Automatic breast lesion segmentation in ultrasound helps to diagnose breast cancer, which is one of the dreadful diseases that affect women globally. Segmenting breast regions accurately from ultrasound image is a challenging task due to the inherent speckle artifacts, blurry breast lesion boundaries, and inhomogeneous intensity distributions inside the breast lesion regions. Recently, convolutional neural networks (CNNs) have demonstrated remarkable results in medical image segmentation tasks. However, the convolutional operations in a CNN often focus on local regions, which suffer from limited capabilities in capturing long-range dependencies of the input ultrasound image, resulting in degraded breast lesion segmentation accuracy. In this paper, we develop a deep convolutional neural network equipped with a global guidance block (GGB) and breast lesion boundary detection (BD) modules for boosting the breast ultrasound lesion segmentation. The GGB utilizes the multi-layer integrated feature map as a guidance information to learn the long-range non-local dependencies from both spatial and channel domains. The BD modules learn additional breast lesion boundary map to enhance the boundary quality of a segmentation result refinement. Experimental results on a public dataset and a collected dataset show that our network outperforms other medical image segmentation methods and the recent semantic segmentation methods on breast ultrasound lesion segmentation. Moreover, we also show the application of our network on the ultrasound prostate segmentation, in which our method better identifies prostate regions than state-of-the-art networks.
翻译:超声波中的自动乳腺切除功能有助于诊断乳腺癌,而乳腺癌是影响全球妇女的可怕疾病之一。从超声图像中准确地分割乳房区域是一项艰巨的任务,因为乳腺内固有的分层工艺、乳腺损伤模糊的界限以及乳腺损伤区域内的不相容强度分布。最近,神经神经网络在医学图像分割任务中表现出显著效果。但是,CNN的演动操作往往侧重于地方区域,因为这些地区在捕捉输入的超声波图像的远距离依赖性方面能力有限,导致乳腺偏移的分层分解精确度下降。在本文件中,我们开发了一个深层的革命神经网络,配备了全球制导块(GGB)和乳腺分层边界探测(BD)模块,用以提升乳腺超声波分层分层分部位。GGB利用多层综合特征地图作为指导信息,以了解空间和频道域的远程非局部依赖性依赖性。BD模块在前方网络中学习了更多的乳腺分层结构分层分层结构的精确度分层分层结构的准确性分层结构。在我们的网络上学习了更多的乳腺分层结构图,并展示了我们收集中的数据结构结构图,还展示了我们收集了其他的分层结构的分层结构的分层结果。