A New Approach for Clustered MCs Classification with Sparse Features Learning and TWSVM

In digital mammograms, an early sign of breast cancer is the existence of microcalcification clusters (MCs), which is very important to the early breast cancer detection. In this paper, a new approach is proposed to classify and detect MCs. We formulate this classification problem as sparse feature...

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Main Author: Xin-Sheng Zhang
Format: Article
Language:English
Published: Hindawi Limited 2014-01-01
Series:The Scientific World Journal
Online Access:http://dx.doi.org/10.1155/2014/970287
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spelling doaj-4acff071b46249be95e2695a05d5518d2020-11-25T02:15:35ZengHindawi LimitedThe Scientific World Journal2356-61401537-744X2014-01-01201410.1155/2014/970287970287A New Approach for Clustered MCs Classification with Sparse Features Learning and TWSVMXin-Sheng Zhang0School of Management, Xi’an University of Architecture and Technology, Xi’an, Shaanxi 710055, ChinaIn digital mammograms, an early sign of breast cancer is the existence of microcalcification clusters (MCs), which is very important to the early breast cancer detection. In this paper, a new approach is proposed to classify and detect MCs. We formulate this classification problem as sparse feature learning based classification on behalf of the test samples with a set of training samples, which are also known as a “vocabulary” of visual parts. A visual information-rich vocabulary of training samples is manually built up from a set of samples, which include MCs parts and no-MCs parts. With the prior ground truth of MCs in mammograms, the sparse feature learning is acquired by the lP-regularized least square approach with the interior-point method. Then we designed the sparse feature learning based MCs classification algorithm using twin support vector machines (TWSVMs). To investigate its performance, the proposed method is applied to DDSM datasets and compared with support vector machines (SVMs) with the same dataset. Experiments have shown that performance of the proposed method is more efficient or better than the state-of-art methods.http://dx.doi.org/10.1155/2014/970287
collection DOAJ
language English
format Article
sources DOAJ
author Xin-Sheng Zhang
spellingShingle Xin-Sheng Zhang
A New Approach for Clustered MCs Classification with Sparse Features Learning and TWSVM
The Scientific World Journal
author_facet Xin-Sheng Zhang
author_sort Xin-Sheng Zhang
title A New Approach for Clustered MCs Classification with Sparse Features Learning and TWSVM
title_short A New Approach for Clustered MCs Classification with Sparse Features Learning and TWSVM
title_full A New Approach for Clustered MCs Classification with Sparse Features Learning and TWSVM
title_fullStr A New Approach for Clustered MCs Classification with Sparse Features Learning and TWSVM
title_full_unstemmed A New Approach for Clustered MCs Classification with Sparse Features Learning and TWSVM
title_sort new approach for clustered mcs classification with sparse features learning and twsvm
publisher Hindawi Limited
series The Scientific World Journal
issn 2356-6140
1537-744X
publishDate 2014-01-01
description In digital mammograms, an early sign of breast cancer is the existence of microcalcification clusters (MCs), which is very important to the early breast cancer detection. In this paper, a new approach is proposed to classify and detect MCs. We formulate this classification problem as sparse feature learning based classification on behalf of the test samples with a set of training samples, which are also known as a “vocabulary” of visual parts. A visual information-rich vocabulary of training samples is manually built up from a set of samples, which include MCs parts and no-MCs parts. With the prior ground truth of MCs in mammograms, the sparse feature learning is acquired by the lP-regularized least square approach with the interior-point method. Then we designed the sparse feature learning based MCs classification algorithm using twin support vector machines (TWSVMs). To investigate its performance, the proposed method is applied to DDSM datasets and compared with support vector machines (SVMs) with the same dataset. Experiments have shown that performance of the proposed method is more efficient or better than the state-of-art methods.
url http://dx.doi.org/10.1155/2014/970287
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