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Mammogram Classification Using Support Vector Machine

Mammogram Classification Using Support Vector Machine
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Author(s): Youssef Ben Youssef (Hassan 1st University, Morocco), Elhassane Abdelmounim (Hassan 1st University, Morocco)and Abdelaziz Belaguid (Hassan 1st University, Morocco)
Copyright: 2017
Pages: 28
Source title: Handbook of Research on Advanced Trends in Microwave and Communication Engineering
Source Author(s)/Editor(s): Ahmed El Oualkadi (Abdelmalek Essaadi University, Morocco)and Jamal Zbitou (University of Hassan 1st, Morocco)
DOI: 10.4018/978-1-5225-0773-4.ch019

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Abstract

Among the objectives of artificial intelligence techniques, we find computer-aided diagnosis systems that support preventive medical check-ups and perform detection, recognition, and classification patterns. Recently these techniques are emerged in different areas particularly in medical imaging. Medical image is an important source of information, and a golden tool for the diagnosis and assessment of a pathological analysis process. In this chapter Computer-Aided Diagnosis (CAD) system is proposed in detection and diagnosis of breast cancer, it is mainly composed of the following steps: preprocessing mammographic image, segmentation of suspect region on the mammographic image using Chan Vese model, extraction of global and local descriptors and then image classification into malignant and benign mammograms using Support Vector Machine (SVM) classifier. The analysis of mammographic images proposed system with a choice of the subset of local descriptors after tumor segmentation leads to a classification of malignant and benign mammograms. System proposed achieves 92% for accuracy.

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