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Pectoral Muscle Detection in Digital Breast Tomosynthesis and Mammography

机译:数字乳房骨折和乳房X线术中的胸肌检测

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Screening and diagnosis of breast cancer with Digital Breast Tomosynthesis (DBT) and Mammography are increasingly supported by algorithms for automatic post-processing. The pectoral muscle, which dorsally delineates the breast tissue towards the chest wall, is an important anatomical structure for navigation. Along with the nipple and the skin, the pectoral muscle boundary is often used for reporting the location of breast lesions. It is visible in mediolateral oblique (MLO) views where it is well approximated by a straight line. Here, we propose two machine learning-based algorithms to robustly detect the pectoral muscle in MLO views from DBT and mammography. Embedded into the Marginal Space Learning framework, the algorithms involve the evaluation of multiple candidate boundaries in a hierarchical manner. To this end, we propose a novel method for candidate generation using a Hough-based approach. Experiments were performed on a set of 100 DBT volumes and 95 mammograms from different clinical cases. Our novel combined approach achieves competitive accuracy and robustness. In particular, for the DBT data, we achieve significantly lower deviation angle error and mean distance error than the standard approach. The proposed algorithms run within a few seconds.
机译:用数字乳房造影(DBT)和乳房X线照相术的筛选和诊断估计通过算法进行自动后处理算法。背骨肌肉背对胸部朝向胸壁,是导航的重要解剖结构。随着乳头和皮肤,胸肌边界通常用于报告乳房病变的位置。它在Mediolateral斜(MLO)视图中可见,在那里它的直线近似。在这里,我们提出了两个基于机器学习的算法,从DBT和乳房X线摄影中强化了MLO视图中的胸肌。嵌入到边缘空间学习框架中,算法涉及以分层方式评估多个候选边界。为此,我们提出了一种使用基于Hough的方法的候选生成的新方法。在不同临床病例的一组100个DBT体积和95个乳房照片上进行实验。我们的新型组合方法实现了竞争的准确性和鲁棒性。特别是,对于DBT数据,我们达到明显较低的偏差角误差和比标准方法的平均距离误差。所提出的算法在几秒钟内运行。

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