论文标题
休息:通过地球转化和骨骼嵌入支气管重建
BREAK: Bronchi Reconstruction by gEodesic transformation And sKeleton embedding
论文作者
论文摘要
气道分割对于虚拟支气管镜检查和计算机辅助肺部疾病分析至关重要。近年来,卷积神经网络(CNN)已被广泛用于描绘支气管树。但是,基于CNN的方法的分割结果通常包括许多不连续的分支,这些分支需要在临床使用中进行手动修复。破裂的主要原因是,气道壁的出现可能会受到肺部疾病以及血管的邻接性的影响,而网络倾向于在训练集中过度适应这些特殊模式。为了了解这些区域的强大功能,我们设计了一个多支分支的框架,该框架采用了测量距离变换,以捕获气道管腔和墙壁之间的强度变化。破裂的另一个原因是阶级内部失衡。由于外围支气管的体积可能比输入贴片中的大型分支小得多,因此公共分割损失对远端分支之间的断裂不敏感。因此,在本文中,设计了一个偏心敏感的正则化项,并且可以轻松与其他损失功能结合使用。广泛的实验是在公开可用的数据集上进行的。与最先进的方法相比,我们的框架可以在保持竞争性分段性能的同时检测更多的分支。
Airway segmentation is critical for virtual bronchoscopy and computer-aided pulmonary disease analysis. In recent years, convolutional neural networks (CNNs) have been widely used to delineate the bronchial tree. However, the segmentation results of the CNN-based methods usually include many discontinuous branches, which need manual repair in clinical use. A major reason for the breakages is that the appearance of the airway wall can be affected by the lung disease as well as the adjacency of the vessels, while the network tends to overfit to these special patterns in the training set. To learn robust features for these areas, we design a multi-branch framework that adopts the geodesic distance transform to capture the intensity changes between airway lumen and wall. Another reason for the breakages is the intra-class imbalance. Since the volume of the peripheral bronchi may be much smaller than the large branches in an input patch, the common segmentation loss is not sensitive to the breakages among the distal branches. Therefore, in this paper, a breakage-sensitive regularization term is designed and can be easily combined with other loss functions. Extensive experiments are conducted on publicly available datasets. Compared with state-of-the-art methods, our framework can detect more branches while maintaining competitive segmentation performance.