首页> 外文会议>Image Processing pt.2; Progress in Biomedical Optics and Imaging; vol.6 no.24 >Detection of Architectural Distortion in Mammograms Using Fractal Analysis
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Detection of Architectural Distortion in Mammograms Using Fractal Analysis

机译:分形分析法检测乳腺X线照片中的建筑变形

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Several studies have demonstrated the fractal properties of screening mammograms. The purpose of this study was to investigate fractal texture analysis for the automated detection of architectural distortion (AD) in screening mammograms. The study was based on the Digital Database for Screening Mammography (DDSM). Initially, a database of 708 mammographic regions with confirmed pathology was created. They were all 512 x 512 pixel regions of interest (ROIs). The ROI size was determined empirically. Fifty-two regions were extracted around biopsy-proven architectural distortion. The remaining 656 ROIs depicted normal breast parenchyma. Fractal analysis was performed on each ROI at multiple resolutions (512x512, 256x256, 128x128, and 64x64). The fractal dimension of each ROI was calculated using the circular average power spectrum technique. Overall, the average fractal dimension (FD) estimate of the normal ROIs was statistically significantly higher than the average FD of the ROIs with AD. This result was consistent across all resolutions. However, best detection performance was achieved when the fractal dimension was estimated on ROIs subsampled with a factor of 2 (ROC area index A_z=0.89±0.02). Specifically, there was perfect performance in fatty breasts (A_z = 1.0), A_z=0.95±0.02 in fibroglandular breasts, A_z=0.84±0.05 in heterogeneous breasts, and A_z=0.66±0.10 in dense breasts. Overall, the present study demonstrates that the presence of AD disrupts the normal parenchymal structure, thus resulting in a lower fractal dimension. Consequently, fractal texture analysis could play an important role in the development of computer-assisted detection tools tailored towards architectural distortion.
机译:多项研究证明了筛查乳房X线照片的分形特性。这项研究的目的是研究分形纹理分析,以自动检测乳房X光照片中的建筑变形(AD)。这项研究基于乳腺X线筛查数字数据库(DDSM)。最初,创建了具有确诊病理的708个乳房X线摄影区域的数据库。它们都是512 x 512像素关注区域(ROI)。 ROI大小是根据经验确定的。围绕活检证实的建筑变形提取了52个区域。其余的656个ROI表示正常的乳房实质。分形分析是在多个分辨率(512x512、256x256、128x128和64x64)下对每个ROI进行的。使用圆形平均功率谱技术计算每个ROI的分形维数。总体而言,正常ROI的平均分形维数(FD)估计值显着高于AD的ROI的平均FD。在所有决议中,此结果都是一致的。但是,当以2的因子(ROC面积指数A_z = 0.89±0.02)对二次采样的ROI进行分形维数估计时,可以获得最佳的检测性能。具体而言,脂肪性乳腺(A_z = 1.0),腓肠性乳腺A_z = 0.95±0.02,异质性乳腺A_z = 0.84±0.05,密实性乳腺A_z = 0.66±0.10表现完美。总体而言,本研究表明AD的存在会破坏正常的实质结构,从而导致较低的分形维数。因此,分形纹理分析可以在针对建筑变形量身定制的计算机辅助检测工具的开发中发挥重要作用。

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