Automated 3-D breast ultrasound (ABUS) is a newfound system for breast screening that has been proposed as a supplementary modality to mammography for breast cancer detection. While ABUS has better performance in dense breasts, reading ABUS images is exhausting and time-consuming. So, a computer-aided detection system is necessary for interpretation of these images. Mass segmentation plays a vital role in the computer-aided detection systems and it affects the overall performance. Mass segmentation is a challenging task because of the large variety in size, shape, and texture of masses. Moreover, an imbalanced dataset makes segmentation harder. A novel mass segmentation approach based on deep learning is introduced in this paper. The deep network that is used in this study for image segmentation is inspired by U-net, which has been used broadly for dense segmentation in recent years. The system's performance was determined using a dataset of 50 masses including 38 malign and 12 benign lesions. The proposed segmentation method attained a mean Dice of 0.82 which outperformed a two-stage supervised edge-based method with a mean Dice of 0.74 and an adaptive region growing method with a mean Dice of 0.65.
翻译:自动三维乳房超声(ABUS)是作为乳腺癌检测乳腺造影检查的一种补充模式而提出的一种新的乳腺癌筛查系统。虽然ABUS在乳房密度大的乳房中表现更好,但读ABUS的图像是耗尽和耗时的。因此,需要计算机辅助的检测系统来解释这些图像。大规模分解在计算机辅助的检测系统中发挥着关键作用,它影响到整个性能。由于质量的大小、形状和质质度差异很大,质量分解是一项具有挑战性的任务。此外,不平衡的数据集使得分解更加困难。本文采用了基于深层学习的新颖的大规模分解方法。本研究中使用的图像分解深度网络是U-net的灵感,近年来,该网络广泛用于密集的分解。该系统的性能是使用50个质量数据集来确定的,其中包括38个骨质和12个良性损伤。拟议的分解方法达到了0.82的中位骰,它比以0.74的平均值Dice和0.65的中位调整性区域的方法高出了两台级的边缘基方法。