Breast tissue removal for enhancing microcalcification cluster detection in mammograms

Wissam J. Baddar, Dae Hoe Kim, Yong Man Ro
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引用次数: 0

Abstract

In this paper, we propose a novel normal breast tissue removal approach using sparse representation (SR), in order to emphasize subtle microcalcifications (MCs) for MC cluster (MCC) detection in mammograms. The proposed method adopts SR to estimate normal breast tissue texture only; such that the difference between estimated image and the original image can emphasize subtle MCs. Comparative experiments have been conducted to validate the effectiveness of the proposed preprocessing with the publicly available DDSM database. The experimental results showed that the MCC detection performances in terms of FROC were improved with the proposed approach compared with the commonly used wavelet decomposition approach. Furthermore, the improved detection performance increases the overall performance for the malignant MCC classification.
乳腺组织切除增强乳房x光检查中的微钙化簇检测
在本文中,我们提出了一种新的正常乳腺组织去除方法,使用稀疏表示(SR)来强调乳房x线照片中细微微钙化(MCs)的检测。该方法仅采用SR估计正常乳腺组织纹理;这样,估计图像与原始图像之间的差异可以强调细微的mc。通过与现有DDSM数据库的对比实验,验证了该预处理方法的有效性。实验结果表明,与常用的小波分解方法相比,该方法在FROC方面的MCC检测性能得到了提高。此外,改进的检测性能提高了恶性MCC分类的整体性能。
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