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首页> 外文期刊>Computational and mathematical methods in medicine >Computer Aided Detection of Breast Density and Mass, and Visualization of Other Breast Anatomical Regions on Mammograms Using Graph Cuts
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Computer Aided Detection of Breast Density and Mass, and Visualization of Other Breast Anatomical Regions on Mammograms Using Graph Cuts

机译:计算机辅助检测乳房密度和质量,以及使用图形切割的乳房X线图上的其他乳房解剖区域的可视化

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Breast cancer mostly arises from the glandular (dense) region of the breast. Consequently, breast density has been found to be a strong indicator for breast cancer risk. Therefore, there is a need to develop a system which can segment or classify dense breast areas. In a dense breast, the sensitivity of mammography for the early detection of breast cancer is reduced. It is difficult to detect a mass in a breast that is dense. Therefore, a computerized method to separate the existence of a mass from the glandular tissues becomes an important task. Moreover, if the segmentation results provide more precise demarcation enabling the visualization of the breast anatomical regions, it could also assist in the detection of architectural distortion or asymmetry. This study attempts to segment the dense areas of the breast and the existence of a mass and to visualize other breast regions (skin-air interface, uncompressed fat, compressed fat, and glandular) in a system. The graph cuts (GC) segmentation technique is proposed. Multiselection of seed labels has been chosen to provide the hard constraint for segmentation of the different parts. The results are promising. A strong correlation (r=0.93) was observed between the segmented dense breast areas detected and radiological ground truth.
机译:乳腺癌主要来自乳腺的腺体(致密)。因此,已发现乳腺密度是乳腺癌风险的强烈指标。因此,需要开发一种可以分割或分类密集乳房区域的系统。在密集的乳房中,减少了乳腺癌早期检测乳腺癌的敏感性。难以检测密集的乳房中的质量。因此,将来自腺体组织的质量分离的计算机化方法成为重要任务。此外,如果分段结果提供更精确的分界,则可以帮助检测建筑失真或不对称性。本研究试图将乳房的密集区域和质量的存在分段并在系统中可视化其他乳房区(皮肤界面,未压缩的脂肪,压缩脂肪和腺体)。提出了曲线图(GC)分段技术。已经选择了种子标签的多相关,以提供不同部位的分割的难度约束。结果是有前途的。在检测到的分段密集的乳房区域和放射性地理论之间观察到强烈的相关性(R = 0.93)。

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