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Automatic Guidewire Tip Segmentation in 2D X-ray Fluoroscopy Using Convolution Neural Networks

机译:使用卷积神经网络的2D X射线荧光检查中的自动导丝尖端分割

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Guidewire tip detection in the percutaneous coronary intervention is important. It assists physicians in navigating and is a prerequisite for clinic applications such as surgical skill assessment and robot assisted surgery. Nevertheless, accurate detection is not a trivial task due to the noisy background of the 2D X-ray image and the thin, deformable structure of the tip. In this paper, an automatic method based on cascaded convolution neural networks is proposed to segment the tip in the 2D X-ray image. The main contribution of the method is to use a cascade detection-segmentation structure to overcome the noisy background and the large deformation of the tip, achieve robust, high-precision segmentation. On the other hand, sufficient annotated training samples are necessary for convolution neural network models, while pixel-level annotating is tedious and time consuming. Accordingly, a novel data augmentation algorithm is introduced to improve the model generalization and performance, reduce the cost of data annotation. Evaluations were conducted on a dataset consisting of 22 different sequences of 2D X-ray images, 15 sequences for training and 7 sequences for evaluation. The proposed approach obtained tip precision of 0.532 pixels, F1 score of 0.939, false tracking rate of 0.800%, and missing tracking rate of 9.900% on the test set. And the running speed is 4-5 frames per second.
机译:导丝尖端检测在经皮冠状动脉介入治疗中很重要。它可以帮助医生进行导航,并且是临床应用(例如手术技能评估和机器人辅助手术)的前提条件。然而,由于2D X射线图像的嘈杂背景和尖端的薄而可变形的结构,准确的检测并不是一件容易的事。本文提出了一种基于级联卷积神经网络的自动方法,对二维X射线图像中的尖端进行分割。该方法的主要贡献是使用级联检测-分段结构来克服嘈杂的背景和尖端的大变形,实现鲁棒,高精度的分段。另一方面,卷积神经网络模型需要足够的带注释的训练样本,而像素级注释则既繁琐又耗时。因此,引入了一种新颖的数据扩充算法,以提高模型的泛化能力和性能,降低数据标注的成本。对数据集进行评估,该数据集由22个不同的2D X射线图像序列,15个训练序列和7个评估序列组成。所提出的方法获得的尖端精度为0.532像素,F 1 测试集的得分为0.939,错误跟踪率为0.800%,丢失跟踪率为9.900%。运行速度为每秒4-5帧。

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