A probabilistic epidemiological model for infectious diseases: The case of COVID-19 at global-level |
| |
Authors: | Heitor Oliveira Duarte Paulo Gabriel Siqueira Alexandre Calumbi Antunes Oliveira Márcio das Chagas Moura |
| |
Affiliation: | 1. Departamento de Engenharia Mecânica, Coordenação de Engenharia Naval, Universidade Federal de Pernambuco, Recife, Pernambuco, Brazil;2. Programa de Pós-Graduação em Engenharia de Produção, Centro de Estudos e Ensaios em Risco e Modelagem Ambiental (CEERMA), Universidade Federal de Pernambuco, Recife, Pernambuco, Brazil |
| |
Abstract: | This study has developed a probabilistic epidemiological model a few weeks after the World Health Organization declared COVID-19 a pandemic (based on the little data available at that time). The aim was to assess relative risks for future scenarios and evaluate the effectiveness of different management actions for 1 year ahead. We quantified, categorized, and ranked the risks for scenarios such as business as usual, and moderate and strong mitigation. We estimated that, in the absence of interventions, COVID-19 would have a 100% risk of explosion (i.e., more than 25% infections in the world population) and 34% (2.6 billion) of the world population would have been infected until the end of simulation. We analyzed the suitability of model scenarios by comparing actual values against estimated values for the first 6 weeks of the simulation period. The results proved to be more suitable with a business-as-usual scenario in Asia and moderate mitigation in the other continents. If everything went on like this, we would have 55% risk of explosion and 22% (1.7 billion) of the world population would have been infected. Strong mitigation actions in all continents could reduce these numbers to, 7% and 3% (223 million), respectively. Although the results were based on the data available in March 2020, both the model and probabilistic approach proved to be practicable and could be a basis for risk assessment in future pandemic episodes with unknown virus, especially in the early stages, when data and literature are scarce. |
| |
Keywords: | COVID-19 probabilistic epidemiological model world population |
|
|