GVM-Net:基于gnn的二维/三维非刚性冠状动脉配准血管匹配网络

Yankai Chen;Guanyu Li;Chunming Li;Wei Yu;Zehao Fan;Jingfeng Bai;Shengxian Tu
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引用次数: 0

摘要

从术前冠状动脉计算机断层造影到术中冠状动脉造影的冠状动脉结构的登记对改善经皮冠状动脉介入治疗的指导具有重要意义。然而,两种成像方式之间的非刚性变形和尺寸和拓扑结构的差异给2D/3D冠状动脉配准带来了挑战。在本研究中,我们通过将其描述为中心线特征匹配任务来解决这一问题,并提出了基于gnn的船舶匹配网络(GVM-Net),以端到端方式在不同图像模式之间建立紧密对应关系。GVM-Net将中心线点视为图中的节点,并通过注意机制和消息传递有效地模拟了它们之间复杂的拓扑关系。此外,通过在匹配矩阵中加入冗余行和列,GVM-Net可以有效地处理血管结构的不一致性。我们还引入了基于查询的节点分组模块,该模块将特征空间中的节点聚类,以进一步探索拓扑关系。gvr - net在276对数据的合成数据集上平均f1得分为89.74%,平均像素距离为0.48像素;在55例人工标记临床病例上平均f1得分为83.35%,平均误差为1.52 mm,均超过了现有的特征匹配方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
GVM-Net: A GNN-Based Vessel Matching Network for 2D/3D Non-Rigid Coronary Artery Registration
The registration of coronary artery structures from preoperative coronary computed tomography angiography to intraoperative coronary angiography is of great interest to improve guidance in percutaneous coronary interventions. However, non-rigid deformation and discrepancies in both dimensions and topology between the two imaging modalities present a challenge in the 2D/3D coronary artery registration. In this study, we address this problem by formulating it as a centerline feature matching task and propose a GNN-based vessel matching network (GVM-Net) to establish dense correspondence between different image modalities in an end-to-end manner. GVM-Net considers centerline points as nodes in graphs and effectively models the complex topological relationships between them through attention mechanisms and message passing. Furthermore, by incorporating redundant rows and columns into the matching matrix, GVM-Net can effectively handle inconsistencies in vascular structures. We also introduce the query-based nodes grouping module, which clusters nodes in the feature space to further explore the topological relationships. GVM-Net achieves an average F1-score of 89.74% with a mean pixel distance of 0.48 pixels on the synthetic dataset with 276 data pairs and an average F1-score of 83.35% with a mean error of 1.52 mm in 55 manually labeled clinical cases, both exceeding existing feature matching methods.
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