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Spatial algorithm for detecting disease outbreaks in Australia

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Figure

Table of results
Figure 2.- (a) Initial polygon selection and comparison. (b) Intersection of adjacent polygons and comparison.
Figure 3 illustrates an example choropleth map of RRv disease rates aggregated to  pos-tcodes for WA
Figure 5.- Smoothed difference map. This is calculated using the adjacent postcode subrouti- subrouti-ne in which each postcode and its adjoining postcodes are compared as a group to  expec-ted counts
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