Publication | Open Access
Climate-driven statistical models as effective predictors of local dengue incidence in costa rica: a generalized additive model and random forest approach
12
Citations
43
References
2019
Year
EngineeringMalariaEpidemiological DynamicClimate EpidemiologyLocal Dengue IncidenceArbovirusVector Borne DiseaseEnvironmental HealthDengue CasesPublic HealthClimate ChangeInfectious Disease EpidemiologyGeographyCosta RicaVector ControlEpidemiologyDeforestationClimatologyGlobal HealthInternational HealthGeneralized Additive ModelRandom Forest
Climate has been an important factor in shaping the distribution and incidence of dengue cases in tropical and subtropical countries. In Costa Rica, a tropical country with distinctive micro-climates, dengue has been endemic since its introduction in 1993, inflicting substantial economic, social, and public health repercussions. Using the number of dengue reported cases and climate data from 2007-2017, we fitted a prediction model applying a Generalized Additive Model (GAM) and Random Forest (RF) approach, which allowed us to retrospectively predict the relative risk of dengue in five climatological diverse municipalities around the country.
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