Computer aided detection and diagnosis for breast Cancer images / Aminah Abdul Malek ... [et al.]
Breast cancer detection is critically depending on early and accurate diagnosis. Machine learning technique can enhance the level of detection and classification of breast cancer images. Normally, radiologist will look at the potential abnormalities in mammogram and ultrasound images. However, the i...
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my.uitm.ir.698842022-12-05T08:25:51Z https://ir.uitm.edu.my/id/eprint/69884/ Computer aided detection and diagnosis for breast Cancer images / Aminah Abdul Malek ... [et al.] Abdul Malek, Aminah Mohamed, Norlyda Mohd Zaki, Noor Hidayah Mohd Amin, Farah Azaliney Udin, Md Nizam Shahril, Rahmah Selamat, Mat Salim Computer applications to medicine. Medical informatics Cancer Examination. Diagnosis. Including radiography Breast cancer detection is critically depending on early and accurate diagnosis. Machine learning technique can enhance the level of detection and classification of breast cancer images. Normally, radiologist will look at the potential abnormalities in mammogram and ultrasound images. However, the images are low in contrast and the features indicative of abnormalities are very subtle. Hence, it gives difficulties for radiologist to interpret those images. Therefore, in order to assist radiologist, a Computer Aided Detection and Diagnosis (CADx) is developed. This platform used Seed Based Region Growing (SBRG) as a segmentation technique for extracting a region of the images. For further analysis of the mammogram images, the classification platform was also developed using Enhanced Support Vector Machine (ESVM) that combines Discrete Wavelet Transform (DWT) and Principal Component Analysis (PCA) methods. The outcomes of this project can help the radiologists by marking the exact location of abnormalities and it is able to differentiate between benign or malignant tumor. 2020 Conference or Workshop Item PeerReviewed text en https://ir.uitm.edu.my/id/eprint/69884/2/69884.pdf Computer aided detection and diagnosis for breast Cancer images / Aminah Abdul Malek ... [et al.]. (2020) In: UNSPECIFIED. |
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Computer applications to medicine. Medical informatics Cancer Examination. Diagnosis. Including radiography Abdul Malek, Aminah Mohamed, Norlyda Mohd Zaki, Noor Hidayah Mohd Amin, Farah Azaliney Udin, Md Nizam Shahril, Rahmah Selamat, Mat Salim Computer aided detection and diagnosis for breast Cancer images / Aminah Abdul Malek ... [et al.] |
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Breast cancer detection is critically depending on early and accurate diagnosis. Machine learning technique can enhance the level of detection and classification of breast cancer images. Normally, radiologist will look at the potential abnormalities in mammogram and ultrasound images. However, the images are low in contrast and the features indicative of abnormalities are very subtle. Hence, it gives difficulties for radiologist to interpret those images. Therefore, in order to assist radiologist, a Computer Aided Detection and Diagnosis (CADx) is developed. This platform used Seed Based Region Growing (SBRG) as a segmentation technique for extracting a region of the images. For further analysis of the mammogram images, the classification platform was also developed using Enhanced Support Vector Machine (ESVM) that combines Discrete Wavelet Transform (DWT) and Principal Component Analysis (PCA) methods. The outcomes of this project can help the radiologists by marking the exact location of abnormalities and it is able to differentiate between benign or malignant tumor. |
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Conference or Workshop Item |
author |
Abdul Malek, Aminah Mohamed, Norlyda Mohd Zaki, Noor Hidayah Mohd Amin, Farah Azaliney Udin, Md Nizam Shahril, Rahmah Selamat, Mat Salim |
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Abdul Malek, Aminah Mohamed, Norlyda Mohd Zaki, Noor Hidayah Mohd Amin, Farah Azaliney Udin, Md Nizam Shahril, Rahmah Selamat, Mat Salim |
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Abdul Malek, Aminah |
title |
Computer aided detection and diagnosis for breast Cancer images / Aminah Abdul Malek ... [et al.] |
title_short |
Computer aided detection and diagnosis for breast Cancer images / Aminah Abdul Malek ... [et al.] |
title_full |
Computer aided detection and diagnosis for breast Cancer images / Aminah Abdul Malek ... [et al.] |
title_fullStr |
Computer aided detection and diagnosis for breast Cancer images / Aminah Abdul Malek ... [et al.] |
title_full_unstemmed |
Computer aided detection and diagnosis for breast Cancer images / Aminah Abdul Malek ... [et al.] |
title_sort |
computer aided detection and diagnosis for breast cancer images / aminah abdul malek ... [et al.] |
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2020 |
url |
https://ir.uitm.edu.my/id/eprint/69884/2/69884.pdf https://ir.uitm.edu.my/id/eprint/69884/ |
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