SIR-SI model with a Gaussian transmission rate : understanding the dynamics of dengue outbreaks in Lima, Peru
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Show full item recordDate of publishing
2023-04-13Type of publication
info:eu-repo/semantics/articleSubject(s)
Aedes
Bivalvos
Brotes de enfermedades
Dengue
Mosquitos vectores
Teorema de Bayes
Virus del Dengue
Aedes
Bivalvia
Disease outbreaks
Dengue
Mosquito vectors
Bayes Theorem
Dengue Virus
Bivalvos
Brotes de enfermedades
Dengue
Mosquitos vectores
Teorema de Bayes
Virus del Dengue
Aedes
Bivalvia
Disease outbreaks
Dengue
Mosquito vectors
Bayes Theorem
Dengue Virus
Abstract
Introduction. Dengue is transmitted by the Aedes aegypti mosquito as a vector, and a recent outbreak was reported in several districts of Lima, Peru. We conducted a modeling study to explain the transmission dynamics of dengue in three of these districts according to the demographics and climatology.
Methodology. We used the weekly distribution of dengue cases in the Comas, Lurigancho, and Puente Piedra districts, as well as the temperature data to investigate the transmission dynamics. We used maximum likelihood minimization and the human susceptible-infected-recovered and vector susceptible-infected (SIR-SI) model with a Gaussian function for the infectious rate to consider external non-modeled variables.
Results/principal findings. We found that the adjusted SIR-SI model with the Gaussian transmission rate (for modelling the exogenous variables) captured the behavior of the dengue outbreak in the selected districts. The model explained that the transmission behavior had a strong dependence on the weather, cultural, and demographic variables while other variables determined the start of the outbreak.
Conclusion/significance. The experimental results showed good agreement with the data and model results when a Bayesian-Gaussian transmission rate was employed. The effect of weather was also observed, and a strong qualitative relationship was obtained between the transmission rate and computed effective reproduction number Rt.