1. Covariate adjusted mixture models and disease mapping with the program DismapWin.
- Author
-
Schlattmann P, Dietz E, and Böhning D
- Subjects
- Algorithms, Bayes Theorem, Berlin epidemiology, Humans, Poisson Distribution, Regression Analysis, Risk, Social Welfare, Tuberculosis epidemiology, Cluster Analysis, Epidemiologic Methods, Maps as Topic, Population Surveillance methods, Residence Characteristics, Software
- Abstract
The analysis and recognition of disease clustering in space and its representation on a map is an important problem in epidemiology. An approach using mixture models to identify spatial heterogeneity in disease risk and map construction within an empirical Bayes framework is described. Once heterogeneity is detected, the question arises as how explanatory variables could be included in the model. A mixed Poisson regression approach to include covariates is presented. The methods are illustrated using data for tuberculosis from Berlin in 1991.
- Published
- 1996
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