Neural network based classification of mammographic microcalcification for breast cancer diagnosis / Nina Korlina Madzhi, Mahanijah Md Kamal and Rosni Abu Kassim

Initially, mammography images of the breast were produced using standard x-ray machine, but today, the breast is imaged on state-or-the-art machines, capable of producing fine detail with minimal exposure to the patient. In this paper, the performance of recently developed neural network structure,...

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Main Authors: Madzhi, Nina Korlina, Md Kamal, Mahanijah, Abu Kassim, Rosni
Format: Research Reports
Language:English
Published: 2006
Subjects:
Online Access:http://ir.uitm.edu.my/id/eprint/47688/1/47688.pdf
http://ir.uitm.edu.my/id/eprint/47688/
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spelling my.uitm.ir.476882021-06-18T01:32:36Z http://ir.uitm.edu.my/id/eprint/47688/ Neural network based classification of mammographic microcalcification for breast cancer diagnosis / Nina Korlina Madzhi, Mahanijah Md Kamal and Rosni Abu Kassim Madzhi, Nina Korlina Md Kamal, Mahanijah Abu Kassim, Rosni Neural networks (Computer science) Neural networks (Computer science). Data processing Computer applications to medicine. Medical informatics Initially, mammography images of the breast were produced using standard x-ray machine, but today, the breast is imaged on state-or-the-art machines, capable of producing fine detail with minimal exposure to the patient. In this paper, the performance of recently developed neural network structure, General Regression Neural Network (GRNN), was examined on the on-line Database for Screening Mammography of University of South Florida (DDSM). This is a well used database in machine learning, neural network and image processing. They are commonly used to increase the accuracy . of breast cancer diagnosis. Tn this study, first we have to carry out a preprocessing step which consists to remove or attenuate the curvilinear structures present in a mammogram and corresponding to the blood vessels, veins, milk ducts, speculations and fibrous tissue. Then the gradient of the preprocessed image is calculated and finally the data from three classes of digital mammography images were used for training and testing the approximation function of GRNN structure. The three classes consist of normal, benign and cancer cases. The accuracy performances of the three classes were achieved by using the spread value of 1.2 for each class. 2006 Research Reports NonPeerReviewed text en http://ir.uitm.edu.my/id/eprint/47688/1/47688.pdf ID47688 Madzhi, Nina Korlina and Md Kamal, Mahanijah and Abu Kassim, Rosni (2006) Neural network based classification of mammographic microcalcification for breast cancer diagnosis / Nina Korlina Madzhi, Mahanijah Md Kamal and Rosni Abu Kassim. [Research Reports] (Unpublished)
institution Universiti Teknologi Mara
building Tun Abdul Razak Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Mara
content_source UiTM Institutional Repository
url_provider http://ir.uitm.edu.my/
language English
topic Neural networks (Computer science)
Neural networks (Computer science). Data processing
Computer applications to medicine. Medical informatics
spellingShingle Neural networks (Computer science)
Neural networks (Computer science). Data processing
Computer applications to medicine. Medical informatics
Madzhi, Nina Korlina
Md Kamal, Mahanijah
Abu Kassim, Rosni
Neural network based classification of mammographic microcalcification for breast cancer diagnosis / Nina Korlina Madzhi, Mahanijah Md Kamal and Rosni Abu Kassim
description Initially, mammography images of the breast were produced using standard x-ray machine, but today, the breast is imaged on state-or-the-art machines, capable of producing fine detail with minimal exposure to the patient. In this paper, the performance of recently developed neural network structure, General Regression Neural Network (GRNN), was examined on the on-line Database for Screening Mammography of University of South Florida (DDSM). This is a well used database in machine learning, neural network and image processing. They are commonly used to increase the accuracy . of breast cancer diagnosis. Tn this study, first we have to carry out a preprocessing step which consists to remove or attenuate the curvilinear structures present in a mammogram and corresponding to the blood vessels, veins, milk ducts, speculations and fibrous tissue. Then the gradient of the preprocessed image is calculated and finally the data from three classes of digital mammography images were used for training and testing the approximation function of GRNN structure. The three classes consist of normal, benign and cancer cases. The accuracy performances of the three classes were achieved by using the spread value of 1.2 for each class.
format Research Reports
author Madzhi, Nina Korlina
Md Kamal, Mahanijah
Abu Kassim, Rosni
author_facet Madzhi, Nina Korlina
Md Kamal, Mahanijah
Abu Kassim, Rosni
author_sort Madzhi, Nina Korlina
title Neural network based classification of mammographic microcalcification for breast cancer diagnosis / Nina Korlina Madzhi, Mahanijah Md Kamal and Rosni Abu Kassim
title_short Neural network based classification of mammographic microcalcification for breast cancer diagnosis / Nina Korlina Madzhi, Mahanijah Md Kamal and Rosni Abu Kassim
title_full Neural network based classification of mammographic microcalcification for breast cancer diagnosis / Nina Korlina Madzhi, Mahanijah Md Kamal and Rosni Abu Kassim
title_fullStr Neural network based classification of mammographic microcalcification for breast cancer diagnosis / Nina Korlina Madzhi, Mahanijah Md Kamal and Rosni Abu Kassim
title_full_unstemmed Neural network based classification of mammographic microcalcification for breast cancer diagnosis / Nina Korlina Madzhi, Mahanijah Md Kamal and Rosni Abu Kassim
title_sort neural network based classification of mammographic microcalcification for breast cancer diagnosis / nina korlina madzhi, mahanijah md kamal and rosni abu kassim
publishDate 2006
url http://ir.uitm.edu.my/id/eprint/47688/1/47688.pdf
http://ir.uitm.edu.my/id/eprint/47688/
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