Skip to main content
SHARE
Publication

Discovering Potential Precursors of Mammography Abnormalities based on Textual Features, Frequencies, and Sequences...

by Robert M Patton, Thomas E Potok
Publication Type
Conference Paper
Publication Date
Page Numbers
657 to 664
Volume
6113
Conference Name
The 10th International Conference on Artificial Intelligence and Soft Computing
Conference Location
Zakopane, Poland
Conference Date

Diagnosing breast cancer from mammography reports is heavily dependant on the time sequences of the patient visits. In the work described, we take a longitudinal view of the text of a patient’s mam- mogram reports to explore the existence of certain phrase patterns that indicate future abnormalities may exist for the patient. Our approach uses various text analysis techniques combined with Haar wavelets for the discovery and analysis of such precursor phrase patterns. We believe the results show significant promise for the early detection of breast can- cer and other breast abnormalities.