Progress has been made in mapping and predicting the risk of schistosomiasis using Bayesian geostatistical inference. Applications primarily focused on risk profiling of prevalence rather than infection intensity, although the latter is particularly important for morbidity control. In this review, the underlying assumptions used in a study mapping Schistosoma mansoni infection intensity in East Africa are examined. We argue that the assumption of stationarity needs to be relaxed, and that the negative binomial assumption might result in misleading inference because of a high number of excess zeros (individuals without an infection). We developed a Bayesian geostatistical zero-inflated (ZI) regression model that assumes a non-stationary spat...
SummaryThis paper reviews recent studies on the spatial epidemiology of human schistosomiasis in Afr...
OBJECTIVE: To predict the spatial distributions of Schistosoma haematobium and S. mansoni infections...
Abstract. There is growing interest in the use of Bayesian geostatistical models for predicting the ...
A Bayesian geostatistical model was developed to predict the intensity of infection with Schistosoma...
A Bayesian geostatistical model was developed to predict the intensity of infection with Schistosoma...
There is growing interest in the use of Bayesian geostatistical models for predicting the spatial di...
OBJECTIVE: To predict the spatial distributions of Schistosoma haematobium and S. mansoni infections...
A reduction in the burden caused by helminthic infections has been incorporated into the Millennium ...
Objective To predict the subnational spatial variation in the number of people infected with Schisto...
Spatial modelling was applied to self-reported schistosomiasis data from over 2.5 million school stu...
<div><p>Background</p><p><i>Schistosoma haematobium</i> and <i>Schistosoma mansoni</i> are blood flu...
Schistosomiasis remains one of the most prevalent parasitic diseases in the tropics and subtropics, ...
Background: Schistosoma haematobium and Schistosoma mansoni are blood flukes that cause urogenital a...
AbstractSpatial modelling was applied to self-reported schistosomiasis data from over 2.5 million sc...
This paper reviews recent studies on the spatial epidemiology of human schistosomiasis in Africa. Th...
SummaryThis paper reviews recent studies on the spatial epidemiology of human schistosomiasis in Afr...
OBJECTIVE: To predict the spatial distributions of Schistosoma haematobium and S. mansoni infections...
Abstract. There is growing interest in the use of Bayesian geostatistical models for predicting the ...
A Bayesian geostatistical model was developed to predict the intensity of infection with Schistosoma...
A Bayesian geostatistical model was developed to predict the intensity of infection with Schistosoma...
There is growing interest in the use of Bayesian geostatistical models for predicting the spatial di...
OBJECTIVE: To predict the spatial distributions of Schistosoma haematobium and S. mansoni infections...
A reduction in the burden caused by helminthic infections has been incorporated into the Millennium ...
Objective To predict the subnational spatial variation in the number of people infected with Schisto...
Spatial modelling was applied to self-reported schistosomiasis data from over 2.5 million school stu...
<div><p>Background</p><p><i>Schistosoma haematobium</i> and <i>Schistosoma mansoni</i> are blood flu...
Schistosomiasis remains one of the most prevalent parasitic diseases in the tropics and subtropics, ...
Background: Schistosoma haematobium and Schistosoma mansoni are blood flukes that cause urogenital a...
AbstractSpatial modelling was applied to self-reported schistosomiasis data from over 2.5 million sc...
This paper reviews recent studies on the spatial epidemiology of human schistosomiasis in Africa. Th...
SummaryThis paper reviews recent studies on the spatial epidemiology of human schistosomiasis in Afr...
OBJECTIVE: To predict the spatial distributions of Schistosoma haematobium and S. mansoni infections...
Abstract. There is growing interest in the use of Bayesian geostatistical models for predicting the ...