ConTrack: Contextual Transformer for Device Tracking in X-ray

Marc Demoustier, Yue Zhang, V. N. Murthy, Florin C. Ghesu, D. Comaniciu
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Abstract

Device tracking is an important prerequisite for guidance during endovascular procedures. Especially during cardiac interventions, detection and tracking of guiding the catheter tip in 2D fluoroscopic images is important for applications such as mapping vessels from angiography (high dose with contrast) to fluoroscopy (low dose without contrast). Tracking the catheter tip poses different challenges: the tip can be occluded by contrast during angiography or interventional devices; and it is always in continuous movement due to the cardiac and respiratory motions. To overcome these challenges, we propose ConTrack, a transformer-based network that uses both spatial and temporal contextual information for accurate device detection and tracking in both X-ray fluoroscopy and angiography. The spatial information comes from the template frames and the segmentation module: the template frames define the surroundings of the device, whereas the segmentation module detects the entire device to bring more context for the tip prediction. Using multiple templates makes the model more robust to the change in appearance of the device when it is occluded by the contrast agent. The flow information computed on the segmented catheter mask between the current and the previous frame helps in further refining the prediction by compensating for the respiratory and cardiac motions. The experiments show that our method achieves 45% or higher accuracy in detection and tracking when compared to state-of-the-art tracking models.
ConTrack:用于x射线设备跟踪的上下文转换器
设备跟踪是血管内手术指导的重要前提。特别是在心脏干预期间,在二维透视图像中检测和跟踪引导导管尖端对于从血管造影(高剂量对比)到透视(低剂量无对比)的血管测绘等应用非常重要。追踪导管尖端有不同的挑战:在血管造影术或介入装置期间,尖端可能被造影术阻塞;由于心脏和呼吸的运动,它总是处于连续的运动中。为了克服这些挑战,我们提出了ConTrack,这是一个基于变压器的网络,它利用空间和时间背景信息在x射线透视和血管造影中进行准确的设备检测和跟踪。空间信息来自模板框架和分割模块:模板框架定义设备的周围环境,而分割模块检测整个设备,为提示预测提供更多的上下文。使用多个模板使模型更健壮,当设备被造影剂遮挡时,它的外观变化。在当前和前一帧之间的分段导管面罩上计算的流量信息有助于通过补偿呼吸和心脏运动进一步改进预测。实验表明,与最先进的跟踪模型相比,我们的方法在检测和跟踪方面达到了45%或更高的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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