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Multi-Resolution 3D Convolutional Neural Networks for Automatic Coronary Centerline Extraction in Cardiac CT Angiography Scans

机译:心脏CT血管造影扫描中自动冠状动脉线提取的多分辨率3D卷积神经网络

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We propose a deep learning-based automatic coronary artery tree centerline tracker (AuCoTrack) extending the vessel work of [1]. A multi-resolution 3D Convolutional Neural Network (CNN) is employed to simultaneously predict movement directions and detect bifurcations. Moreover, an automated artery endpoint detector is used to prevent premature termination of the tracking process. On Coronary Computed Tomography Angiography (CCTA or coronary CTA) scans annotated by clinical experts, an average sensitivity of 87.1% and clinically relevant overlap of 89.1% could be obtained. In addition, the MICCAI 2008 Coronary Artery Tracking Challenge (CAT08) training and test datasets were used to benchmark the algorithm and to assess its generalization capabilities. On CAT08, an average overlap of 93.6% and a clinically relevant overlap of 96.4% were achieved.
机译:我们提出了一种深入的学习基础的自动冠状动脉树中心线跟踪器(AUCOTRACK)延伸[1]的船舶工作。 使用多分辨率3D卷积神经网络(CNN)来同时预测移动方向并检测分叉。 此外,自动动脉终点检测器用于防止跟踪过程的过早终止。 在冠状动脉计算机断层造影(CCTA或冠状动脉CTA)扫描由临床专家注释的扫描,可以获得87.1%和89.1%的临床相关重叠的平均敏感性。 此外,Miccai 2008冠状动脉跟踪挑战(CAT08)训练和测试数据集用于基准测试算法,并评估其泛化能力。 在CAT08上,实现了93.6%的平均重叠和96.4%的临床相关重叠。

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