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首页> 外文期刊>Computerized Medical Imaging and Graphics: The Official Jounal of the Computerized Medical Imaging Society >A computer-aided detection of the architectural distortion in digital mammograms using the fractal dimension measurements of BEMD
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A computer-aided detection of the architectural distortion in digital mammograms using the fractal dimension measurements of BEMD

机译:使用BEMD分形尺寸测量的数字乳房X线图中的计算机辅助检测架构失真

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Achieving a high performance for the detection and characterization of architectural distortion in screening mammograms is important for an efficient breast cancer early detection. Viewing a mammogram image as a rough surface that can be described using the fractal theory is a well-recognized approach. This paper presents a new fractal-based computer-aided detection (CAD) algorithm for characterizing various breast tissues in screening mammograms with a particular focus on distinguishing between architectural distortion and normal breast parenchyma. The proposed approach is based on two underlying assumptions: (i) monitoring the variation pattern of fractal dimension, with the changes of the image resolution, is a useful tool to distinguish textural patterns of breast tissue, (ii) the bidimensional empirical mode decomposition (BEMD) algorithm appropriately generates a multiresolution representation of the mammogram. The proposed CAD has been tested using different validation datasets of mammographic regions of interest (ROls) extracted from the Digital Database for Screening Mammography (DDSM) database. The validation ROI datasets contain architectural distortion (AD), normal breast tissue, and AD surrounding tissue. The highest classification performance, in terms of area under the receiver operating characteristic curve, of Az = 0.95 was achieved when the proposed approach applied to distinguish 187 architectural distortion depicting regions from 2191 normal breast parenchyma regions. The obtained results validate the underlying hypothesis and demonstrate that effectiveness of capturing the variation of the fractal dimension measurements within an appropriate multiscale representation of the digital mammogram. Results also reveal that this tool has the potential of prescreening other key and common mammographic signs of early breast cancer.
机译:在筛选乳房X线照片中实现高性能的筛选和表征建筑失真对于有效的乳腺癌早期检测是重要的。将乳房图图像视为可以使用分形理论描述的粗糙表面是一种公认​​的方法。本文介绍了一种新的基于分形的计算机辅助检测(CAD)算法,用于表征各种乳房组织在筛选乳房X线图中,特别关注区分架构变形和正常乳房实质。所提出的方法基于两个潜在的假设:(i)监测分形维数的变化模式,随着图像分辨率的变化,是区分乳腺组织的纹理模式的有用工具,(ii)竞争经验模式分解( BEMD)算法适当地产生乳房图的多分辨率表示。已经使用从数字数据库中提取的乳房X线图(ROL)的乳房X线图(ROL)的不同验证数据集进行了测试,用于筛选乳房X线摄影(DDSM)数据库。验证ROI数据集包含架构失真(AD),正常乳房组织和周围组织的广告。当所提出的方法应用于区分从2191正常乳房实质区域的区域的拟议方法时,实现了AZ = 0.95的接收器操作特性曲线下的区域的最高分类性能。所获得的结果验证了潜在的假设,并证明了在数字乳房X光图的适当多尺度表示中捕获分数尺寸测量变化的有效性。结果还表明,该工具具有预先筛选早期乳腺癌的其他关键和常见乳房迹象的潜力。

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