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A Fixed-Point Model for Pancreas Segmentation in Abdominal CT Scans

机译:腹部CT扫描中胰腺分割的定点模型

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Deep neural networks have been widely adopted for automatic organ segmentation from abdominal CT scans. However, the segmentation accuracy of some small organs (e.g., the pancreas) is sometimes below satisfaction, arguably because deep networks are easily disrupted by the complex and variable background regions which occupies a large fraction of the input volume. In this paper, we formulate this problem into a fixed-point model which uses a predicted segmentation mask to shrink the input region. This is motivated by the fact that a smaller input region often leads to more accurate segmentation. In the training process, we use the ground-truth annotation to generate accurate input regions and optimize network weights. On the testing stage, we fix the network parameters and update the segmentation results in an iterative manner. We evaluate our approach on the NIH pancreas segmentation dataset, and outperform the state-of-the-art by more than 4%, measured by the average Dice-S0rensen Coefficient (DSC). In addition, we report 62.43% DSC in the worst case, which guarantees the reliability of our approach in clinical applications.
机译:深度神经网络已被广泛用于腹部CT扫描的自动器官分割。但是,某些小器官(例如胰腺)的分割精度有时会不令人满意,这可能是因为深层网络容易被占输入量很大一部分的复杂且可变的背景区域所破坏。在本文中,我们将此问题公式化为定点模型,该模型使用预测的分割掩码来缩小输入区域。这是由以下事实引起的:较小的输入区域通常会导致更准确的分段。在训练过程中,我们使用真实的注释来生成准确的输入区域并优化网络权重。在测试阶段,我们固定网络参数并以迭代方式更新细分结果。我们评估了我们在NIH胰腺分割数据集上的方法,并以平均Dice-S0rensen系数(DSC)衡量,比最新技术高出4%以上。此外,在最坏的情况下,我们报告了62.43%的DSC,这保证了我们方法在临床应用中的可靠性。

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