DocumentCode
3197099
Title
Enhanced accuracy of breast cancer detection in digital mammograms using wavelet analysis
Author
Padmanabhan, Sharmila ; Sundararajan, Raji
Author_Institution
Purdue Univ., West Lafayette, IN, USA
fYear
2012
fDate
14-15 Dec. 2012
Firstpage
153
Lastpage
156
Abstract
About every minute a woman dies out of breast cancer, worldwide. The need for early detection cannot be overstated. Towards this, mammography is a boon for both early detection and screening of breast cancer tumors. It is an imaging system that uses low dose x-rays for examining the breasts, by the electrons reflected from the tissues. The use of screening mammography is associated with the detection of breast cancer at an earlier stage and smaller size, resulting in a reduction in mortality. This study was aimed at enhancing the current accuracy (diagnostic) of digital mammograms using industry standard simulation software tool, MATLAB and the MIAS dataset. The technique involves identification of tumor cells to segment them in terms of different stages of the disease. We consider the process of object detection, recognition and classification of mammograms with the aim of differentiating between normal and abnormal (benign or cancerous) cells. It is reported that dense breasts can make traditional mammograms more difficult to interpret. Although newer digital mammography techniques claim for better detection in dense breast tissues, the availability of such expensive digital mammograms is not widespread. This problem can be minimized by analyzing different breast structures (mammograms) using the MATLAB numerical analysis software for image processing applications. The results indicated up to 91% accuracy, compared to 70% at present. Our proposed solution has proved to be an effective way of detecting breast cancer early in different types of breast tissues.
Keywords
cancer; mammography; mathematics computing; medical image processing; numerical analysis; tumours; MATLAB numerical analysis software; MIAS dataset; benign cells; breast cancer detection; breast cancer tumors; cancerous cells; dense breast tissues; digital mammograms; digital mammography techniques; image processing applications; industry standard simulation software tool; low dose x-rays; object classification; object detection; object recognition; tumor cells; wavelet analysis; Biomedical imaging; Breast; Design automation; Testing; Training; Mammogram; breast cancer; feature extraction; mass detection; pattern matching;
fLanguage
English
Publisher
ieee
Conference_Titel
Machine Vision and Image Processing (MVIP), 2012 International Conference on
Conference_Location
Taipei
Print_ISBN
978-1-4673-2319-2
Type
conf
DOI
10.1109/MVIP.2012.6428783
Filename
6428783
Link To Document