Application of Semi-supervised Fuzzy Clustering Based on Knowledge Weighting and Cluster Center Learning to Mammary Molybdenum Target Image Segmentation

Breast cancer is commonly diagnosed with mammography. Using image segmentation algorithms to separate lesion areas in mammography can facilitate diagnosis by doctors and reduce their workload, which has important clinical significance. Because large, accurately labeled medical image datasets are dif...

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Main Authors: Peng, Peng, Wu, Danping, Huang, Li-Jun, Wang, Jianqiang, Zhang, Li, Wu, Yue, Jiang, Yizhang, Lu, Zhihua, Lai, Khin Wee, Xia, Kaijian
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Published: Springer Heidelberg 2024
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Online Access:http://eprints.um.edu.my/46033/
https://doi.org/10.1007/s12539-023-00580-0
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spelling my.um.eprints.460332024-11-15T01:29:51Z http://eprints.um.edu.my/46033/ Application of Semi-supervised Fuzzy Clustering Based on Knowledge Weighting and Cluster Center Learning to Mammary Molybdenum Target Image Segmentation Peng, Peng Wu, Danping Huang, Li-Jun Wang, Jianqiang Zhang, Li Wu, Yue Jiang, Yizhang Lu, Zhihua Lai, Khin Wee Xia, Kaijian R Medicine (General) T Technology (General) Breast cancer is commonly diagnosed with mammography. Using image segmentation algorithms to separate lesion areas in mammography can facilitate diagnosis by doctors and reduce their workload, which has important clinical significance. Because large, accurately labeled medical image datasets are difficult to obtain, traditional clustering algorithms are widely used in medical image segmentation as an unsupervised model. Traditional unsupervised clustering algorithms have limited learning knowledge. Moreover, some semi-supervised fuzzy clustering algorithms cannot fully mine the information of labeled samples, which results in insufficient supervision. When faced with complex mammography images, the above algorithms cannot accurately segment lesion areas. To address this, a semi-supervised fuzzy clustering based on knowledge weighting and cluster center learning (WSFCM_V) is presented. According to prior knowledge, three learning modes are proposed: a knowledge weighting method for cluster centers, Euclidean distance weights for unlabeled samples, and learning from the cluster centers of labeled sample sets. These strategies improve the clustering performance. On real breast molybdenum target images, the WSFCM_V algorithm is compared with currently popular semi-supervised and unsupervised clustering algorithms. WSFCM_V has the best evaluation index values. Experimental results demonstrate that compared with the existing clustering algorithms, WSFCM_V has a higher segmentation accuracy than other clustering algorithms, both for larger lesion regions like tumor areas and for smaller lesion areas like calcification point areas. Springer Heidelberg 2024-03 Article PeerReviewed Peng, Peng and Wu, Danping and Huang, Li-Jun and Wang, Jianqiang and Zhang, Li and Wu, Yue and Jiang, Yizhang and Lu, Zhihua and Lai, Khin Wee and Xia, Kaijian (2024) Application of Semi-supervised Fuzzy Clustering Based on Knowledge Weighting and Cluster Center Learning to Mammary Molybdenum Target Image Segmentation. Interdisciplinary Sciences-Computational Life Sciences, 16 (1). pp. 39-57. ISSN 1913-2751, DOI https://doi.org/10.1007/s12539-023-00580-0 <https://doi.org/10.1007/s12539-023-00580-0>. https://doi.org/10.1007/s12539-023-00580-0 10.1007/s12539-023-00580-0
institution Universiti Malaya
building UM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Malaya
content_source UM Research Repository
url_provider http://eprints.um.edu.my/
topic R Medicine (General)
T Technology (General)
spellingShingle R Medicine (General)
T Technology (General)
Peng, Peng
Wu, Danping
Huang, Li-Jun
Wang, Jianqiang
Zhang, Li
Wu, Yue
Jiang, Yizhang
Lu, Zhihua
Lai, Khin Wee
Xia, Kaijian
Application of Semi-supervised Fuzzy Clustering Based on Knowledge Weighting and Cluster Center Learning to Mammary Molybdenum Target Image Segmentation
description Breast cancer is commonly diagnosed with mammography. Using image segmentation algorithms to separate lesion areas in mammography can facilitate diagnosis by doctors and reduce their workload, which has important clinical significance. Because large, accurately labeled medical image datasets are difficult to obtain, traditional clustering algorithms are widely used in medical image segmentation as an unsupervised model. Traditional unsupervised clustering algorithms have limited learning knowledge. Moreover, some semi-supervised fuzzy clustering algorithms cannot fully mine the information of labeled samples, which results in insufficient supervision. When faced with complex mammography images, the above algorithms cannot accurately segment lesion areas. To address this, a semi-supervised fuzzy clustering based on knowledge weighting and cluster center learning (WSFCM_V) is presented. According to prior knowledge, three learning modes are proposed: a knowledge weighting method for cluster centers, Euclidean distance weights for unlabeled samples, and learning from the cluster centers of labeled sample sets. These strategies improve the clustering performance. On real breast molybdenum target images, the WSFCM_V algorithm is compared with currently popular semi-supervised and unsupervised clustering algorithms. WSFCM_V has the best evaluation index values. Experimental results demonstrate that compared with the existing clustering algorithms, WSFCM_V has a higher segmentation accuracy than other clustering algorithms, both for larger lesion regions like tumor areas and for smaller lesion areas like calcification point areas.
format Article
author Peng, Peng
Wu, Danping
Huang, Li-Jun
Wang, Jianqiang
Zhang, Li
Wu, Yue
Jiang, Yizhang
Lu, Zhihua
Lai, Khin Wee
Xia, Kaijian
author_facet Peng, Peng
Wu, Danping
Huang, Li-Jun
Wang, Jianqiang
Zhang, Li
Wu, Yue
Jiang, Yizhang
Lu, Zhihua
Lai, Khin Wee
Xia, Kaijian
author_sort Peng, Peng
title Application of Semi-supervised Fuzzy Clustering Based on Knowledge Weighting and Cluster Center Learning to Mammary Molybdenum Target Image Segmentation
title_short Application of Semi-supervised Fuzzy Clustering Based on Knowledge Weighting and Cluster Center Learning to Mammary Molybdenum Target Image Segmentation
title_full Application of Semi-supervised Fuzzy Clustering Based on Knowledge Weighting and Cluster Center Learning to Mammary Molybdenum Target Image Segmentation
title_fullStr Application of Semi-supervised Fuzzy Clustering Based on Knowledge Weighting and Cluster Center Learning to Mammary Molybdenum Target Image Segmentation
title_full_unstemmed Application of Semi-supervised Fuzzy Clustering Based on Knowledge Weighting and Cluster Center Learning to Mammary Molybdenum Target Image Segmentation
title_sort application of semi-supervised fuzzy clustering based on knowledge weighting and cluster center learning to mammary molybdenum target image segmentation
publisher Springer Heidelberg
publishDate 2024
url http://eprints.um.edu.my/46033/
https://doi.org/10.1007/s12539-023-00580-0
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score 13.214268