| Literature DB >> 33814968 |
Carlos Balsa1, Isabel Lopes2,3, Teresa Guarda4,5,6, José Rufino1.
Abstract
A small number of individuals infected within a community can lead to the rapid spread of the disease throughout that community, leading to an epidemic outbreak. This is even more true for highly contagious diseases such as COVID-19, known to be caused by the new coronavirus SARS-CoV-2. Mathematical models of epidemics allow estimating several impacts on the population and, therefore, are of great use for the definition of public health policies. Some of these measures include the isolation of the infected (also known as quarantine), and the vaccination of the susceptible. In a possible scenario in which a vaccine is available, but with limited access, it is necessary to quantify the levels of vaccination to be applied, taking into account the continued application of preventive measures. This work concerns the simulation of the spread of the COVID-19 disease in a community by applying the Monte Carlo method to a Susceptible-Exposed-Infective-Recovered (SEIR) stochastic epidemic model. To handle the computational effort involved, a simple parallelization approach was adopted and deployed in a small HPC cluster. The developed computational method allows to realistically simulate the spread of COVID-19 in a medium-sized community and to study the effect of preventive measures such as quarantine and vaccination. The results show that an effective combination of vaccination with quarantine can prevent the appearance of major epidemic outbreaks, even if the critical vaccination coverage is not reached.Entities:
Keywords: COVID-19; Numerical simulations; Parallel computing; SEIR stochastic model
Year: 2021 PMID: 33814968 PMCID: PMC8007662 DOI: 10.1007/s10588-021-09327-y
Source DB: PubMed Journal: Comput Math Organ Theory ISSN: 1381-298X Impact factor: 2.023
Fig. 1SEIR model with quarantine and dead compartment
Estimates of effective SEIR model parameters for the COVID-19 pandemic context
| Authors/region | |||
|---|---|---|---|
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Mukandavire et al. ( | 1.3 | 3.21 | 2.27 |
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Chatterjee et al. ( | – | 5.1 | 7 |
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Li et al. ( | 0.35, 0.52, 1.12 | 3.42, 3.6, 3.69 | 3.14, 3.31, 3.47 |
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Carcione et al. ( | 0.2, 0.75 | 4.24 | 4.02 |
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Linka et al. ( | – | 2.5 | 6.6 |
Fig. 2Empirical distribution of the main epidemic variables: total number of infected individuals, maximum number of infected simultaneously, duration of the epidemic, and day of maximum infected simultaneously (peak of the epidemic), for and
Fig. 3Empirical distribution of the main epidemic variables from 6645 simulation of the stochastic SEIR epidemic model that lead to a major outbreak, with and
Fig. 4Total infected individuals for different quarantine rates (without vaccination)
Fig. 5Effects of the quarantine and vaccination rates on the major outbreak probability
Fig. 6Effects of the quarantine and vaccination rates on the total number of infected individuals
Fig. 7Total number of vaccinated individuals for a vaccination rate from to