Accurate Airway Tree Segmentation in CT Scans via Anatomy-aware Multi-class Segmentation and Topology-guided Iterative Learning.

Puyang Wang, Dazhou Guo, Dandan Zheng, Minghui Zhang, Haogang Yu, Xin Sun, Jia Ge, Yun Gu, Le Lu, Xianghua Ye, Dakai Jin
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Abstract

Intrathoracic airway segmentation in computed tomography is a prerequisite for various respiratory disease analyses such as chronic obstructive pulmonary disease, asthma and lung cancer. Due to the low imaging contrast and noises execrated at peripheral branches, the topological-complexity and the intra-class imbalance of airway tree, it remains challenging for deep learning-based methods to segment the complete airway tree (on extracting deeper branches). Unlike other organs with simpler shapes or topology, the airway's complex tree structure imposes an unbearable burden to generate the "ground truth" label (up to 7 or 3 hours of manual or semi-automatic annotation per case). Most of the existing airway datasets are incompletely labeled/annotated, thus limiting the completeness of computer-segmented airway. In this paper, we propose a new anatomy-aware multi-class airway segmentation method enhanced by topology-guided iterative self-learning. Based on the natural airway anatomy, we formulate a simple yet highly effective anatomy-aware multi-class segmentation task to intuitively handle the severe intra-class imbalance of the airway. To solve the incomplete labeling issue, we propose a tailored iterative self-learning scheme to segment toward the complete airway tree. For generating pseudo-labels to achieve higher sensitivity (while retaining similar specificity), we introduce a novel breakage attention map and design a topology-guided pseudo-label refinement method by iteratively connecting breaking branches commonly existed from initial pseudo-labels. Extensive experiments have been conducted on four datasets including two public challenges. The proposed method achieves the top performance in both EXACT'09 challenge using average score and ATM'22 challenge on weighted average score. In a public BAS dataset and a private lung cancer dataset, our method significantly improves previous leading approaches by extracting at least (absolute) 6.1% more detected tree length and 5.2% more tree branches, while maintaining comparable precision.

通过解剖学感知的多类分割和拓扑学指导的迭代学习在 CT 扫描中准确分割气道树
计算机断层扫描中的胸腔内气道分割是各种呼吸系统疾病(如慢性阻塞性肺病、哮喘和肺癌)分析的先决条件。由于气道树的成像对比度低、外围分支噪音大、拓扑复杂和类内不平衡,基于深度学习的方法要分割完整的气道树(提取更深的分支)仍然具有挑战性。与其他形状或拓扑结构较为简单的器官不同,气道复杂的树状结构给生成 "地面实况 "标签带来了难以承受的负担(每个病例的人工或半自动标注时间长达 7 或 3 个小时)。现有的气道数据集大多标注/注释不完整,从而限制了计算机气道分割的完整性。在本文中,我们提出了一种新的解剖感知多类气道分割方法,该方法通过拓扑学引导的迭代自学习得到增强。基于自然气道解剖学,我们制定了一个简单而高效的解剖感知多类分割任务,直观地处理气道严重的类内不平衡问题。为了解决标记不完整的问题,我们提出了一种量身定制的迭代自学习方案,以分割出完整的气道树。为了生成伪标签以实现更高的灵敏度(同时保留相似的特异性),我们引入了一种新颖的断裂注意图,并设计了一种拓扑引导的伪标签完善方法,通过迭代连接初始伪标签中普遍存在的断裂分支来实现。我们在包括两个公开挑战赛在内的四个数据集上进行了广泛的实验。所提出的方法在 EXACT'09 挑战赛(使用平均分)和 ATM'22 挑战赛(使用加权平均分)中都取得了优异成绩。在一个公共 BAS 数据集和一个私人肺癌数据集中,我们的方法显著改进了之前的领先方法,至少(绝对)多提取了 6.1% 的检测树长度和 5.2% 的树枝,同时保持了相当的精确度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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