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Tubular Structure Segmentation Using Spatial Fully Connected Network with Radial Distance Loss for 3D Medical Images

机译:使用径向距离损失的空间完全连接网络对3D医学图像进行管状结构分割

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This paper presents a new spatial fully connected tubular network for 3D tubular-structure segmentation. Automatic and complete segmentation of intricate tubular structures remains an unsolved challenge in the medical image analysis. Airways and vasculature pose high demands on medical image analysis as they are elongated fine structures with calibers ranging from several tens of voxels to voxel-level resolution, branching in deeply multi-scale fashion, and with complex topological and spatial relationships. Most machine/deep learning approaches are based on intensity features and ignore spatial consistency across the network that are otherwise distinct in tubular structures. In this work, we introduce 3D slice-by-slice convolutional layers in a U-Net architecture to capture the spatial information of elongated structures. Furthermore, we present a novel loss function, coined radial distance loss, specifically designed for tubular structures. The commonly used methods of cross-entropy loss and generalized Dice loss are sensitive to volumetric variation. However, in tiny tubular structure segmentation, topological errors are as important as volumetric errors. The proposed radial distance loss places higher weight to the centerline, and this weight decreases along the radial direction. Radial distance loss can help networks focus more attention on tiny structures than on thicker tubular structures. We perform experiments on bronchus segmentation on 3D CT images. The experimental results show that compared to the baseline U-Net, our proposed network achieved improvement about 24% and 30% in Dice index and centerline over ratio.
机译:本文提出了一种用于3D管状结构分割的新型空间完全连接管状网络。在医学图像分析中,复杂管状结构的自动和完全分割仍然是尚未解决的挑战。气道和脉管系统对医学图像分析提出了很高的要求,因为它们是细长的精细结构,其口径范围从几十个体素到体素级别的分辨率,以深多尺度的方式分支,并且具有复杂的拓扑和空间关系。大多数机器/深度学习方法都是基于强度特征,并且忽略了整个网络的空间一致性,否则在管状结构中就不会如此。在这项工作中,我们在U-Net架构中引入了3D逐片段的卷积层,以捕获细长结构的空间信息。此外,我们提出了一种新颖的损耗函数,称为径向距离损耗,专门为管状结构设计。交叉熵损失和广义骰子损失的常用方法对体积变化敏感。但是,在微小的管状结构分割中,拓扑误差与体积误差同等重要。建议的径向距离损失将较大的权重分配给中心线,并且该权重沿径向方向减小。径向距离损失可以帮助网络将注意力集中在微小的结构上,而不是在较厚的管状结构上。我们在3D CT图像上进行支气管分割实验。实验结果表明,与基准U-Net相比,我们提出的网络在Dice指数和中心线超速比方面分别提高了约24%和30%。

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