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Automatic extraction of pectoral muscle in the MLO view of mammograms

机译:在乳房X光检查的MLO视图中自动提取胸肌

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摘要

A mammogram is the standard modality used for breast cancer screening. Computer-aided detection (CAD) approaches are helpful for improving breast cancer detection rates when applied to mammograms. However, automated analysis of a mammogram often leads to inaccurate results in the presence of the pectoral muscle. Therefore, it is necessary to first handle pectoral muscle segmentation separately before any further analysis of a mammogram. One difficulty to overcome when segmenting out pectoral muscle is its strong overlapping with dense glandular tissue which tampers with its extraction. This paper introduces an automated two-step approach for pectoral muscle extraction. The pectoral region is firstly estimated through segmentation by mean of a modified Fuzzy C-Means clustering algorithm. After contour validation, the final boundary is delineated through iterative refinement of edge point using average gradient. The proposed method is quite simple in implementation and yields accurate results. It was tested on a set of images from the MIAS database and yielded results which, compared to those of some state-of-the-art approaches, were better.
机译:乳房X线照片是用于乳腺癌筛查的标准方法。当将计算机辅助检测(CAD)方法应用于乳房X线照片时,有助于提高乳腺癌的检测率。但是,在存在胸膜肌肉的情况下,对乳房X线照片进行自动分析通常会导致结果不准确。因此,有必要在对乳房X线照片进行任何进一步分析之前,先分别处理胸肌分段。分割胸肌时要克服的困难之一是其与致密的腺体组织的强烈重叠,从而干扰了其提取。本文介绍了一种自动的两步法提取胸肌的方法。首先通过改进的Fuzzy C-Means聚类算法通过分割来估计胸区域。轮廓验证后,通过使用平均梯度迭代精化边缘点来描绘最终边界。所提出的方法实现起来非常简单,并且产生准确的结果。在来自MIAS数据库的一组图像上对其进行了测试,并得出了与某些最新方法相比更好的结果。

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