Disease maps display the spatial pattern in disease risk, so that high-risk clusters can be identified. The spatial structure in the risk map is typically represented by a set of random effects, which are modelled with a conditional autoregressive (CAR) prior. Such priors include a global spatial smoothing parameter, whereas real risk surfaces are likely to in-clude areas of smooth evolution as well as discontinuities, the latter of which are known as risk boundaries. Therefore, this paper proposes an extension to the class of CAR priors, which can identify both areas of localised spatial smoothness and risk boundaries. However, allowing for this localised smoothing requires large numbers of correlation parameters to be estimated, which are...
Disease mapping is the field of spatial epidemiology interested in estimating the spatial pattern in...
In epidemiological disease mapping one aims to estimate the spatio-temporal pattern in dis-ease risk...
Disease mapping methods for the modelling of spatial variation in disease rates, to smooth the extre...
In disease mapping, the aim is to estimate the spatial pattern in disease risk over an extended geog...
Disease mapping is the field of epidemiology that estimates the spatial or spatio-temporal pattern i...
Conditional autoregressive (CAR) models are commonly used to capture spatial correlation in areal un...
Conditional autoregressive (CAR) models are commonly used to cap-ture spatial correlation in areal u...
Disease risk maps for areal unit data are often estimated from Poisson mixed models with local spati...
ii Hierarchical spatial modelling is useful for modelling complex spatially correlated data in a var...
Conditional autoregressive models are typically used to capture the spatial autocorrelation present ...
Disease mapping is the field of spatial epidemiology interested in estimating the spatial pattern in...
Disease maps are geographical maps that display local estimates of disease risk. When the disease is...
Population-level disease risk varies between communities, and public health professionals are intere...
Spatiotemporal disease mapping focuses on estimating the spatial pattern in disease risk across a se...
International audienceRepresenting the health state of a region is a helpful tool to highlight spati...
Disease mapping is the field of spatial epidemiology interested in estimating the spatial pattern in...
In epidemiological disease mapping one aims to estimate the spatio-temporal pattern in dis-ease risk...
Disease mapping methods for the modelling of spatial variation in disease rates, to smooth the extre...
In disease mapping, the aim is to estimate the spatial pattern in disease risk over an extended geog...
Disease mapping is the field of epidemiology that estimates the spatial or spatio-temporal pattern i...
Conditional autoregressive (CAR) models are commonly used to capture spatial correlation in areal un...
Conditional autoregressive (CAR) models are commonly used to cap-ture spatial correlation in areal u...
Disease risk maps for areal unit data are often estimated from Poisson mixed models with local spati...
ii Hierarchical spatial modelling is useful for modelling complex spatially correlated data in a var...
Conditional autoregressive models are typically used to capture the spatial autocorrelation present ...
Disease mapping is the field of spatial epidemiology interested in estimating the spatial pattern in...
Disease maps are geographical maps that display local estimates of disease risk. When the disease is...
Population-level disease risk varies between communities, and public health professionals are intere...
Spatiotemporal disease mapping focuses on estimating the spatial pattern in disease risk across a se...
International audienceRepresenting the health state of a region is a helpful tool to highlight spati...
Disease mapping is the field of spatial epidemiology interested in estimating the spatial pattern in...
In epidemiological disease mapping one aims to estimate the spatio-temporal pattern in dis-ease risk...
Disease mapping methods for the modelling of spatial variation in disease rates, to smooth the extre...