论文标题
过多的类别的3D分割网络:上体不同的骨骼分割
3D Segmentation Networks for Excessive Numbers of Classes: Distinct Bone Segmentation in Upper Bodies
论文作者
论文摘要
分割不同的骨骼在诊断,计划,导航和骨转移评估中起着至关重要的作用。它为可视化工具提供了语义知识,以计划手术干预和卫生专业人员的教育。已经对许多任务进行了广泛的研究,对3D数据进行了全面监督的细分,但通常仅限于区分少数几个类。有125个不同的骨头,我们的病例比典型的3D分割任务包含更多的标签。因此,不可能直接适应大多数建立的方法。本文讨论了在许多标签设置中训练3D分割网络的复杂性,并显示了网络体系结构,损耗函数和数据增强的必要修改。结果,我们通过以端到端的方式从CT扫描中自动分割了一百多个不同的骨头,从而证明了方法的鲁棒性。
Segmentation of distinct bones plays a crucial role in diagnosis, planning, navigation, and the assessment of bone metastasis. It supplies semantic knowledge to visualisation tools for the planning of surgical interventions and the education of health professionals. Fully supervised segmentation of 3D data using Deep Learning methods has been extensively studied for many tasks but is usually restricted to distinguishing only a handful of classes. With 125 distinct bones, our case includes many more labels than typical 3D segmentation tasks. For this reason, the direct adaptation of most established methods is not possible. This paper discusses the intricacies of training a 3D segmentation network in a many-label setting and shows necessary modifications in network architecture, loss function, and data augmentation. As a result, we demonstrate the robustness of our method by automatically segmenting over one hundred distinct bones simultaneously in an end-to-end learnt fashion from a CT-scan.