Segmentation of Pectoral Muscle Region in MLO Mammography Images by Backboned U-Net

R. Ö. Dogan, H. Ture, T. Kayikçioglu
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Abstract

The pectoral muscle region on MLO mammography images appears prominently similar to suspicious areas. For this reason, Computer-Aided Detection (CAD) systems remove this region to reduce false-positive rates in the mass detection process. In some cases, the pectoral muscle region is exposed to distortions due to the superposition effects caused by the mammography technique. As a result, segmentation error rates of the pectoral muscle region, whose characteristic features are deteriorated, appear. In this study, a method to identify impaired pectoral muscle regions with MobileNetV2 backboned U-Net Deep Learning method is proposed. The proposed method was tested on 84 and 201 mammography images taken from both MIAS and InBreast databases and segmented with 1.81% and 1.92% false-negative (FN) and 0.25% and 0.37% false positive (FP) rates, respectively. Particularly for distorted pectoral muscle regions, the proposed method has been shown to outperform some pioneering studies in this area.
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基于骨干U-Net的MLO乳房x线图像胸肌区域分割
MLO乳房x线摄影图像上的胸肌区域与可疑区域明显相似。因此,计算机辅助检测(CAD)系统去除该区域以降低大量检测过程中的假阳性率。在某些情况下,由于乳房x线摄影技术引起的叠加效应,胸肌区域暴露于扭曲。结果表明,胸肌区域的分割错误率较高,其特征特征较差。本研究提出了一种基于MobileNetV2骨干网U-Net深度学习方法的胸肌损伤区域识别方法。对来自MIAS和InBreast数据库的84张和201张乳房x线摄影图像进行了测试,并分别以1.81%和1.92%的假阴性(FN)和0.25%和0.37%的假阳性(FP)率进行了分割。特别是对于扭曲的胸肌区域,所提出的方法已被证明优于该领域的一些开创性研究。
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