Dissertação
Modelagem hierárquica bayesiana de contatos: uma aplicação em modelos epidemiológicos compartimentais
Fecha
2022-02-25Autor
Maíra Soalheiro
Institución
Resumen
Hierarchical Linear Models, also called Multilevel Regression Models or Mixed-Effects
Models, is a modeling method for nested data sets that present a hierarchical structure,
being used for studies that pursuit to investigate the effects of variables at the individual
level and at group levels, as well as for longitudinal studies, which rely on the presence of
repeated measures. This type of adjustment explores the relationship between individuals
and the environment to be studied, and understands that for this reason, all possible associations must be analyzed. The study in question aims to propose a multilevel Bayesian
model to estimate contact rates among residents of Aglomerado da Serra by age groups
and social circles, based on the studies of the POLYMOD project (Mossong et al., 2008)
and the article by Prem et al. (2017). The estimated rates will be projected for regions of
the city of Belo Horizonte in order to apply them in a SIR (Susceptible-Infected-Removed)
model, as part of the studies to mitigate the impacts of COVID-19. Caused by the new
coronavirus, SARS-CoV-2, the transmission of the virus occurs from one infected person
to another and with millions of cases and deaths around the world, seeking to understand the patterns of contact networks considering the variations that may occur due to
age groups and places of interaction, is of paramount t importance, as they can lead to
differences in the effect of social distancing measures.
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