Examination of mammogram image classification using fuzzy co-occurrence matrix

© 2015 by Ceser Publications. Breast cancer is one of the leading causes of mortality in women. Detection in earlier stage can help reduce the mortality rate. We develop a breast abnormalities detection system to help radiologists. The abnormalities considered are calcification (CALC), well-defined/...

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Main Authors: Y. Munklang, S. Auephanwiriyakul, N. Theera-Umpon
Format: Journal
Published: 2018
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http://cmuir.cmu.ac.th/jspui/handle/6653943832/54368
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Institution: Chiang Mai University
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spelling th-cmuir.6653943832-543682018-09-04T10:22:41Z Examination of mammogram image classification using fuzzy co-occurrence matrix Y. Munklang S. Auephanwiriyakul N. Theera-Umpon Computer Science Medicine © 2015 by Ceser Publications. Breast cancer is one of the leading causes of mortality in women. Detection in earlier stage can help reduce the mortality rate. We develop a breast abnormalities detection system to help radiologists. The abnormalities considered are calcification (CALC), well-defined/circumscribed masses (CIRC), spiculated masses (SPIC), and architectural distortion (AD). The fuzzy co-occurrence matrix is utilized to generate 14 features in our system. We also utilized multi-class support vector machine with oneversus- all strategy as a classifier. The feature set generated from the gray level cooccurrence matrix is also used for the purpose of comparison. We found out that the features extracted from our fuzzy co-occurrence matrix have a better performance than those from the regular gray level co-occurrence matrix. The best blind test data set results for AD, SPIC, CALC, and CIRC detection from the feature set generated from our fuzzy co-occurrence matrix are 100% with 9.46 false positives per image (FPI), 90% with 13.72 FPI, 100% with 3.39 FPI, and 81.25% with 18 FPI, respectively. While those for AD, SPIC, CALC, and CIRC detection from the feature set extracted from the gray level co-occurrence matrix are 100% with 9.46 FPI, 70% with 4.45 FPI, 89.47% with 10.81 FPI, and 68.75% with 6.78 FPI, respectively. Our system performs better than other existing methods in AD and CALC detection. The result from our system is comparable with those methods in SPIC and CIRC detection. However, there is no preprocessing or ROI selection in our system at all. 2018-09-04T10:12:30Z 2018-09-04T10:12:30Z 2015-01-01 Journal 23193336 2-s2.0-84943238081 https://www.scopus.com/inward/record.uri?partnerID=HzOxMe3b&scp=84943238081&origin=inward http://cmuir.cmu.ac.th/jspui/handle/6653943832/54368
institution Chiang Mai University
building Chiang Mai University Library
country Thailand
collection CMU Intellectual Repository
topic Computer Science
Medicine
spellingShingle Computer Science
Medicine
Y. Munklang
S. Auephanwiriyakul
N. Theera-Umpon
Examination of mammogram image classification using fuzzy co-occurrence matrix
description © 2015 by Ceser Publications. Breast cancer is one of the leading causes of mortality in women. Detection in earlier stage can help reduce the mortality rate. We develop a breast abnormalities detection system to help radiologists. The abnormalities considered are calcification (CALC), well-defined/circumscribed masses (CIRC), spiculated masses (SPIC), and architectural distortion (AD). The fuzzy co-occurrence matrix is utilized to generate 14 features in our system. We also utilized multi-class support vector machine with oneversus- all strategy as a classifier. The feature set generated from the gray level cooccurrence matrix is also used for the purpose of comparison. We found out that the features extracted from our fuzzy co-occurrence matrix have a better performance than those from the regular gray level co-occurrence matrix. The best blind test data set results for AD, SPIC, CALC, and CIRC detection from the feature set generated from our fuzzy co-occurrence matrix are 100% with 9.46 false positives per image (FPI), 90% with 13.72 FPI, 100% with 3.39 FPI, and 81.25% with 18 FPI, respectively. While those for AD, SPIC, CALC, and CIRC detection from the feature set extracted from the gray level co-occurrence matrix are 100% with 9.46 FPI, 70% with 4.45 FPI, 89.47% with 10.81 FPI, and 68.75% with 6.78 FPI, respectively. Our system performs better than other existing methods in AD and CALC detection. The result from our system is comparable with those methods in SPIC and CIRC detection. However, there is no preprocessing or ROI selection in our system at all.
format Journal
author Y. Munklang
S. Auephanwiriyakul
N. Theera-Umpon
author_facet Y. Munklang
S. Auephanwiriyakul
N. Theera-Umpon
author_sort Y. Munklang
title Examination of mammogram image classification using fuzzy co-occurrence matrix
title_short Examination of mammogram image classification using fuzzy co-occurrence matrix
title_full Examination of mammogram image classification using fuzzy co-occurrence matrix
title_fullStr Examination of mammogram image classification using fuzzy co-occurrence matrix
title_full_unstemmed Examination of mammogram image classification using fuzzy co-occurrence matrix
title_sort examination of mammogram image classification using fuzzy co-occurrence matrix
publishDate 2018
url https://www.scopus.com/inward/record.uri?partnerID=HzOxMe3b&scp=84943238081&origin=inward
http://cmuir.cmu.ac.th/jspui/handle/6653943832/54368
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