Cancer survival data visualisation
For many different cancers, this data visualisation provides a range of cancer survival statistics. Help with terms, and information about the data, is available by placing the mouse pointer over the icons found near the top of the page.
This cancer survival visualisation contains three figures. The visualisation presents statistics for the selected cancer and provides statistics by sex.
Figure 1 is a line graph that contains time series information on 1 to 5-year observed or relative survival rates for the selected cancer in 5-year periods.
Figure 2 is a line graph that contains information on 1 to 5-year observed or relative survival rates for the selected cancer in order of increasing age group (0–4, 5–9, etc. up to 85+) for the most recent 5-year period available for reporting.
Figure 3 is a line graph that contains 5-year conditional observed or relative survival, given the person has already survived 1 to 5 years after diagnosis, for the selected cancer for the most recent 5-year period available for reporting.
The visualisation includes information about many different cancers and the statistics within this visualisation are available in Excel format within the Data section of this report.

Cancer survival data is available as supplementary tables.
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