In disease mapping, a scale effect due to an aggregation of data from a finer resolution level to a coarser level is a common phenomenon. This article addresses this issue using a hierarchical Bayesian modeling framework. We propose four different multiscale models. The first two models use a shared random effect that the finer level inherits from the coarser level. The third model assumes two independent convolution models at the finer and coarser levels. The fourth model applies a convolution model at the finer level, but the relative risk at the coarser level is obtained by aggregating the estimates at the finer level. We compare the models using the deviance information criterion (DIC) and Watanabe-Akaike information criterion (WAIC) th...
Multivariate disease mapping enriches traditional disease mapping studies by analysing several disea...
This work compares several hierarchical Bayesian techniques for modelling risk surfaces by multivari...
In this paper, we aim at assessing hierarchical Bayesian modeling for the analysis of multiple expos...
In disease mapping, a scale effect due to an aggregation of data from a finer resolution level to a ...
In spatial epidemiology, a scaling effect due to an aggre-gation of data from a finer to a coarser l...
Disease maps are geographical maps that display local estimates of disease risk. When the disease is...
Disease mapping aims to determine the underlying disease risk from scattered epidemiological data an...
International audienceDisease mapping aims to determine the underlying disease risk from scattered e...
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...
Regional aggregates of health outcomes over delineated administrative units such as counties or zip ...
Disease mapping is the field of spatial epidemiology interested in estimating the spatial pattern in...
Disease mapping is the field of spatial epidemiology interested in estimating the spatial pattern in...
Disease mapping and spatial statistics have become an important part of modern day statistics and ha...
Multivariate disease mapping enriches traditional disease mapping studies by analysing several disea...
This work compares several hierarchical Bayesian techniques for modelling risk surfaces by multivari...
In this paper, we aim at assessing hierarchical Bayesian modeling for the analysis of multiple expos...
In disease mapping, a scale effect due to an aggregation of data from a finer resolution level to a ...
In spatial epidemiology, a scaling effect due to an aggre-gation of data from a finer to a coarser l...
Disease maps are geographical maps that display local estimates of disease risk. When the disease is...
Disease mapping aims to determine the underlying disease risk from scattered epidemiological data an...
International audienceDisease mapping aims to determine the underlying disease risk from scattered e...
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...
Regional aggregates of health outcomes over delineated administrative units such as counties or zip ...
Disease mapping is the field of spatial epidemiology interested in estimating the spatial pattern in...
Disease mapping is the field of spatial epidemiology interested in estimating the spatial pattern in...
Disease mapping and spatial statistics have become an important part of modern day statistics and ha...
Multivariate disease mapping enriches traditional disease mapping studies by analysing several disea...
This work compares several hierarchical Bayesian techniques for modelling risk surfaces by multivari...
In this paper, we aim at assessing hierarchical Bayesian modeling for the analysis of multiple expos...