Disease mapping aims to estimate the spatial pattern in disease risk across an area, identifying units which have elevated disease risk. Existing methods use Bayesian hierarchical models with spatially smooth conditional autoregressive priors to estimate risk, but these methods are unable to identify the geographical extent of spatially contiguous high-risk clusters of areal units. Our proposed solution to this problem is a two-stage approach, which produces a set of potential cluster structures for the data and then chooses the optimal structure via a Bayesian hierarchical model. The first stage uses a spatially adjusted hierarchical agglomerative clustering algorithm. The second stage fits a Poisson log-linear model to the data to estimat...
An interesting epidemiological problem is the analysis of geographical variation in rates of disease...
SUMMARY. Many current statistical methods for disease clustering studies are based on a hypothesis t...
Spatiotemporal disease mapping focuses on estimating the spatial pattern in disease risk across a se...
© 2015 Elsevier Ltd. Disease mapping aims to estimate the spatial pattern in disease risk across an ...
Disease mapping aims to estimate the spatial pattern in disease risk across an area, identifying uni...
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 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...
This thesis develops statistical methodology for disease mapping, an increasingly important field of...
Conditional autoregressive models are typically used to capture the spatial autocorrelation present ...
© 2016 WILEY-VCH Verlag GmbH & Co. KGaA, Weinheim Spatiotemporal disease mapping focuses on estimati...
Spatiotemporal disease mapping focuses on estimating the spatial pattern in disease risk across a se...
Spatiotemporal disease mapping focuses on estimating the spatial pattern in disease risk across a se...
In epidemiological disease mapping one aims to estimate the spatio-temporal pattern in dis-ease risk...
An interesting epidemiological problem is the analysis of geographical variation in rates of disease...
SUMMARY. Many current statistical methods for disease clustering studies are based on a hypothesis t...
Spatiotemporal disease mapping focuses on estimating the spatial pattern in disease risk across a se...
© 2015 Elsevier Ltd. Disease mapping aims to estimate the spatial pattern in disease risk across an ...
Disease mapping aims to estimate the spatial pattern in disease risk across an area, identifying uni...
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 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...
This thesis develops statistical methodology for disease mapping, an increasingly important field of...
Conditional autoregressive models are typically used to capture the spatial autocorrelation present ...
© 2016 WILEY-VCH Verlag GmbH & Co. KGaA, Weinheim Spatiotemporal disease mapping focuses on estimati...
Spatiotemporal disease mapping focuses on estimating the spatial pattern in disease risk across a se...
Spatiotemporal disease mapping focuses on estimating the spatial pattern in disease risk across a se...
In epidemiological disease mapping one aims to estimate the spatio-temporal pattern in dis-ease risk...
An interesting epidemiological problem is the analysis of geographical variation in rates of disease...
SUMMARY. Many current statistical methods for disease clustering studies are based on a hypothesis t...
Spatiotemporal disease mapping focuses on estimating the spatial pattern in disease risk across a se...