Computer Aided Analysis of Mammograms for Breast Diseases
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Abstract
Breast cancer is the life-threatening disease that invades into surrounding tissues or
newlineextends to distant body parts. It is the most prevalent cancer amongst women across
newlineworldwide. The regular screening of breast is essential to investigate cancer risk in its
newlineearly stage. The early detection of breast cancer is necessary to initiate radiation therapy
newlineto stop or control further growth of it. Mammography is considered as a gold standard
newlinefor screening of breast, which can detect lump or tumor before actually it is felt. The
newlinemammogram images are X-ray images, which are captured using low dose X-ray or very
newlinelimited count of X-ray photon. Therefore, mammogram images are poor contrast images,
newlineweak edges and it also consists of random fluctuations, so that interpretation of
newlinemammogram is one of the difficult tasks for radiologist. The study shows that 10-30%
newlinebreast cancers are misinterpreted by radiologist. Therefore, Computer Aided diagnosis
newlineand detection (CAD) system act as a second reader for radiologist, which performs
newlineautomatic segmentation and detection of breast cancer. The contrast enhancement of
newlinemammogram is an important preprocessing stage for CAD system to better visualize
newlinecontents of mammogram. In this thesis, a novel image fusion using Local entropy
newlinemaximization technique for mammogram contrast enhancement is proposed. The
newlineproposed contrast enhancement technique enhances contrast and improves the edge
newlinecontents. To overcome the problem of false positives detected in automatic breast tumor
newlinesegmentation, this thesis proposes the false positive reduction as a posterior step of CAD
newlinesystem. Since, the segmented suspicious region may not be abnormal called as false
newlinepositive region, which consumes radiologist time and sometimes may results into
newlineunnecessary biopsies. Therefore, in the proposed system, the initial suspicious region is
newlinesegmented using self-organizing map (SOM) network, then the detection of false positives
newlineand subsequently removal or reduction of false positives are achieved using feature
newlineextraction an