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Fine Segmentation of Tiny Blood Vessel Based on Fully-Connected Conditional Random Field

机译:基于全连接条件随机场的微小血管细分

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In this paper, we present an efficient trainable conditional random field (CRF) model using a newly proposed scale-targeted loss function to improve the segmentation accuracy on tiny blood vessels in 3D medical images. Blood vessel segmentation is still a big challenge in medical image processing field due to its elongated structure and low contrast. Conventional local neighboring CRF model has poor segmentation performance on tiny elongated structures due to its poor capability capturing pairwise potentials. To overcome this drawback, we use a fully-coimected CRF model to capture the pairwise potentials. This paper also introduces a new scale-targeted loss function aiming to improve the segmentation accuracy on tiny blood vessels. Experimental results on both phantom data and clinical CT data showed that the proposed approach contributes to the segmentation accuracy on tiny blood vessels. Compared to previous loss function, our proposed loss function improved about 10% sensitivity on phantom data and 14% on clinical CT data.
机译:在本文中,我们使用新的尺度目标损失功能提高了一种高效的可训练条件随机场(CRF)模型,以提高3D医学图像中微小血管的分割精度。由于其细长的结构和低对比度,血管分割仍然是医学图像处理领域的大挑战。传统的局部相邻的CRF模型在微小细长结构上具有差的分割性能,这是由于其能力较差的成对势差。为了克服这一缺点,我们使用完全凝视的CRF模型来捕获成对电位。本文还介绍了一种新的尺度目标损失函数,旨在提高微小血管的分割精度。幻像数据和临床CT数据的实验结果表明,该方法有助于微小血管的分割精度。与以前的损失函数相比,我们所提出的损失函数在幻影数据上提高了约10%的灵敏度,临床CT数据上的14%。

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