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Improving Catheter Segmentation Localization in 3D Cardiac Ultrasound Using Direction-Fused Fcn

机译:使用方向融合的Fcn改善3D心脏超声中的导管分割和定位

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Fast and accurate catheter detection in cardiac catheterization using harmless 3D ultrasound (US) can improve the efficiency and outcome of the intervention. However, the low image quality of US requires extra training for sonographers to localize the catheter. In this paper, we propose a catheter detection method based on a pre-trained VGG network, which exploits 3D information through re-organized cross-sections to segment the catheter by a shared fully convolutional network (FCN), which is called a Direction-Fused FCN (DF-FCN). Based on the segmented image of DF-FCN, the catheter can be localized by model fitting. Our experiments show that the proposed method can successfully detect an ablation catheter in a challenging ex-vivo 3D US dataset, which was collected on the porcine heart. Extensive analysis shows that the proposed method achieves a Dice score of 57.7%, which offers at least an 11.8% improvement when compared to state-of the-art instrument detection methods. Due to the improved segmentation performance by the DF-FCN, the catheter can be localized with an error of only 1.4 mm.
机译:使用无害3D超声(US)在心脏导管插入术中进行快速,准确的导管检测可以提高干预的效率和结果。但是,US的低图像质量要求超声检查医师进行额外培训以定位导管。在本文中,我们提出了一种基于预训练VGG网络的导管检测方法,该方法通过重新组织的横截面来利用3D信息,通过共享的全卷积网络(FCN)分割导管,该方法称为Direction-熔融FCN(DF-FCN)。基于DF-FCN的分割图像,可以通过模型拟合来定位导管。我们的实验表明,所提出的方法可以成功地在具有挑战性的离体3D US数据集中检测到消融导管,该数据集是在猪心脏上收集的。广泛的分析表明,所提出的方法的Dice得分达到57.7%,与最新的仪器检测方法相比,至少提高了11.8%。由于DF-FCN改善了分割性能,因此导管的定位误差仅为1.4 mm。

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