Disease mapping aims to determine the underlying disease risk from scattered epidemiological data and to represent it on a smoothed colored map. This methodology is based on Bayesian inference and is classically dedicated to non-infectious diseases whose incidence is low and whose cases distribution is spatially (and eventually temporally) structured. Over the last decades, disease mapping has received many major improvements to extend its scope of application: integrating the temporal dimension, dealing with missing data, taking into account various a prioris (environmental and population covariates, assumptions concerning the repartition and the evolution of the risk), dealing with overdispersion, etc. We aim to adapt this approach to mod...
In this paper we propose a hierarchical Bayesian method to estimate the relative risk for female bre...
We propose a Bayesian approach to multiple testing in disease mapping. This study was motivated by a...
Disease mapping and spatial statistics have become an important part of modern day statistics and ha...
International audienceDisease mapping aims to determine the underlying disease risk from scattered e...
International audienceDisease mapping aims to determine the underlying disease risk from scattered e...
AbstractDisease mapping aims to determine the underlying disease risk scattered from health data. Th...
Disease maps are geographical maps that display local estimates of disease risk. When the disease is...
In recent years, emerging computational algorithms have revolusionised the application of sophistica...
In recent decades, disease mapping has drawn much attention worldwide. Due to the availability of Ma...
In recent decades, disease mapping has drawn much attention worldwide. Due to the availability of Ma...
AbstractDisease mapping aims to determine the underlying disease risk scattered from health data. Th...
We propose a Bayesian approach to multiple testing in disease mapping. This study was motivated by a...
Disease risk varies in space and time due to variation in many factors, including environmental expo...
In this paper we propose a hierarchical Bayesian method to estimate the relative risk for female bre...
In recent decades, disease mapping has drawn much attention worldwide. Due to the availability of Ma...
In this paper we propose a hierarchical Bayesian method to estimate the relative risk for female bre...
We propose a Bayesian approach to multiple testing in disease mapping. This study was motivated by a...
Disease mapping and spatial statistics have become an important part of modern day statistics and ha...
International audienceDisease mapping aims to determine the underlying disease risk from scattered e...
International audienceDisease mapping aims to determine the underlying disease risk from scattered e...
AbstractDisease mapping aims to determine the underlying disease risk scattered from health data. Th...
Disease maps are geographical maps that display local estimates of disease risk. When the disease is...
In recent years, emerging computational algorithms have revolusionised the application of sophistica...
In recent decades, disease mapping has drawn much attention worldwide. Due to the availability of Ma...
In recent decades, disease mapping has drawn much attention worldwide. Due to the availability of Ma...
AbstractDisease mapping aims to determine the underlying disease risk scattered from health data. Th...
We propose a Bayesian approach to multiple testing in disease mapping. This study was motivated by a...
Disease risk varies in space and time due to variation in many factors, including environmental expo...
In this paper we propose a hierarchical Bayesian method to estimate the relative risk for female bre...
In recent decades, disease mapping has drawn much attention worldwide. Due to the availability of Ma...
In this paper we propose a hierarchical Bayesian method to estimate the relative risk for female bre...
We propose a Bayesian approach to multiple testing in disease mapping. This study was motivated by a...
Disease mapping and spatial statistics have become an important part of modern day statistics and ha...