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首页> 外文期刊>Computer Vision, IET >Superpixel texture analysis for classification of breast masses in dense background
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Superpixel texture analysis for classification of breast masses in dense background

机译:超像素纹理分析在密集背景下对乳房肿块进行分类

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Finding masses in dense background is a difficult task for even experienced radiologist. It is due to the similarity of intensity between the masses and the overlapped normal dense tissues. A novel method for classification of masses localised in dense background of breast is proposed. Nine structured superpixel patterns were generated using local binary pattern technique on superpixels. Analysis of these nine structured superpixel patterns revealed the most prominent ones, allowing for successful classification of malignant masses and normal dense breast regions. Two mammographic databases were used to evaluate the proposed approach: the publicly available digital database for screening mammography (DDSM), and a local database of mammograms (BreastScreen SA, BSSA). A total of 525 regions of interest (ROIs) were used (301 extracted from DDSM and 224 from BSSA). All 525 ROIs were localised in dense backgrounds of breasts. The results indicate that features generated from structured superpixel patterns can produce very effective and efficient texture descriptors of breast masses localised in dense background. Using Fisher linear discriminant analysis classifier, an area under the receiver operating characteristic curve score of 0.96 was achieved for DDSM and 0.93 for BSSA with only six features.
机译:即使是经验丰富的放射线医师,要在密集的背景下寻找肿块也是一项艰巨的任务。这是由于肿块和重叠的正常致密组织之间的强度相似。提出了一种新的分类方法,用于对乳腺密集背景中的肿块进行分类。使用局部像素图案技术在超像素上生成了九个结构化的超像素图案。对这九种结构化的超像素图案的分析显示出最突出的图案,从而可以成功分类恶性肿块和正常的密集乳房区域。使用了两个乳腺X线摄影数据库来评估所提议的方法:用于乳腺X线摄影的公众数字数据库(DDSM)和乳腺X线摄影的本地数据库(BreastScreen SA,BSSA)。总共使用了525个感兴趣区域(ROI)(从DDSM中提取了301个区域,从BSSA中提取了224个区域)。所有525个ROI都位于乳房的密集背景中。结果表明,从结构化超像素图案生成的特征可以产生非常有效的乳房密集区域局部纹理描述符。使用Fisher线性判别分析分类器,仅具有六个功能,DDSM的接收器工作特性曲线得分低于0.96,BSSA的接收器工作特性曲线得分低于0.93。

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