A Bayesian geostatistical model was developed to predict the intensity of infection with Schistosoma mansoni in East Africa. Epidemiological data from purpose-designed and standardized surveys were available for 31458 schoolchildren (90% aged between 6 and 16 years) from 459 locations across the region and used in combination with remote sensing environmental data to identify factors associated with spatial variation in infection patterns. The geostatistical model explicitly takes into account the highly aggregated distribution of parasite distributions by fitting a negative binomial distribution to the data and accounts for spatial correlation. Results identify the role of environmental risk factors in explaining geographical heterogeneity...
Spatial modelling was applied to self-reported schistosomiasis data from over 2.5 million school stu...
AbstractSpatial modelling was applied to self-reported schistosomiasis data from over 2.5 million sc...
The objectives of this study were (1) to examine risk factors for Schistosoma mansoni infection amon...
A Bayesian geostatistical model was developed to predict the intensity of infection with Schistosoma...
OBJECTIVE: To predict the spatial distributions of Schistosoma haematobium and S. mansoni infections...
Objective To predict the subnational spatial variation in the number of people infected with Schisto...
Multiple parasite infections are widespread in the developing world and understanding their geograph...
Multiple parasite infections are widespread in the developing world and understanding their geograph...
AbstractMultiple parasite infections are widespread in the developing world and understanding their ...
Objective: To predict the subnational spatial variation in the number of people infected with Schist...
Objective: To predict the subnational spatial variation in the number of people infected with Schist...
Schistosomiasis remains one of the most prevalent parasitic diseases in the tropics and subtropics, ...
Abstract. There is growing interest in the use of Bayesian geostatistical models for predicting the ...
The increased interest of reducing the infection rates of neglected tropical diseases like schistoso...
An important epidemiologic feature of schistosomiasis is the focal distribution of the disease. Thus...
Spatial modelling was applied to self-reported schistosomiasis data from over 2.5 million school stu...
AbstractSpatial modelling was applied to self-reported schistosomiasis data from over 2.5 million sc...
The objectives of this study were (1) to examine risk factors for Schistosoma mansoni infection amon...
A Bayesian geostatistical model was developed to predict the intensity of infection with Schistosoma...
OBJECTIVE: To predict the spatial distributions of Schistosoma haematobium and S. mansoni infections...
Objective To predict the subnational spatial variation in the number of people infected with Schisto...
Multiple parasite infections are widespread in the developing world and understanding their geograph...
Multiple parasite infections are widespread in the developing world and understanding their geograph...
AbstractMultiple parasite infections are widespread in the developing world and understanding their ...
Objective: To predict the subnational spatial variation in the number of people infected with Schist...
Objective: To predict the subnational spatial variation in the number of people infected with Schist...
Schistosomiasis remains one of the most prevalent parasitic diseases in the tropics and subtropics, ...
Abstract. There is growing interest in the use of Bayesian geostatistical models for predicting the ...
The increased interest of reducing the infection rates of neglected tropical diseases like schistoso...
An important epidemiologic feature of schistosomiasis is the focal distribution of the disease. Thus...
Spatial modelling was applied to self-reported schistosomiasis data from over 2.5 million school stu...
AbstractSpatial modelling was applied to self-reported schistosomiasis data from over 2.5 million sc...
The objectives of this study were (1) to examine risk factors for Schistosoma mansoni infection amon...