Curvelet based texture features for breast cancer classifications

One of the sources of death among women is breast cancer. It is well known that Mammogram is the best method for breast cancer detection. Subsequently, there are solid requirements for the improvement of computer aided diagnosis (CAD) systems to assist radiologists in making decision. In this paper,...

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Main Authors: Yasiran, Siti Salmah, Salleh, Shaharuddin, Sarmin, Norhaniza, Mahmud, Rozi, Abd Halim, Suhaila
Format: Article
Published: IOP Publishing 2021
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author Yasiran, Siti Salmah
Salleh, Shaharuddin
Sarmin, Norhaniza
Mahmud, Rozi
Abd Halim, Suhaila
author_facet Yasiran, Siti Salmah
Salleh, Shaharuddin
Sarmin, Norhaniza
Mahmud, Rozi
Abd Halim, Suhaila
author_sort Yasiran, Siti Salmah
collection UPM
description One of the sources of death among women is breast cancer. It is well known that Mammogram is the best method for breast cancer detection. Subsequently, there are solid requirements for the improvement of computer aided diagnosis (CAD) systems to assist radiologists in making decision. In this paper, the curvelet changes is proposed to classify the breast cancer. Curvelet refers to multi-level change which have the characteristics of directionality and anisotropy. It splits several characteristic impediments of wavelet to edges of an image. Two component extraction techniques were created associated with curvelet and wavelet coefficients to separate among various classes of breast. Finally, the K-Nearest Neighbor (KNN) classifiers were utilized to decide if the district is unusual or ordinary. The adequacy of the suggested strategies has been implemented with Mammographic Image Analysis Society (MIAS) data images. All the dataset is utilized by the suggested strategies. Then calculations have been applied with both curvelet and wavelet for correlation test were performed. The general outcomes show that curvelet change shows superior compared to the wavelet and the thing that matters is measurably noteworthy.
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institution Universiti Putra Malaysia
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spelling upm.eprints-965852023-01-11T08:22:39Z http://psasir.upm.edu.my/id/eprint/96585/ Curvelet based texture features for breast cancer classifications Yasiran, Siti Salmah Salleh, Shaharuddin Sarmin, Norhaniza Mahmud, Rozi Abd Halim, Suhaila One of the sources of death among women is breast cancer. It is well known that Mammogram is the best method for breast cancer detection. Subsequently, there are solid requirements for the improvement of computer aided diagnosis (CAD) systems to assist radiologists in making decision. In this paper, the curvelet changes is proposed to classify the breast cancer. Curvelet refers to multi-level change which have the characteristics of directionality and anisotropy. It splits several characteristic impediments of wavelet to edges of an image. Two component extraction techniques were created associated with curvelet and wavelet coefficients to separate among various classes of breast. Finally, the K-Nearest Neighbor (KNN) classifiers were utilized to decide if the district is unusual or ordinary. The adequacy of the suggested strategies has been implemented with Mammographic Image Analysis Society (MIAS) data images. All the dataset is utilized by the suggested strategies. Then calculations have been applied with both curvelet and wavelet for correlation test were performed. The general outcomes show that curvelet change shows superior compared to the wavelet and the thing that matters is measurably noteworthy. IOP Publishing 2021 Article PeerReviewed Yasiran, Siti Salmah and Salleh, Shaharuddin and Sarmin, Norhaniza and Mahmud, Rozi and Abd Halim, Suhaila (2021) Curvelet based texture features for breast cancer classifications. Journal of Physics Conference Series, 1988. pp. 1-12. ISSN 1742-6588; ESSN: 1742-6596 https://iopscience.iop.org/article/10.1088/1742-6596/1988/1/012037 10.1088/1742-6596/1988/1/012037
spellingShingle Yasiran, Siti Salmah
Salleh, Shaharuddin
Sarmin, Norhaniza
Mahmud, Rozi
Abd Halim, Suhaila
Curvelet based texture features for breast cancer classifications
title Curvelet based texture features for breast cancer classifications
title_full Curvelet based texture features for breast cancer classifications
title_fullStr Curvelet based texture features for breast cancer classifications
title_full_unstemmed Curvelet based texture features for breast cancer classifications
title_short Curvelet based texture features for breast cancer classifications
title_sort curvelet based texture features for breast cancer classifications
work_keys_str_mv AT yasiransitisalmah curveletbasedtexturefeaturesforbreastcancerclassifications
AT sallehshaharuddin curveletbasedtexturefeaturesforbreastcancerclassifications
AT sarminnorhaniza curveletbasedtexturefeaturesforbreastcancerclassifications
AT mahmudrozi curveletbasedtexturefeaturesforbreastcancerclassifications
AT abdhalimsuhaila curveletbasedtexturefeaturesforbreastcancerclassifications