reduce infection growth.
Model accurately predicts infection trends at district, state, and country levels.
Abstract
In this paper we propose an epidemiological model for the spread of COVID-19. The dynamics of the spread is based on four fundamental categories of people in a population: Tested and infected, Non-Tested but infected, Tested but not infected, and non-Tested and not infected. The model is based on two levels of dynamics of spread in the population: at local level and at the global level. The local level growth is described with data and parameters which include testing statistics for COVID-19, preventive measures such as nationwide lockdown, and the migration of people across neighboring locations. In the context of India, the local locations are considered as districts and migration or traffic flow across districts are defined by normalized edge weight of the metapopulation network of districts which are infected with COVID-19. Based on this local growth, state level predictions for…
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Taxonomy
TopicsCOVID-19 epidemiological studies · Mathematical and Theoretical Epidemiology and Ecology Models · Complex Network Analysis Techniques
