A Hybrid Modeling Technique of Epidemic Outbreaks with Application to COVID-19 Dynamics in West Africa
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Abstract
The widely used logistic model for epidemic case reporting data may be either restrictive
or unrealistic in presence of containment measures when implemented after an epidemic outbreak.
For flexibility in epidemic case reporting data modeling, we combined an exponential growth curve
for the early epidemic phase with a flexible growth curve to account for the potential change in
growth pattern after implementation of containment measures. We also fitted logistic regression
models to recoveries and deaths from the confirmed positive cases. In addition, the growth curves
were integrated into a SIQR (Susceptible, Infective, Quarantined, Recovered) model framework to
provide an overview on the modeled epidemic wave. We focused on the estimation of: (1) the delay
between the appearance of the first infectious case in the population and the outbreak (“epidemic
latency period”); (2) the duration of the exponential growth phase; (3) the basic and the time-varying
reproduction numbers; and (4) the peaks (time and size) in confirmed positive cases, active cases
and new infections. The application of this approach to COVID-19 data from West Africa allowed
discussion on the effectiveness of some containment measures implemented across the region
