This study identified the possible threshold to predict dengue fever (DF) outbreaks using Baidu Search Index (BSI). Time-series classification and regression tree models based on BSI were used to develop a predictive model for DF outbreak in Guangzhou and Zhongshan, China. In the regression tree models, the mean autochthonous DF incidence rate increased approximately 30-fold in Guangzhou when the weekly BSI for DF at the lagged moving average of 1–3 weeks was more than 382. When the weekly BSI for DF at the lagged moving average of 1–5 weeks was more than 91.8, there was approximately 9-fold increase of the mean autochthonous DF incidence rate in Zhongshan. In the classification tree models, the results showed that when the weekly BSI for D...
The use of internet search data has been demonstrated to be effective at predicting influenza incide...
This study aimed to investigate the spatiotemporal clustering and socio-environmental factors associ...
Background This study aimed to investigate the spatiotemporal clustering and socio-environmental fac...
This study identified the possible threshold to predict dengue fever (DF) outbreaks using Baidu Sear...
BACKGROUND:Dengue fever (DF) in Guangzhou, Guangdong province in China is an important public health...
Dengue is a re-emerging infectious disease of humans, rapidly growing from endemic areas to dengue-f...
China experienced an unprecedented outbreak of dengue fever in 2014, and the number of cases reached...
With the acceleration of global urbanization and climate change, dengue fever is spreading worldwide...
In China, dengue remains an important public health issue with expanded areas and increased incidenc...
Dengue is endemic in more than 100 countries, mainly in tropical and subtropical regions, and the in...
Each year there are approximately 390 million dengue infections worldwide. Weather variables have a ...
Dengue fever (DF) is the most prevalent and rapidly spreading mosquito-borne disease globally. Contr...
Each year there are approximately 390 million dengue infections worldwide. Weather variables have a ...
Despite dengue dynamics being driven by complex interactions between human hosts, mosquito vectors a...
INTRODUCTION:In order to improve the prediction accuracy of dengue fever incidence, we constructed a...
The use of internet search data has been demonstrated to be effective at predicting influenza incide...
This study aimed to investigate the spatiotemporal clustering and socio-environmental factors associ...
Background This study aimed to investigate the spatiotemporal clustering and socio-environmental fac...
This study identified the possible threshold to predict dengue fever (DF) outbreaks using Baidu Sear...
BACKGROUND:Dengue fever (DF) in Guangzhou, Guangdong province in China is an important public health...
Dengue is a re-emerging infectious disease of humans, rapidly growing from endemic areas to dengue-f...
China experienced an unprecedented outbreak of dengue fever in 2014, and the number of cases reached...
With the acceleration of global urbanization and climate change, dengue fever is spreading worldwide...
In China, dengue remains an important public health issue with expanded areas and increased incidenc...
Dengue is endemic in more than 100 countries, mainly in tropical and subtropical regions, and the in...
Each year there are approximately 390 million dengue infections worldwide. Weather variables have a ...
Dengue fever (DF) is the most prevalent and rapidly spreading mosquito-borne disease globally. Contr...
Each year there are approximately 390 million dengue infections worldwide. Weather variables have a ...
Despite dengue dynamics being driven by complex interactions between human hosts, mosquito vectors a...
INTRODUCTION:In order to improve the prediction accuracy of dengue fever incidence, we constructed a...
The use of internet search data has been demonstrated to be effective at predicting influenza incide...
This study aimed to investigate the spatiotemporal clustering and socio-environmental factors associ...
Background This study aimed to investigate the spatiotemporal clustering and socio-environmental fac...