Estimating Individual-Level Risk in Spatial Epidemiology Using Spatially Aggregated Information on the Population at Risk |
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Authors: | Diggle Peter J Guan Yongtao Hart Anthony C Paize Fauzia Stanton Michelle |
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Affiliation: | School of Health and Medicine, Lancaster University, Lancaster, U.K. and Adjunct Professor, Department of Biostatistics, Johns Hopkins University School of Public Health, Baltimore. |
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Abstract: | We propose a novel alternative to case-control sampling for the estimation of individual-level risk in spatial epidemiology. Our approach uses weighted estimating equations to estimate regression parameters in the intensity function of an inhomogeneous spatial point process, when information on risk-factors is available at the individual level for cases, but only at a spatially aggregated level for the population at risk. We develop data-driven methods to select the weights used in the estimating equations and show through simulation that the choice of weights can have a major impact on efficiency of estimation. We develop a formal test to detect non-Poisson behavior in the underlying point process and assess the performance of the test using simulations of Poisson and Poisson cluster point processes. We apply our methods to data on the spatial distribution of childhood meningococcal disease cases in Merseyside, U.K. between 1981 and 2007. |
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