Predrag Bakic
Associate Professor
Classifying ductal trees using geometrical features and ensemble learning techniques
Author
Summary, in English
Early detection of risk of breast cancer is of upmost importance for effective treatment. In the field of medical image analysis, automatic methods have been developed to discover features of ductal trees that are correlated with radiological findings regarding breast cancer. In this study, a data mining approach is proposed that captures a new set of geometrical properties of ductal trees. The extracted features are employed in an ensemble learning scheme in order to classify galactograms, medical images which visualize the tree structure of breast ducts. For classification, three variants of the AdaBoost algorithm are explored using as weak learner the CART decision tree. Although the new methodology does not improve the classification performance compared to state-of-the-art techniques, it offers useful information regarding the geometrical features that could be used as biomarkers providing insight to the relationship between ductal tree topology and pathology of human breast.
Publishing year
2013
Language
English
Pages
146-155
Publication/Series
Communications in Computer and Information Science
Volume
384
Document type
Journal article
Publisher
Springer
Topic
- Medical Engineering
- Cancer and Oncology
Keywords
- Breast imaging
- Classifier ensembles
- Feature extraction
Status
Published
ISBN/ISSN/Other
- ISSN: 1865-0929