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Automatic tool segmentation and tracking during robotic intravascular catheterization for cardiac interventions

机译:心脏干预措施机器人血管内导管术期间的自动刀具分割和跟踪

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Background: Cardiovascular diseases resulting from aneurism, thrombosis, and atherosclerosis in the cardiovascular system are major causes of global mortality. Recent treatment methods have been based on catheterization of flexible endovascular tools with imaging guidance. While advances in robotic intravascular catheterization have led to modeling tool navigation approaches with data sensing and feedback, proper adaptation of image-based guidance for robotic navigation requires the development of sensitive segmentation and tracking models without specificity loss. Several methods have been developed to tackle non-uniform illumination, low contrast; however, presence of untargeted body organs commonly found in X-ray frames taken during angiography procedures still presents some major issues to be solved. Methods: In this study, a segmentation method was developed for automatic detection and tracking of guidewire pixels in X-ray angiograms. Image frames were acquired during robotic intravascular catheterization for cardiac interventions. For segmentation, multiscale enhancement filtering was applied on preprocessed X-ray angiograms, while morphological operations and filters were applied to refine the frames for pixel intensity adjustment and vesselness measurement. Minima and maxima extrema of the pixels were obtained to detect guidewire pixels in the X-ray frames. Lastly, morphological operation was applied for guidewire pixel connectivity and tracking in segmented pixels. Method validation was performed on 12 X-ray angiogram sequences which were acquired during in vivo intravascular catheterization trials in rabbits. Results: The study outcomes showed that an overall accuracy of 0.995±0.001 was achieved for segmentation. Tracking performance was characterized with displacement and orientation errors observed as 1.938±2.429 mm and 0.039±0.040°, respectively. Evaluation studies performed against 9 existing methods revealed that this proposed method provides more accurate segmentation with 0.753±0.074 area under curve. Simultaneously, high tracking accuracy of 0.995±0.001 with low displacement and orientation errors of 1.938±2.429 mm and 0.039±0.040°, respectively, were achieved. Also, the method demonstrated higher sensitivity and specificity values compared to the 9 existing methods, with a relatively faster exaction time. Conclusions: The proposed method has the capability to enhance robotic intravascular catheterization during percutaneous coronary interventions (PCIs). Thus, interventionists can be provided with better tool tracking and visualization systems while also reducing their exposure to operational hazards during intravascular catheterization for cardiac interventions.
机译:背景:心血管系统中的动脉主义,血栓形成和动脉粥样硬化引起的心血管疾病是全球死亡率的主要原因。最近的治疗方法基于具有成像引导的柔性血管内工具的导管。虽然机器人血管内导管插入术的进步导致了具有数据传感和反馈的刀具导航方法,但适当适应机器人导航的基于图像的指导需要开发敏感的细分和跟踪模型而无需特异性损失。已经开发了几种方法来解决不均匀的照明,低对比度;然而,在血管造影程序期间常见的X射线框架中常见的未确定身体器官的存在仍然存在一些要解决的主要问题。方法:在本研究中,开发了分割方法,用于自动检测和跟踪X射线血管造影中的导丝像素。在机器人血管内导管术中获得图像帧以进行心脏干预。对于分割,在预处理的X射线血管造影上应用了多尺度增强滤波,而形态操作和滤波器被应用于改进像素强度调节和血管测量的框架。获得像素的最小值和最大值,以检测X射线帧中的导丝像素。最后,应用了形态学操作以用于导丝像素连接和分段像素的跟踪。对12 X射线血管造影序列进行了方法验证,其在兔体内体内血管内导管插入试验期间获得。结果:研究结果表明,为分割实现了0.995±0.001的整体精度。跟踪性能的特征在于位移和取向误差,分别观察到1.938±2.429 mm和0.039±0.040°。针对9种现有方法进行的评估研究表明,该提出的方法提供了更准确的细分,曲线下的0.753±0.074区域。同时,达到了低位移和方向误差为0.995±0.001的高追踪精度,分别为1.938±2.429 mm和0.039±0.040°。此外,与9现有方法相比,该方法表现出更高的灵敏度和特异性值,其具有相对较快的泄漏时间。结论:该方法具有在经皮冠状动脉干预(PCIS)期间增强机器人血管内导尿管的能力。因此,介入者可以提供更好的工具跟踪和可视化系统,同时还可以降低其在心脏干预血管内导管中的血管内导管内暴露于操作危害。

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