
pmid: 8272672
AbstractThe analysis and recognition of disease clustering in space and its representation on a map is one of the oldest problems in epidemiology. Some traditional methods of constructing such a map are presented. An alternative approach using mixture models to identify population heterogeneity and map construction within an empirical Bayes framework is described. For hepatitis B data from Berlin in 1989, a map is presented and the different methods are evaluated using a parametric bootstrap approach.
Bayes Theorem, Hepatitis B, Disease Outbreaks, Berlin, Prevalence, Cluster Analysis, Humans, Epidemiologic Methods, Demography
Bayes Theorem, Hepatitis B, Disease Outbreaks, Berlin, Prevalence, Cluster Analysis, Humans, Epidemiologic Methods, Demography
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