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TaG-Net:基于中心线的血管标注的拓扑感知图网络。

TaG-Net: Topology-Aware Graph Network for Centerline-Based Vessel Labeling.

出版信息

IEEE Trans Med Imaging. 2023 Nov;42(11):3155-3166. doi: 10.1109/TMI.2023.3240825. Epub 2023 Oct 27.

Abstract

Anatomical labeling of head and neck vessels is a vital step for cerebrovascular disease diagnosis. However, it remains challenging to automatically and accurately label vessels in computed tomography angiography (CTA) since head and neck vessels are tortuous, branched, and often spatially close to nearby vasculature. To address these challenges, we propose a novel topology-aware graph network (TaG-Net) for vessel labeling. It combines the advantages of volumetric image segmentation in the voxel space and centerline labeling in the line space, wherein the voxel space provides detailed local appearance information, and line space offers high-level anatomical and topological information of vessels through the vascular graph constructed from centerlines. First, we extract centerlines from the initial vessel segmentation and construct a vascular graph from them. Then, we conduct vascular graph labeling using TaG-Net, in which techniques of topology-preserving sampling, topology-aware feature grouping, and multi-scale vascular graph are designed. After that, the labeled vascular graph is utilized to improve volumetric segmentation via vessel completion. Finally, the head and neck vessels of 18 segments are labeled by assigning centerline labels to the refined segmentation. We have conducted experiments on CTA images of 401 subjects, and experimental results show superior vessel segmentation and labeling of our method compared to other state-of-the-art methods.

摘要

头颈部血管解剖学标记是脑血管疾病诊断的重要步骤。然而,由于头颈部血管迂曲、分支且常与附近血管空间接近,因此自动且准确地对头颈部血管进行标记仍然具有挑战性。为了解决这些挑战,我们提出了一种新的拓扑感知图网络(TaG-Net)用于血管标记。它结合了体素空间中体积图像分割和中心线标记的优势,其中体素空间提供了详细的局部外观信息,而通过从中心线构建的血管图,线空间提供了血管的高级解剖和拓扑信息。首先,我们从初始血管分割中提取中心线,并从它们构建血管图。然后,我们使用 TaG-Net 进行血管图标记,其中设计了保持拓扑采样、拓扑感知特征分组和多尺度血管图的技术。之后,利用标记的血管图通过血管完成来改进体积分割。最后,通过将中心线标签分配给细化的分割,对头颈部的 18 个节段进行血管标记。我们在 401 个受试者的 CTA 图像上进行了实验,实验结果表明,与其他最先进的方法相比,我们的方法在血管分割和标记方面具有优越性。

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