This paper aims to enlarge the usual scope of disease mapping by means of d
ynamic mixtures (DMDM) in case a time component is involved in the data. A
special mixture model is suggested which looks for space-time components (c
lusters) simultaneously. The idea is illustrated using data on female lung
cancer from the East German cancer registry for 1960-1989. The conventional
mixed Poisson regression model is used as a third model for comparison. Th
e models are discussed in terms of their benefits, difficulties and ease in
interpretation, as well as their statistical meaning. Some ideas on evalua
tion of these models are also included. Copyright (C) 2000 John Wiley & Son
s, Ltd.