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Cryo-Balloon Catheter Localization Based on a Support-Vector-Machine Approach

机译:基于支持向量机方法的低温气球导管定位

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Cryo-balloon catheters have attracted an increasing amount of interest in the medical community as they can reduce patient risk during left atrial pulmonary vein ablation procedures. As cryo-balloon catheters are not equipped with electrodes, they cannot be localized automatically by electro-anatomical mapping systems. As a consequence, X-ray fluoroscopy has remained an important means for guidance during the procedure. Most recently, image guidance methods for fluoroscopy-based procedures have been proposed, but they provide only limited support for cryo-balloon catheters and require significant user interaction. To improve this situation, we propose a novel method for automatic cryo-balloon catheter detection in fluoroscopic images by detecting the cryo-balloon catheter's built-in X-ray marker. Our approach is based on a blob detection algorithm to find possible X-ray marker candidates. Several of these candidates are then excluded using prior knowledge. For the remaining candidates, several catheter specific features are introduced. They are processed using a machine learning approach to arrive at the final X-ray marker position. Our method was evaluated on 75 biplane fluoroscopy images from 40 patients, from two sites, acquired with a biplane angiography system. The method yielded a success rate of 99.0% in plane A and 90.6% in plane B, respectively. The detection achieved an accuracy of in plane A and in plane B. The localization in 3-D was associated with an average error of .
机译:冷冻气球导管在医学界引起了越来越多的兴趣,因为它们可以降低左心房肺静脉消融手术期间的患者风险。由于低温气球导管未配备电极,因此无法通过电解剖标测系统自动定位。结果,X射线荧光检查一直是手术过程中指导的重要手段。最近,已经提出了用于基于荧光检查的程序的图像引导方法,但是它们仅对冷冻气球导管提供有限的支持,并且需要大量的用户交互作用。为了改善这种情况,我们提出了一种通过检测冷冻气球导管的内置X射线标记在荧光镜图像中自动检测冷冻气球导管的新方法。我们的方法基于斑点检测算法,以找到可能的X射线标记候选物。然后使用先验知识排除其中几个候选对象。对于其余的候选对象,介绍了几种导管特定功能。使用机器学习方法对它们进行处理,以达到最终的X射线标记位置。我们的方法是在来自双位血管造影系统的两个地点的40位患者的75张双翼透视图像上进行评估的。该方法在平面A和B中的成功率分别为99.0%和90.6%。该检测获得了在平面A和平面B中的精度。在3-D中的定位与的平均误差相关。

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