Computer Aided Diagnostic System for Classification of Mammograms
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Abstract
Breast cancer is the second cause of fatality among all cancers for women. Subsequently the
reason of breast cancer remains anonymous, primary prevention becomes impossible. The most
usual breast cancers types are mass (density) and micro-calcification. Early detection of these
types of lesions is one of the important issues for breast cancer control. Currently, x-ray
mammography is the particular most active, low-cost, and highly sensitive method for spotting
small lesions. Thus, an adequate Computer Aided Diagnosis (CAD) classification system is
designed for breast tumor for supporting immature radiologists in the diagnosis procedure. In this
study, author proposed an efficient CAD system to categorize database into normal, benign and
cancer breast tissue types. We have been extracted different type of squared shaped ROIs
manually from the middle part of the breast. Statistical texture features are extracted from these
ROIs. Finally, classification task is completed using Multilayer Perceptron (MLP) classifier,
Support Vector machine (SVM) classifier and k-nearest neighbor (k-NN) classifier followed by
feature selection technique. The outcomes of all the set of features are compared on the basis of
their accuracy. Then, mammograms are categorized into normal, benign and cancer using the
same procedure. The another proposed algorithm aims to developing an efficient image
processing based Graphical User Interface (GUI) for detection of micro-calcification by wavelet
transform in early stage. The result of first algorithm shows that accuracy reaches upto 90%
when combination of optimal features used as input. We have successfully detected breast tumor
using GUI model.
Description
M.E. Thesis
