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Advancing Pancreas Segmentation in Multi-protocol MRI Volumes Using Hausdorff-Sine Loss Function

机译:使用Hausdorff-Sine损失函数推进多协议MRI体积中的胰腺分割

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Computing pancreatic morphology in 3D radiological scans could provide significant insight about a medical condition. However, segmenting the pancreas in magnetic resonance imaging (MRI) remains challenging due to high inter-patient variability. Also, the resolution and speed of MRI scanning present artefacts that blur the pancreas boundaries between overlapping anatomical structures. This paper proposes a dual-stage automatic segmentation method: (1) a deep neural network' is trained to address the problem of vague organ boundaries in high class-imbalanced data. This network integrates a novel loss function to rigorously optimise boundary delineation using the modified Hausdorff metric and a sinusoidal component; (2) Given a test MRI volume, the output of the trained network predicts a sequence of targeted 2D pancreas classes that are reconstructed as a volumetric binary mask. An energy-minimisation approach fuses a learned digital contrast model to suppress the intensities of non-pancreas classes, which, combined with the binary volume performs a refined segmentation in 3D while revealing dense boundary detail. Experiments are performed on two diverse MRI datasets containing 180 and 120 scans, in which the proposed approach achieves a mean Dice score of 84.1 ± 4.6% and 85.7 ± 2.3%, respectively. This approach is statistically stable and outperforms state-of-the-art methods on MRI.
机译:在3D放射扫描中计算胰腺形态可以提供有关医疗状况的重要见解。然而,由于患者之间的高度可变性,在磁共振成像(MRI)中分割胰腺仍然具有挑战性。同样,MRI扫描的分辨率和速度也带来了伪影,这些伪影模糊了重叠的解剖结构之间的胰腺边界。本文提出了一种双阶段自动分割方法:(1)训练一个深度神经网络以解决高级不平衡数据中模糊的器官边界问题。该网络集成了一个新颖的损失函数,可使用改进的Hausdorff度量和正弦分量来严格优化边界轮廓; (2)给定测试MRI的体积,训练网络的输出将预测一系列目标二维胰腺类别,这些类别将重建为体积二进制掩码。能量最小化方法融合了学习到的数字对比度模型以抑制非胰腺类别的强度,该类别与二进制体积结合可在3D中执行精细分割,同时显示出密集的边界细节。在包含180和120次扫描的两个不同的MRI数据集上进行了实验,其中所提出的方法分别获得了平均Dice分数84.1±4.6%和85.7±2.3%。这种方法在统计上是稳定的,并且优于MRI上的最新方法。

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