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首页> 外文期刊>IEEE Transactions on Medical Imaging >Multi-Part Modeling and Segmentation of Left Atrium in C-Arm CT for Image-Guided Ablation of Atrial Fibrillation
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Multi-Part Modeling and Segmentation of Left Atrium in C-Arm CT for Image-Guided Ablation of Atrial Fibrillation

机译:心房CT引导下消融的C-臂CT左心房的多部分建模和分割

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摘要

As a minimally invasive surgery to treat atrial fibrillation (AF), catheter based ablation uses high radio-frequency energy to eliminate potential sources of abnormal electrical events, especially around the ostia of pulmonary veins (PV). Fusing a patient-specific left atrium (LA) model (including LA chamber, appendage, and PVs) with electro-anatomical maps or overlaying the model onto 2-D real-time fluoroscopic images provides valuable visual guidance during the intervention. In this work, we present a fully automatic LA segmentation system on nongated C-arm computed tomography (C-arm CT) data, where thin boundaries between the LA and surrounding tissues are often blurred due to the cardiac motion artifacts. To avoid segmentation leakage, the shape prior should be exploited to guide the segmentation. A single holistic shape model is often not accurate enough to represent the whole LA shape population under anatomical variations, e.g., the left common PVs vs. separate left PVs. Instead, a part based LA model is proposed, which includes the chamber, appendage, four major PVs, and right middle PVs. Each part is a much simpler anatomical structure compared to the holistic one and can be segmented using a model-based approach (except the right middle PVs). After segmenting the LA parts, the gaps and overlaps among the parts are resolved and segmentation of the ostia region is further refined. As a common anatomical variation, some patients may contain extra right middle PVs, which are segmented using a graph cuts algorithm under the constraints from the already extracted major right PVs. Our approach is computationally efficient, taking about 2.6 s to process a volume with 256 × 256 × 245 voxels. Experiments on 687 C-arm CT datasets demonstrate its robustness and state-of-the-art segmentation accuracy.
机译:作为治疗房颤(AF)的微创手术,基于导管的消融使用高频射频能量消除异常电事件的潜在来源,尤其是在肺静脉口(PV)周围。将患者特定的左心房(LA)模型(包括LA室,附肢和PV)与电解剖图融合或将该模型叠加到二维实时荧光镜图像上,可在干预过程中提供有价值的视觉指导。在这项工作中,我们提出了一种基于非门控C臂计算机断层扫描(C臂CT)数据的全自动LA分割系统,其中LA和周围组织之间的薄边界常常由于心脏运动伪影而变得模糊。为了避免分割泄漏,应利用形状先验来指导分割。单个整体形状模型通常不够精确,无法代表解剖学变化(例如,左侧的公共PV与分离的左侧PV)下的整个LA形状总体。取而代之的是,提出了一个基于零件的LA模型,该模型包括腔室,附件,四个主要PV和右中间PV。与整体部件相比,每个部件的解剖结构都简单得多,并且可以使用基于模型的方法进行分割(右中间PV除外)。分割LA零件后,零件之间的间隙和重叠得以解决,并进一步完善了孔口区域的分割。作为常见的解剖变异,某些患者可能包含额外的右中位PV,在从已经提取的主要右PV的约束下,使用图割算法对这些右PV进行分割。我们的方法计算效率高,大约需要2.6 s来处理256×256×245体素。在687个C臂CT数据集上进行的实验证明了其鲁棒性和最新的分割精度。

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