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首页> 外文期刊>Medical engineering & physics. >Automatic detection of selective arterial devices for advanced visualization during abdominal aortic aneurysm endovascular repair
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Automatic detection of selective arterial devices for advanced visualization during abdominal aortic aneurysm endovascular repair

机译:自动检测选择性动脉装置,以在腹主动脉瘤血管内修复期间进行高级可视化

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Here we address the automatic segmentation of endovascular devices used in the endovascular repair (EVAR) of abdominal aortic aneurysms (AAA) that deform vascular tissues. Using this approach, the vascular structure is automatically reshaped solving the issue of misregistration observed on 2D/3D image fusion for EVAR guidance. The endovascular devices we considered are the graduated pigtail catheter (PC) used for contrast injection and the stent-graft delivery device (DD). The segmentation of the DD was enhanced using an asymmetric Frangi filter. The segmented geometries were then analysed using their specific features to remove artefacts. The radiopaque markers of the PC were enhanced using a fusion of Hessian and newly introduced gradient norm shift filters. Extensive experiments were performed using a database of images taken during 28 AAA-EVAR interventions. This dataset was divided into two parts: the first half was used to optimize parameters and the second to compile performances using optimal values obtained. The radiopaque markers of the PC were detected with a sensitivity of 88.3% and a positive predictive value (PPV) of 96%. The PC can therefore be positioned with a majority of its markers localized while the artefacts were all located inside the vessel lumen. The major parts of the DD, the dilatator tip and the pusher surfaces, were detected accurately with a sensitivity of 85.9% and a PPV of 88.7%. The less visible part of the DD, the stent enclosed within the sheath, was segmented with a sensitivity of 63.4% because the radiopacity of this region is low and uneven. The centreline of the DD in this stent region was alternatively traced within a 0.74 mm mean error. The automatic segmentation of endovascular devices during EVAR is feasible and accurate; it could be useful to perform elastic registration of the vascular lumen during endovascular repair. (C) 2015 IPEM. Published by Elsevier Ltd. All rights reserved.
机译:在这里,我们解决了在使血管组织变形的腹主动脉瘤(AAA)的血管内修复(EVAR)中使用的血管内装置的自动分割。使用这种方法,可以自动重塑血管结构,从而解决了在2D / 3D图像融合中观察到的配准不准问题,以进行EVAR指导。我们考虑的血管内装置是用于对比剂注射的带刻度的尾纤导管(PC)和覆膜支架输送装置(DD)。 DD的分段使用非对称Frangi滤波器进行了增强。然后使用分割后的几何图形的特定特征对其进行分析,以去除伪影。通过结合使用Hessian和新引入的梯度范数移位滤波器来增强PC的不透射线标记。使用在28种AAA-EVAR干预期间拍摄的图像数据库进行了广泛的实验。该数据集分为两个部分:上半部分用于优化参数,第二部分用于使用获得的最佳值来编译性能。检测到PC的不透射线标记物的灵敏度为88.3%,阳性预测值(PPV)为96%。因此,可以将PC定位,使其大部分标记定位,而将伪影全部定位在血管腔内。 DD的主要部分,扩张器尖端和推动器表面均被准确检测,灵敏度为85.9%,PPV为88.7%。 DD的不可见部分,即包裹在鞘内的支架,以63.4%的灵敏度进行了分割,因为该区域的射线不透性较低且不均匀。 DD在该支架区域的中心线也可以在0.74 mm的平均误差范围内绘制。在EVAR期间自动分割血管内装置是可行和准确的;在血管内修复过程中对血管腔进行弹性定位可能是有用的。 (C)2015年IPEM。由Elsevier Ltd.出版。保留所有权利。

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