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Pectoral muscle segmentation in breast tomosynthesis with deep learning

机译:乳房肌肉细分乳腺肌肉分割,深度学习

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Digital breast tomosynthesis (DBT) has superior detection performance than mammography (DM) for population-based breast cancer screening, but the higher number of images that must be reviewed poses a challenge for its implementation. This may be ameliorated by creating a two-dimensional synthetic mammographic image (SM) from the DBT volume, containing the most relevant information. When creating a SM, it is of utmost importance to have an accurate lesion localization detection algorithm, while segmenting fibroglandular tissue could also be beneficial. These tasks encounter an extra challenge when working with images in the medio-lateral oblique view, due to the presence of the pectoral muscle, which has similar radiographic density. In this work, we present an automatic pectoral muscle segmentation model based on a u-net deep learning architecture, trained with 136 DBT images acquired with a single system (different BI-RADS? densities and pathological findings). The model was tested on 36 DBT images from that same system resulting in a dice similarity coefficient (DSC) of 0.977 (0.967-0.984). In addition, the model was tested on 125 images from two different systems and three different modalities (DBT, SM, DM), obtaining DSCs between 0.947 and 0.970, a range determined visually to provide adequate segmentations. For reference, a resident radiologist independently annotated a mix of 25 cases obtaining a DSC of 0.971. The results suggest the possibility of using this model for inter-manufacturer DBT, DM and SM tasks that benefit from the segmentation of the pectoral muscle, such as SM generation, computer aided detection systems, or patient dosimetry algorithms.
机译:数字乳房Tomos合成(DBT)具有优异的检测性能,而不是乳腺癌(DM)用于群体的乳腺癌筛查,但必须审查的图像数量越多地对其实施构成挑战。这可以通过从DBT卷创建二维合成乳房X线图(SM)来改善,其中包含最相关的信息。在创建SM时,具有准确的病变定位检测算法至关重要,而分割纤维族组织也可能是有益的。由于存在具有相似的射线照相密度的胸肌,这些任务在使用Medio-Bantal Oblique View中的图像时遇到额外的挑战。在这项工作中,我们介绍了一种基于U-Net深度学习架构的自动胸肌细分模型,培训了用单个系统获取的136个DBT图像(不同的BI-RADS?密度和病理发现)。在36个DBT图像上测试模型,从而导致骰子相似度系数(DSC)为0.977(0.967-0.984)。此外,在来自两个不同的系统和三种不同的方式(DBT,SM,DM)的125个图像上测试了该模型,获得了0.947和0.970之间的DSC,在视觉上确定的范围以提供足够的分段。作为参考,居民放射科医生独立地注释了25例,其中DSC为0.971。结果表明,使用该模型用于制造商型号DBT,DM和SM任务,这些模型受益于胸肌的分割,例如SM代,计算机辅助检测系统或患者剂量算法算法。

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