| Literature DB >> 31452235 |
Olatunji Johnson1, Peter Diggle1, Emanuele Giorgi1.
Abstract
In this paper, we develop a computationally efficient discrete approximation to log-Gaussian Cox process (LGCP) models for the analysis of spatially aggregated disease count data. Our approach overcomes an inherent limitation of spatial models based on Markov structures, namely, that each such model is tied to a specific partition of the study area, and allows for spatially continuous prediction. We compare the predictive performance of our modelling approach with LGCP through a simulation study and an application to primary biliary cirrhosis incidence data in Newcastle upon Tyne, UK. Our results suggest that, when disease risk is assumed to be a spatially continuous process, the proposed approximation to LGCP provides reliable estimates of disease risk both on spatially continuous and aggregated scales. The proposed methodology is implemented in the open-source R package SDALGCP.Entities:
Keywords: Monte Carlo maximum likelihood; disease mapping; geostatistics; log-Gaussian Cox process
Year: 2019 PMID: 31452235 DOI: 10.1002/sim.8339
Source DB: PubMed Journal: Stat Med ISSN: 0277-6715 Impact factor: 2.373