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Liver Vessels Segmentation Based on 3d Residual U-NET

机译:基于3d残差U-NET的肝血管分割

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Recently, extraction of blood vessels has aroused widespread interests in medical image analysis. In this work, to accelerate convergence speed and enhance the representation for discriminative features, we introduce the residual block structure in the ResNet into the 3D U-Net, and construct a new 3D Residual U-Net architect to segment the hepatic and portal veins from abdominal CT volumes. In addition, we develop a weighted Dice loss function to cope with the challenges of pixel imbalance, vessel boundary segmentation and small vessels segmentation. Furthermore, based on the prediction results, the post-processing methods of 3D morphological closed operation and volume analysis are employed to smooth the surface of vessels and eliminate noise blocks, respectively. Compared with existing 3D DenseNet, FCN and 3D U-Net, the average Dice coefficients of our method in hepatic veins and portal veins segmentation are 71.7% and 76.5% respectively, which are superior to 55.3% and 53.9% of the 3D DenseNet, 60.2% and 75.6% of the FCN, and 66.4% and 73.9% of the 3D U-Net. Meanwhile, the cross validation results prove that our method is accurate and stable for liver vessel extraction.
机译:近来,血管的提取引起了医学图像分析中的广泛兴趣。在这项工作中,为了加快收敛速度​​并增强判别特征的表示,我们将ResNet中的残留块结构引入3D U-Net,并构造了一个新的3D Residual U-Net架构师以从中分割肝和门静脉腹部CT量。此外,我们开发了加权Dice损失函数来应对像素不平衡,血管边界分割和小血管分割的挑战。此外,根据预测结果,分别采用3D形态封闭操作和体积分析的后处理方法来平滑容器表面并消除噪声块。与现有的3D DenseNet,FCN和3D U-Net相比,我们方法在肝静脉和门静脉分割中的平均Dice系数分别为71.7%和76.5%,优于3D DenseNet的55.3%和53.9%(60.2) FCN的百分比和75.6%,以及3D U-Net的66.4%和73.9%。同时,交叉验证结果证明我们的方法对肝血管提取是准确且稳定的。

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