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首页> 外文期刊>Medical Physics >Dynamic multiple thresholding breast boundary detection algorithm for mammograms.
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Dynamic multiple thresholding breast boundary detection algorithm for mammograms.

机译:动态多阈值乳房X光检查的乳房边界检测算法。

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摘要

PURPOSE: Automated detection of breast boundary is one of the fundamental steps for computer-aided analysis of mammograms. In this study, the authors developed a new dynamic multiple thresholding based breast boundary (MTBB) detection method for digitized mammograms. METHODS: A large data set of 716 screen-film mammograms (442 CC view and 274 MLO view) obtained from consecutive cases of an Institutional Review Board approved project were used. An experienced breast radiologist manually traced the breast boundary on each digitized image using a graphical interface to provide a reference standard. The initial breast boundary (MTBB-Initial) was obtained by dynamically adapting the threshold to the gray level range in local regions of the breast periphery. The initial breast boundary was then refined by using gradient information from horizontal and vertical Sobel filtering to obtain the final breast boundary (MTBB-Final). The accuracy of the breast boundary detection algorithm was evaluated by comparison with the reference standard using three performance metrics: The Hausdorff distance (HDist), the average minimum Euclidean distance (AMinDist), and the area overlap measure (AOM). RESULTS: In comparison with the authors' previously developed gradient-based breast boundary (GBB) algorithm, it was found that 68%, 85%, and 94% of images had HDist errors less than 6 pixels (4.8 mm) for GBB, MTBB-Initial, and MTBB-Final, respectively. 89%, 90%, and 96% of images had AMinDist errors less than 1.5 pixels (1.2 mm) for GBB, MTBB-Initial, and MTBB-Final, respectively. 96%, 98%, and 99% of images had AOM values larger than 0.9 for GBB, MTBB-Initial, and MTBB-Final, respectively. The improvement by the MTBB-Final method was statistically significant for all the evaluation measures by the Wilcoxon signed rank test (p < 0.0001). CONCLUSIONS: The MTBB approach that combined dynamic multiple thresholding and gradient information provided better performance than the breast boundary detection algorithm that mainly used gradient information.
机译:目的:自动检测乳房边界是计算机辅助乳房X线照片分析的基本步骤之一。在这项研究中,作者开发了一种新的基于动态多阈值的乳腺边界(MTBB)检测方法,用于数字化乳腺X线照片。方法:使用从机构审查委员会批准的项目的连续案例中获得的716幅胶片X线乳房X线照片的大数据集(442 CC视图和274 MLO视图)。经验丰富的乳腺放射科医生使用图形界面手动跟踪每个数字化图像上的乳腺边界,以提供参考标准。初始乳房边界(MTBB-Initial)是通过使阈值动态适应乳房外围局部区域的灰度范围而获得的。然后,通过使用来自水平和垂直Sobel滤波的梯度信息来优化初始乳房边界,以获得最终乳房边界(MTBB-Final)。通过使用三个性能指标与参考标准进行比较,评估了乳房边界检测算法的准确性:Hausdorff距离(HDist),平均最小欧几里得距离(AMinDist)和区域重叠量度(AOM)。结果:与作者先前开发的基于梯度的乳房边界(GBB)算法相比,发现68%,85%和94%的图像对于GBB,MTBB的HDist误差小于6个像素(4.8毫米) -Initial和MTBB-Final。对于GBB,MTBB-Initial和MTBB-Final,分别有89%,90%和96%的图像的AMinDist误差小于1.5像素(1.2毫米)。对于GBB,MTBB-Initial和MTBB-Final,分别有96%,98%和99%的AOM值大于0.9。对于通过Wilcoxon符号秩检验进行的所有评估措施,MTBB-Final方法的改进在统计学上具有显着意义(p <0.0001)。结论:结合了动态多重阈值和梯度信息的MTBB方法比主要使用梯度信息的乳房边界检测算法具有更好的性能。

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