Fully automated computer-aided diagnosis system for micro calcifications cancer based on improved mammographic image techniques
Computer-aided diagnosis (CAD) approach is presented as strong frameworks to solve the inaccuracy problems. The major purpose of this paper is to improve a CAD system depended on supervised classification that can be useful in diagnosing and detecting the changes of breast cancers in digitized mammo...
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doaj-a9b966df9bc44bf0b08b8764d276df532021-06-02T03:46:07ZengElsevierAin Shams Engineering Journal2090-44792019-09-01103517527Fully automated computer-aided diagnosis system for micro calcifications cancer based on improved mammographic image techniquesMai S. Mabrouk0Heba M. Afify1Samir Y. Marzouk2Department of Biomedical Engineering, MUST University, Egypt; Corresponding author.Department of Bioelectronics Engineering, MTI University, EgyptDepartement of Basic and Applied Science, Arab Academy of Science and Technology, EgyptComputer-aided diagnosis (CAD) approach is presented as strong frameworks to solve the inaccuracy problems. The major purpose of this paper is to improve a CAD system depended on supervised classification that can be useful in diagnosing and detecting the changes of breast cancers in digitized mammograms earlier, accurately and faster than standard examination programs by applying CAD according to image processing techniques beginning with preprocessing step, segmentation, feature extraction and finally classification stage. The work presented in this study is based on the integration of different features such as shape, texture and invariant moment features. This integration achieved best results for sensitivity and specificity rather than using the one type of features in breast cancer classification. The accuracy of our integration system reached 96% in the automatic mode of ANN while best accuracy accomplished by features result according to invariant moments that reached 97% by ANN in an automatic way. Keywords: Computer-aided diagnosis (CAD), Mammograms, K-nearest neighbor classifier (KNN), Support vector machine (SVM), Artificial neural network (ANN)http://www.sciencedirect.com/science/article/pii/S209044791930036X |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Mai S. Mabrouk Heba M. Afify Samir Y. Marzouk |
spellingShingle |
Mai S. Mabrouk Heba M. Afify Samir Y. Marzouk Fully automated computer-aided diagnosis system for micro calcifications cancer based on improved mammographic image techniques Ain Shams Engineering Journal |
author_facet |
Mai S. Mabrouk Heba M. Afify Samir Y. Marzouk |
author_sort |
Mai S. Mabrouk |
title |
Fully automated computer-aided diagnosis system for micro calcifications cancer based on improved mammographic image techniques |
title_short |
Fully automated computer-aided diagnosis system for micro calcifications cancer based on improved mammographic image techniques |
title_full |
Fully automated computer-aided diagnosis system for micro calcifications cancer based on improved mammographic image techniques |
title_fullStr |
Fully automated computer-aided diagnosis system for micro calcifications cancer based on improved mammographic image techniques |
title_full_unstemmed |
Fully automated computer-aided diagnosis system for micro calcifications cancer based on improved mammographic image techniques |
title_sort |
fully automated computer-aided diagnosis system for micro calcifications cancer based on improved mammographic image techniques |
publisher |
Elsevier |
series |
Ain Shams Engineering Journal |
issn |
2090-4479 |
publishDate |
2019-09-01 |
description |
Computer-aided diagnosis (CAD) approach is presented as strong frameworks to solve the inaccuracy problems. The major purpose of this paper is to improve a CAD system depended on supervised classification that can be useful in diagnosing and detecting the changes of breast cancers in digitized mammograms earlier, accurately and faster than standard examination programs by applying CAD according to image processing techniques beginning with preprocessing step, segmentation, feature extraction and finally classification stage. The work presented in this study is based on the integration of different features such as shape, texture and invariant moment features. This integration achieved best results for sensitivity and specificity rather than using the one type of features in breast cancer classification. The accuracy of our integration system reached 96% in the automatic mode of ANN while best accuracy accomplished by features result according to invariant moments that reached 97% by ANN in an automatic way. Keywords: Computer-aided diagnosis (CAD), Mammograms, K-nearest neighbor classifier (KNN), Support vector machine (SVM), Artificial neural network (ANN) |
url |
http://www.sciencedirect.com/science/article/pii/S209044791930036X |
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