Fuzzy rough sets hybrid scheme for breast cancer detection

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摘要

This paper introduces a hybrid scheme that combines the advantages of fuzzy sets and rough sets in conjunction with statistical feature extraction techniques. An application of breast cancer imaging has been chosen and hybridization scheme have been applied to see their ability and accuracy to classify the breast cancer images into two outcomes: cancer or non-cancer. The introduced scheme starts with fuzzy image processing as pre-processing techniques to enhance the contrast of the whole image; to extracts the region of interest and then to enhance the edges surrounding the region of interest. A subsequently extract features from the segmented regions of the interested regions using the gray-level co-occurrence matrix is presented. Rough sets approach for generation of all reducts that contains minimal number of attributes and rules is introduced. Finally, these rules can then be passed to a classifier for discrimination for different regions of interest to test whether they are cancer or non-cancer. To measure the similarity, a new rough set distance function is presented. The experimental results show that the hybrid scheme applied in this study perform well reaching over 98% in overall accuracy with minimal number of generated rules. (This paper was not presented at any IFAC meeting).

论文关键词:Rough sets,Fuzzy image processing,Mammograms,Classification,Feature extraction,Rule and reduct generation,Similarity measure,Gray-level co-occurrence matrices

论文评审过程:Received 24 April 2004, Revised 29 October 2005, Accepted 31 January 2006, Available online 30 June 2006.

论文官网地址:https://doi.org/10.1016/j.imavis.2006.01.026