论文标题
减轻肺气道分段的班级梯度不平衡
Alleviating Class-wise Gradient Imbalance for Pulmonary Airway Segmentation
论文作者
论文摘要
自动化气道分割是术前诊断和肺部干预术内导航的先决条件。由于外围支气管的尺寸较小和空间分布,这受到前景和背景区域之间严重的类失衡的阻碍,这使得基于CNN的基于CNN的方法可以挑战远端小气道。在本文中,我们证明了这个问题是由于坡度侵蚀和邻里体素扩张而引起的。在向后传播期间,如果前景梯度与背景梯度的比率很小,而类别不平衡是局部的,则前景梯度可以被其社区侵蚀。该过程累积地增加了从顶层到底层的梯度流中包含的噪声信息,从而限制了CNN中小型结构的学习。为了减轻这个问题,我们使用小组监督和相应的翼展提供互补的梯度流以增强浅层层的训练。为了进一步解决大型和小气道之间的阶层内部不平衡,我们设计了一个通用联盟损失函数,该功能消除了基于距离的重量的气道大小的影响,并根据学习过程适应梯度比率。公共数据集上的广泛实验表明,所提出的方法可以比基线以更高的准确性和更好的形态完整性来预测气道结构。
Automated airway segmentation is a prerequisite for pre-operative diagnosis and intra-operative navigation for pulmonary intervention. Due to the small size and scattered spatial distribution of peripheral bronchi, this is hampered by severe class imbalance between foreground and background regions, which makes it challenging for CNN-based methods to parse distal small airways. In this paper, we demonstrate that this problem is arisen by gradient erosion and dilation of the neighborhood voxels. During back-propagation, if the ratio of the foreground gradient to background gradient is small while the class imbalance is local, the foreground gradients can be eroded by their neighborhoods. This process cumulatively increases the noise information included in the gradient flow from top layers to the bottom ones, limiting the learning of small structures in CNNs. To alleviate this problem, we use group supervision and the corresponding WingsNet to provide complementary gradient flows to enhance the training of shallow layers. To further address the intra-class imbalance between large and small airways, we design a General Union loss function which obviates the impact of airway size by distance-based weights and adaptively tunes the gradient ratio based on the learning process. Extensive experiments on public datasets demonstrate that the proposed method can predict the airway structures with higher accuracy and better morphological completeness than the baselines.