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Blood Vessel Segmentation Based on the 3D Residual U-Net

机译:基于3D残差U形网的血管分割

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摘要

In this paper, we propose blood vessel segmentation based on the 3D residual U-Net method. First, we integrate the residual block structure into the 3D U-Net. By exploring the influence of adding residual blocks at different positions in the 3D U-Net, we establish a novel and effective 3D residual U-Net. In addition, to address the challenges of pixel imbalance, vessel boundary segmentation, and small vessel segmentation, we develop a new weighted Dice loss function with a better effect than the weighted cross-entropy loss function. When training the model, we adopted a two-stage method from coarse-to-fine. In the fine stage, a local segmentation method of 3D sliding window is added. In the model testing phase, we used the 3D fixed-point method. Furthermore, we employ the 3D morphological closed operation to smooth the surfaces of vessels and volume analysis to remove noise blocks. To verify the accuracy and stability of our method, we compare our method with FCN, 3D DenseNet, and 3D U-Net. The experimental results indicate that our method has higher accuracy and better stability than the other studied methods and that the average Dice coefficients for hepatic veins and portal veins reach 71.7% and 76.5% in the coarse stage and 72.5% and 77.2% in the fine stage, respectively. In order to verify the robustness of the model, we conducted the same comparative experiment on the brain vessel datasets, and the average Dice coefficient reached 87.2%.
机译:本文基于三维剩余U净方法提出血管分割。首先,我们将剩余块结构集成到3D U-Net中。通过探索在3D U-Net中的不同位置添加剩余块的影响,我们建立了一种新颖且有效的3D残差U-Net。此外,为了解决像素不平衡,血管边界分割和小血管分割的挑战,我们开发了一种新的加权骰子损失函数,其效果比加权交叉熵损耗功能更好。在培训模型时,我们采用了一种从粗良好的两级方法。在细阶段,添加了一种局部分割方法的3D滑动窗口。在模型测试阶段,我们使用了3D定点方法。此外,我们采用3D形态闭合操作来平滑血管表面和体积分析以去除噪声块。为了验证我们方法的准确性和稳定性,我们将我们的方法与FCN,3D DenSenet和3D U-Net进行比较。实验结果表明,我们的方法具有更高的准确性和更好的稳定性,而不是其他研究的方法,并且肝静脉和门静脉的平均骰子系数在粗期阶段达到71.7%和76.5%,72.5%和77.2%在细阶段, 分别。为了验证模型的鲁棒性,我们对脑血管数据集进行了相同的比较实验,平均骰子系数达到87.2%。

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