论文标题

X射线荧光镜检查中的稳健地标的支架跟踪

Robust Landmark-based Stent Tracking in X-ray Fluoroscopy

论文作者

Huang, Luojie, Liu, Yikang, Chen, Li, Chen, Eric Z., Chen, Xiao, Sun, Shanhui

论文摘要

在血管成形术的临床程序中(即开放的冠状动脉),在X射线荧光镜检查的指导下,需要将气球和支架等装置(例如气球和支架)放置在动脉中。由于X射线剂量的限制,所得图像通常很吵。为了检查这些设备的正确放置,通常将多个运动补偿的帧进行平均以增强视图。因此,设备跟踪是为此目的的必要过程。即使设计的血管成形术设备具有可放射性标记以易于跟踪,但由于标记尺寸较小和血管成形术中的复杂场景,当前的方法难以产生令人满意的结果。在本文中,我们为单个支架跟踪提出了一个端到端的深度学习框架,该框架由三个层次模块组成:基于U-NET的Landmark检测,基于RESNET的支架提案和特征提取,以及基于图形卷积神经网络(GCN)的支架跟踪,这些跟踪均均衡于空间信息和外观。实验表明,与基于点的跟踪模型相比,我们的方法在检测中的性能明显更好。此外,其快速推理速度满足临床要求。

In clinical procedures of angioplasty (i.e., open clogged coronary arteries), devices such as balloons and stents need to be placed and expanded in arteries under the guidance of X-ray fluoroscopy. Due to the limitation of X-ray dose, the resulting images are often noisy. To check the correct placement of these devices, typically multiple motion-compensated frames are averaged to enhance the view. Therefore, device tracking is a necessary procedure for this purpose. Even though angioplasty devices are designed to have radiopaque markers for the ease of tracking, current methods struggle to deliver satisfactory results due to the small marker size and complex scenes in angioplasty. In this paper, we propose an end-to-end deep learning framework for single stent tracking, which consists of three hierarchical modules: U-Net based landmark detection, ResNet based stent proposal and feature extraction, and graph convolutional neural network (GCN) based stent tracking that temporally aggregates both spatial information and appearance features. The experiments show that our method performs significantly better in detection compared with the state-of-the-art point-based tracking models. In addition, its fast inference speed satisfies clinical requirements.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源