In disease mapping where predictor effects are to be modeled, it is often the case that sets of predictors are fixed, and the aim is to choose between fixed model sets. Model selection methods, both Bayesian model selection and Bayesian model averaging, are approaches within the Bayesian paradigm for achieving this aim. In the spatial context, model selection could have a spatial component in the sense that some models may be more appropriate for certain areas of a study region than others. In this work, we examine the use of spatially referenced Bayesian model averaging and Bayesian model selection via a large-scale simulation study accompanied by a small-scale case study. Our results suggest that BMS performs well when a strong regression...
In recent decades, disease mapping has drawn much attention worldwide. Due to the availability of Ma...
The analysis of small area disease incidence has now developed to a degree where many methods have b...
In epidemiologic studies, researchers are commonly interested in quantifying geospatial effects on t...
In disease mapping where predictor effects are to be modeled, it is often the case that sets of pred...
Spatio-temporal analysis of small area health data often involves choosing a fixed set of predictors...
Spatio-temporal analysis of small area health data often involves choosing a fixed set of predictors...
The increase in Bayesian models available for disease mapping at a small area level can pose challen...
The popularity of Bayesian disease mapping is increasing, as is the variety of available models. The...
It is often the case that researchers wish to simultaneously explore the behavior of, and estimate t...
Abstract: The problem of variable selection is encountered in model fitting with unobserved spatial ...
Disease maps are geographical maps that display local estimates of disease risk. When the disease is...
In this paper we propose a procedure to undertake Bayesian variable selection and model averaging fo...
© 2018, The Author(s). Disease mapping applications generally assume homogeneous regression effects ...
SUMMARY. Many current statistical methods for disease clustering studies are based on a hypothesis t...
This paper starts with a short overview of basic concepts in disease mapping such as relative risk a...
In recent decades, disease mapping has drawn much attention worldwide. Due to the availability of Ma...
The analysis of small area disease incidence has now developed to a degree where many methods have b...
In epidemiologic studies, researchers are commonly interested in quantifying geospatial effects on t...
In disease mapping where predictor effects are to be modeled, it is often the case that sets of pred...
Spatio-temporal analysis of small area health data often involves choosing a fixed set of predictors...
Spatio-temporal analysis of small area health data often involves choosing a fixed set of predictors...
The increase in Bayesian models available for disease mapping at a small area level can pose challen...
The popularity of Bayesian disease mapping is increasing, as is the variety of available models. The...
It is often the case that researchers wish to simultaneously explore the behavior of, and estimate t...
Abstract: The problem of variable selection is encountered in model fitting with unobserved spatial ...
Disease maps are geographical maps that display local estimates of disease risk. When the disease is...
In this paper we propose a procedure to undertake Bayesian variable selection and model averaging fo...
© 2018, The Author(s). Disease mapping applications generally assume homogeneous regression effects ...
SUMMARY. Many current statistical methods for disease clustering studies are based on a hypothesis t...
This paper starts with a short overview of basic concepts in disease mapping such as relative risk a...
In recent decades, disease mapping has drawn much attention worldwide. Due to the availability of Ma...
The analysis of small area disease incidence has now developed to a degree where many methods have b...
In epidemiologic studies, researchers are commonly interested in quantifying geospatial effects on t...