Journal article

Feature selection using mutual information in CT colonography

JL Ong, AK Seghouane

Pattern Recognition Letters | ELSEVIER | Published : 2011

Abstract

Computed tomographic (CT) colonography is a promising alternative to traditional invasive colonoscopic methods used in the detection and removal of cancerous growths, or polyps in the colon. Existing computer-aided diagnosis (CAD) algorithms used in CT colonography typically employ the use of a classifier to discriminate between true and false positives generated by a polyp candidate detection system based on a set of features extracted from the candidates. However, these classifiers often suffer from a phenomenon termed the curse of dimensionality, whereby there is a marked degradation in the performance of a classifier as the number of features used in the classifier is increased. In addit..

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University of Melbourne Researchers

Grants

Funding Acknowledgements

NICTA is funded by the Australian Department of Communications Information Technology and the Arts and the Australian Research Council through Backing Australias Ability and the ICT Center of Excellence Program