Modelling Spatio-temporal data of dengue fever using generalized additive mixed models.

Cabrera, Maritza; Taylor Gordon

Abstract

Epidemiological studies have revealed a complex association between weather and dengue transmission. Our aim is the development of a Spatio-temporal modelling of dengue fever via a Generalized Additive mixed model (GAMM). The structure is based on unknown smoother functions for climatic and a set of non-climatic covariates. All the climatic covariates were found statistically significant with optimal lagged effect and the smoothed curves fairly captured the real dynamic on dengue fever. It was also found that critical levels of dengue cases were reached with temperature between 26 °C and 30 °C. The findings also revealed for the first time that the El Niño phenomenon fluctuating between 26.5 °C and 28.0 °C had the worse impact on dengue transmission. This study brings together a large dataset from different sources including Ministry of Health from Venezuela.

Más información

Título de la Revista: Journal Spatial and Spatio-Temporal epidemiology
Volumen: 28
Editorial: Elsevier
Fecha de publicación: 2019
Página de inicio: 1
Página final: 13
Idioma: English