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Artery and Vein Segmentation of the Cerebral Vasculature in 4D CT using a 3D Fully Convolutional Neural Network

机译:3D全卷积神经网络4D CT中脑脉管系统的动脉和静脉分割

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Segmentation of the arteries and veins of the cerebral vasculature is important for improved visualization and for the detection of vascular related pathologies including arteriovenous malformations. We propose a 3D fully convolutional neural network (CNN) using a time-to-signal image as input and the distance to the center of gravity of the brain as spatial feature integrated in the final layers of the CNN. The method was trained and validated on 6 and tested on 4 4D CT patient imaging data. The reference standard was acquired by manual annotations by an experienced observer. Quantitative evaluation showed a mean Dice similarity coefficient of 0.94 ± 0.03 and 0.97 ± 0.01, a mean absolute volume difference of 4.36 ± 5.47 % and 1.79 ± 2.26 % for artery and vein respectively and an overall accuracy of 0.96 ± 0.02. The average calculation time per volume on the test set was approximately one minute. Our method shows promising results and enables fast and accurate segmentation of arteries and veins in full 4D CT imaging data.
机译:脑脉管系统的动脉和静脉的分割对于改善可视化和检测包括动静脉畸形的血管相关病理学是重要的。我们使用时间到信号图像作为输入和大脑重心的距离作为集成在CNN的最终层中的空间特征的距离,提出了3D完全卷积神经网络(CNN)。该方法培训并在6上验证并验证,并在4 4D CT患者成像数据上进行测试。通过经验丰富的观察者通过手动注释获得参考标准。定量评估显示平均骰子相似度系数0.94±0.03和0.97±0.01,平均绝对体积差异为4.36±5.47%和1.79±2.26%,分别为0.96±0.02的总精度。测试集上每卷的平均计算时间约为一分钟。我们的方法显示了有希望的结果,并能够在全4D CT成像数据中快速准确地分割动脉和静脉。

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