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Towards 3D Path Planning from a Single 2D Fluoroscopic Image for Robot Assisted Fenestrated Endovascular Aortic Repair

机译:从单个2D荧光镜图像走向3D路径规划,以进行机器人辅助的有条件的血管内主动脉修复

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The current standard of intra-operative navigation during Fenestrated Endovascular Aortic Repair (FEVAR) calls for the need of 3D alignments between inserted devices and aortic branches. The navigation commonly via 2D fluoroscopic images, lacks anatomical information, resulting in longer operation hours and radiation exposure. In this paper, a skeleton instantiation framework of Abdominal Aortic Aneurysm (AAA) from a single 2D fluoroscopic image is introduced for real-time 3D robotic path planning. A graph matching method is proposed to establish the correspondences between the 3D preoperative and 2D intra-operative AAA skeletons, and then the two skeletons are registered by skeleton deformation and regularization in respect to skeleton length and smoothness. Furthermore, deep learning was used to segment 3D preoperative AAA from Computed Tomography (CT) scans to facilitate the framework automation. Simulation, phantom and patient AAA data sets have been used to validate the proposed framework. 3D distance error of 2mm was achieved in the phantom setup. Performance advantages were also achieved in terms of accuracy, robustness and time-efficiency.
机译:在有孔血管内主动脉修复术(FEVAR)期间,术中导航的当前标准要求在插入的器械和主动脉分支之间进行3D对准。通常通过2D荧光透视图像进行导航时,缺乏解剖信息,从而导致更长的手术时间和辐射暴露。在本文中,从单个2D荧光透视图像中介绍了腹主动脉瘤(AAA)的骨架实例化框架,用于实时3D机器人路径规划。提出了一种图形匹配的方法来建立3D术前和2D术中AAA骨骼之间的对应关系,然后根据骨骼的长度和平滑度,通过骨骼变形和正则化对这两个骨骼进行配准。此外,深度学习被用于从计算机断层扫描(CT)扫描中分割3D术前AAA,以促进框架自动化。仿真,体模和患者AAA数据集已用于验证所提出的框架。在幻像设置中实现了2mm的3D距离误差。在准确性,鲁棒性和时间效率方面也取得了性能优势。

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