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通过可学习注意力反映气道标记的拓扑一致性和异常情况。

Reflecting topology consistency and abnormality via learnable attentions for airway labeling.

作者信息

Li Chenyu, Zhang Minghui, Zhang Chuyan, Gu Yun

机构信息

Institute of Medical Robotics, Shanghai Jiao Tong University, Shanghai, People's Republic of China.

Institute of Image Processing and Pattern Recognition, Shanghai Jiao Tong University, Shanghai, People's Republic of China.

出版信息

Int J Comput Assist Radiol Surg. 2025 Jul;20(7):1315-1323. doi: 10.1007/s11548-025-03368-3. Epub 2025 May 6.

Abstract

PURPOSE

Accurate airway anatomical labeling is crucial for clinicians to identify and navigate complex bronchial structures during bronchoscopy. Automatic airway labeling is challenging due to significant anatomical variations. Previous methods are prone to generate inconsistent predictions, hindering preoperative planning and intraoperative navigation. This paper aims to enhance topological consistency and improve the detection of abnormal airway branches.

METHODS

We propose a transformer-based framework incorporating two modules: the soft subtree consistency (SSC) and the abnormal branch saliency (ABS). The SSC module constructs a soft subtree to capture clinically relevant topological relationships, allowing for flexible feature aggregation within and across subtrees. The ABS module facilitates interaction between node features and prototypes to distinguish abnormal branches, preventing the erroneous features aggregation between normal and abnormal nodes.

RESULTS

Evaluated on a challenging dataset characterized by severe airway deformities, our method achieves superior performance compared to state-of-the-art approaches. Specifically, it attains an 83.7% subsegmental accuracy, along with a 3.1% increase in segmental subtree consistency, a 45.2% increase in abnormal branch recall. Notably, the method demonstrates robust performance in cases with airway deformities, ensuring consistent and accurate labeling.

CONCLUSION

The enhanced topological consistency and robust identification of abnormal branches provided by our method offer an accurate and robust solution for airway labeling, with potential to improve the precision and safety of bronchoscopy procedures.

摘要

目的

准确的气道解剖标记对于临床医生在支气管镜检查过程中识别和导航复杂的支气管结构至关重要。由于显著的解剖变异,自动气道标记具有挑战性。先前的方法容易产生不一致的预测,阻碍术前规划和术中导航。本文旨在增强拓扑一致性并改善对异常气道分支的检测。

方法

我们提出了一个基于Transformer的框架,该框架包含两个模块:软子树一致性(SSC)和异常分支显著性(ABS)。SSC模块构建一个软子树来捕获临床相关的拓扑关系,允许在子树内部和子树之间进行灵活的特征聚合。ABS模块促进节点特征与原型之间的交互以区分异常分支,防止正常节点和异常节点之间的错误特征聚合。

结果

在一个以严重气道畸形为特征的具有挑战性的数据集上进行评估时,我们的方法与现有方法相比表现更优。具体而言,它实现了83.7%的亚段准确率,段级子树一致性提高了3.1%,异常分支召回率提高了45.2%。值得注意的是,该方法在气道畸形病例中表现出稳健的性能,确保了一致且准确的标记。

结论

我们的方法提供的增强的拓扑一致性和对异常分支的稳健识别为气道标记提供了一种准确且稳健的解决方案,有可能提高支气管镜检查程序的精度和安全性。

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