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Pectoral Muscle Detection in Mammograms Using Local Statistical Features

机译:使用局部统计特征在乳房X光检查中进行胸肌检测

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摘要

Mammography is a primary imaging method for breast cancer diagnosis. It is an important issue to accurately identify and separate pectoral muscles (PM) from breast tissues. Hough-transform-based methods are commonly adopted for PM detection. But their performances are susceptible when PM edges cannot be depicted by straight lines. In this study, we present a new pectoral muscle identification algorithm which utilizes statistical features of pixel responses. First, the Anderson–Darling goodness-of-fit test is used to extract a feature image by assuming non-Gaussianity for PM boundaries. Second, a global weighting scheme based on the location of PM was applied onto the feature image to suppress non-PM regions. From the weighted image, a preliminary set of pectoral muscles boundary components is detected via row-wise peak detection. An iterative procedure based on the edge continuity and orientation is used to determine the final PM boundary. Our results on a public mammogram database were assessed using four performance metrics: the false positive rate, the false negative rate, the Hausdorff distance, and the average distance. Compared to previous studies, our method demonstrates the state-of-art performance in terms of four measures.
机译:乳腺摄影是诊断乳腺癌的主要影像学方法。准确识别和分离乳腺组织的胸肌(PM)是重要的问题。 PM检测通常采用基于Hough变换的方法。但是,当PM边缘无法用直线描绘时,它们的性能会受到影响。在这项研究中,我们提出了一种新的胸肌识别算法,该算法利用了像素响应的统计特征。首先,通过假设PM边界的非高斯性,使用安德森–达林拟合优度检验来提取特征图像。其次,将基于PM位置的全局加权方案应用于特征图像以抑制非PM区域。从加权图像,通过逐行峰值检测来检测一组初步的胸肌边界成分。基于边缘连续性和方向的迭代过程用于确定最终的PM边界。我们使用四个性能指标评估了在公共乳房X线照片数据库上的结果:误报率,误报率,Hausdorff距离和平均距离。与以前的研究相比,我们的方法从四个方面展示了最新的性能。

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