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Please use this identifier to cite or link to this item: https://repository.acu.edu.ng:443//handle/123456789/355
Title: Feature Extraction Techniques for Mass Detection in Digital Mammogram (Review)
Authors: Adeyemo, Temitope Tosin
Adepoju, Temilola Morufat
Sobowale, Adedayo Aladejobi
Oyediran, Mayowa Oyedepo
Omidiora, Elijah Olusayo
Olabiyisi, Stephen Olatude
Keywords: Cancer
feature extraction
breast
mammogram
mass
region of interest
benign
malignant
Issue Date: 8-Dec-2017
Publisher: Journal of Scientific Research & Reports
Abstract: One of the most common diseases in women today is breast cancer. The method of detection and analyzing breast images according to literature, to mention few are mammography, magnetic resonance, thermography and ultrasound of which mammography is the most accurate and low cost method. Mass is a major symptom of breast abnormality. Despite the high success of mammography in mass detection, radiologists find it difficult to interpret breast abnormality and take decision. Computer Aided Detection (CADe) and Computer Aided Diagnosis (CADx) are the two systems to improve radiologists’ accuracy of detection and, classification of breast cancer into benign or malignant prior to biopsy. However, the optimal classification rate of CAD system depends on effectiveness of feature extraction technique. This paper present review of different feature extraction Techniques (FETs) that have been adopted for mass detection and classification.
URI: http://repository.acu.edu.ng:8080/jspui/handle/123456789/355
Appears in Collections:Department of Computer Engineering

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