Globally, the number of dengue cases has been on the increase since 1990 and this trend has also been found in Brazil and its most populated city-São Paulo. Surveillance systems based on predictions allow for timely decision making processes, and in turn, timely and efficient interventions to reduce the burden of the disease. We conducted a comparative study of dengue predictions in São Paulo city to test the performance of trained seasonal autoregressive integrated moving average models, generalized additive models and artificial neural networks. We also used a naïve model as a benchmark. A generalized additive model with lags of the number of cases and meteorological variables had the best performance, predicted epidemics of unprecedented...
This study aimed to develop a forecasting model for the incidence of dengue in Ribeirão Preto, São P...
Modelling dengue fever in endemic areas is important to mitigate and improve vector-borne disease co...
This paper considers the potential for using seasonal climate forecasts in developing an early warni...
<div><p>Globally, the number of dengue cases has been on the increase since 1990 and this trend has ...
Dengue is a serious public health concern in Brazil and globally. In the absence of a universal vacc...
Current prediction models for dengue risk are restricted to country-wide estimates or are insufficie...
BackgroundPredictive models can serve as early warning systems and can be used to forecast future ri...
Dengue viruses, which infect millions of people per year worldwide, cause large epidemics that strai...
The robust estimate and forecast capability of random forests (RF) has been widely recognized, howev...
We used the Infodengue database of incidence and weather time-series, to train predictive models for...
In China, dengue remains an important public health issue with expanded areas and increased incidenc...
Abstract Background The goal of this research is to create a system that can use the available relev...
Purpose: Dengue is considered one of the biggest public health problems in recent decades. Climate a...
INTRODUCTION: Forecasting dengue cases in a population by using time-series models can provide usefu...
Local climate conditions play a major role in the biology of the Aedes aegypti mosquito, the main ve...
This study aimed to develop a forecasting model for the incidence of dengue in Ribeirão Preto, São P...
Modelling dengue fever in endemic areas is important to mitigate and improve vector-borne disease co...
This paper considers the potential for using seasonal climate forecasts in developing an early warni...
<div><p>Globally, the number of dengue cases has been on the increase since 1990 and this trend has ...
Dengue is a serious public health concern in Brazil and globally. In the absence of a universal vacc...
Current prediction models for dengue risk are restricted to country-wide estimates or are insufficie...
BackgroundPredictive models can serve as early warning systems and can be used to forecast future ri...
Dengue viruses, which infect millions of people per year worldwide, cause large epidemics that strai...
The robust estimate and forecast capability of random forests (RF) has been widely recognized, howev...
We used the Infodengue database of incidence and weather time-series, to train predictive models for...
In China, dengue remains an important public health issue with expanded areas and increased incidenc...
Abstract Background The goal of this research is to create a system that can use the available relev...
Purpose: Dengue is considered one of the biggest public health problems in recent decades. Climate a...
INTRODUCTION: Forecasting dengue cases in a population by using time-series models can provide usefu...
Local climate conditions play a major role in the biology of the Aedes aegypti mosquito, the main ve...
This study aimed to develop a forecasting model for the incidence of dengue in Ribeirão Preto, São P...
Modelling dengue fever in endemic areas is important to mitigate and improve vector-borne disease co...
This paper considers the potential for using seasonal climate forecasts in developing an early warni...