Computer-aided classification of breast masses in mammogram images based on spherical wavelet transform and support vector machines

Breast cancer can be effectively detected and diagnosed using the technology of digital mammography. However, although this technology has been rapidly developing recently, suspicious regions cannot be detected in some cases by radiologists, because of the noise or inappropriate mammogram contrast....

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Veröffentlicht in:Expert systems 2015-02, Vol.32 (1), p.155-164
Hauptverfasser: Görgel, Pelin, Sertbas, Ahmet, Uçan, Osman Nuri
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Sertbas, Ahmet
Uçan, Osman Nuri
description Breast cancer can be effectively detected and diagnosed using the technology of digital mammography. However, although this technology has been rapidly developing recently, suspicious regions cannot be detected in some cases by radiologists, because of the noise or inappropriate mammogram contrast. This study presents a classification of segmented region of interests (ROIs) as either benign or malignant to serve as a second eye of the radiologists. Our study consists of three steps. In the first step, spherical wavelet transform (SWT) is applied to the original ROIs. In the second step, shape, boundary and grey level based features of wavelet (detail) and scaling (approximation) coefficients are extracted. Finally, in the third step, malignant/benign classification of the masses is implemented by giving the feature matrices to a support vector machine system. The proposed system achieves 91.4% and 90.1% classification accuracy using the dataset acquired from the hospital of Istanbul University in Turkey and the free Mammographic Image Analysis Society, respectively. Furthermore, discrete wavelet transform, which produces 83.3% classification accuracy, is applied to the coefficients to make a comparison with the SWT method.
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source Wiley Online Library Journals Frontfile Complete; Business Source Complete
subjects Analysis
Breast cancer
breast mass detection
Classification
Digital imaging
Discrete Wavelet Transform
Expert systems
Feature extraction
Image analysis
Mammography
mass classification
Mathematical analysis
Medical diagnosis
Medical imaging
Medical screening
spherical wavelet transform (SWT)
Studies
support vector machine (SVM)
Support vector machines
Wavelet transforms
title Computer-aided classification of breast masses in mammogram images based on spherical wavelet transform and support vector machines
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