In Bayesian disease mapping, one needs to specify a neighborhood structure to make inference about the underlying geographical relative risks. We propose a model in which the neighborhood structure is part of the parameter space. We retain the Markov property of the typical Bayesian spatial models: given the neighborhood graph, disease rates follow a conditional autoregressive model. However, the neighborhood graph itself is a parameter that also needs to be estimated. We investigate the theoretical properties of our model. In particular, we investigate carefully the prior and posterior covariance matrix induced by this random neighborhood structure, providing interpretation for each element of these matrices
Population-level disease risk across a set of non-overlapping areal units varies in space and time, ...
In recent decades, disease mapping has drawn much attention worldwide. Due to the availability of Ma...
In this work we propose a novel scalable Bayesian modeling approach to smooth mortality risks borrow...
AbstractIn Bayesian disease mapping, one needs to specify a neighborhood structure to make inference...
The paper develops mixture models for spatially indexed data. We confine attention to the case of fi...
Spatial connectivity is an important consideration when modelling infectious disease data across a g...
© 2018, The Author(s). Disease mapping applications generally assume homogeneous regression effects ...
The spatial epidemiology is the study of the occurrences of a disease in spatial locations. In spat...
Spatial connectivity is an important consideration when modelling infectious disease data across a g...
Conditionally specified Gaussian Markov random field (GMRF) models with adjacency- or distance-base...
Regional aggregates of health outcomes over delineated administrative units such as counties or zip ...
Disease mapping aims to determine the underlying disease risk from scattered epidemiological data an...
Disease mapping methods for the modeling of spatial variation in disease rates, to smooth the extrem...
In geographical epidemiology, maps of disease rates and disease risk provide a spatial perspective f...
Conditional autoregressive models are typically used to capture the spatial autocorrelation present ...
Population-level disease risk across a set of non-overlapping areal units varies in space and time, ...
In recent decades, disease mapping has drawn much attention worldwide. Due to the availability of Ma...
In this work we propose a novel scalable Bayesian modeling approach to smooth mortality risks borrow...
AbstractIn Bayesian disease mapping, one needs to specify a neighborhood structure to make inference...
The paper develops mixture models for spatially indexed data. We confine attention to the case of fi...
Spatial connectivity is an important consideration when modelling infectious disease data across a g...
© 2018, The Author(s). Disease mapping applications generally assume homogeneous regression effects ...
The spatial epidemiology is the study of the occurrences of a disease in spatial locations. In spat...
Spatial connectivity is an important consideration when modelling infectious disease data across a g...
Conditionally specified Gaussian Markov random field (GMRF) models with adjacency- or distance-base...
Regional aggregates of health outcomes over delineated administrative units such as counties or zip ...
Disease mapping aims to determine the underlying disease risk from scattered epidemiological data an...
Disease mapping methods for the modeling of spatial variation in disease rates, to smooth the extrem...
In geographical epidemiology, maps of disease rates and disease risk provide a spatial perspective f...
Conditional autoregressive models are typically used to capture the spatial autocorrelation present ...
Population-level disease risk across a set of non-overlapping areal units varies in space and time, ...
In recent decades, disease mapping has drawn much attention worldwide. Due to the availability of Ma...
In this work we propose a novel scalable Bayesian modeling approach to smooth mortality risks borrow...