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Dependence of Shape-Based Descriptors and Mass Segmentation Areas on Initial Contour Placement Using the Chan-Vese Method on Digital Mammograms

机译:基于形状的描述符和质量分割区域在数字乳房X线照片上使用Chan-Vese方法对初始轮廓放置的依赖性

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摘要

Variation in signal intensity within mass lesions and missing boundary information are intensity inhomogeneities inherent in digital mammograms. These inhomogeneities render the performance of a deformable contour susceptible to the location of its initial position and may lead to poor segmentation results for these images. We investigate the dependence of shape-based descriptors and mass segmentation areas on initial contour placement with the Chan-Vese segmentation method and compare these results to the active contours with selective local or global segmentation model. For each mass lesion, final contours were obtained by propagation of a proposed initial level set contour and by propagation of a manually drawn contour enclosing the region of interest. Differences in shape-based descriptors were quantified using absolute percentage differences, Euclidean distances, and Bland-Altman analysis. Segmented areas were evaluated with the area overlap measure. Differences were dependent upon the characteristics of the mass margins. Boundary moments presented large percentage differences. Pearson correlation analysis showed statistically significant correlations between shape-based descriptors from both initial locations. In conclusion, boundary moments of digital mass lesions are sensitive to the placement of initial level set contours while shape-based descriptors such as Fourier descriptors, shape convexity, and shape rectangularity exhibit a certain degree of robustness to changes in the location of the initial level set contours for both segmentation algorithms.
机译:肿块病变内信号强度的变化和边界信息的缺失是数字乳腺X线照片固有的强度不均匀性。这些不均匀性使可变形轮廓的性能易受其初始位置的影响,并可能导致这些图像的分割结果不佳。我们使用Chan-Vese分割方法研究基于形状的描述符和质量分割区域对初始轮廓放置的依赖性,并使用选择性局部或全局分割模型将这些结果与活动轮廓进行比较。对于每个块状病变,通过提议的初始水平设置轮廓的传播以及包围目标区域的手动绘制轮廓的传播来获得最终轮廓。使用绝对百分比差异,欧式距离和Bland-Altman分析来量化基于形状的描述符中的差异。使用面积重叠量度评估分割区域。差异取决于质量余量的特征。边界矩存在很大的百分比差异。皮尔森相关性分析显示两个初始位置的基于形状的描述符之间在统计上具有显着相关性。总而言之,数字块损伤的边界矩对初始水平集轮廓的位置敏感,而基于形状的描述符(例如傅立叶描述符,形状凸度和形状矩形度)对初始水平位置的变化表现出一定程度的鲁棒性为两种分割算法设置轮廓。

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