DTU-Net: Learning Topological Similarity for Curvilinear Structure Segmentation

Manxi Lin, Zahra Bashir, M. Tolsgaard, A. Christensen, Aasa Feragen
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引用次数: 1

Abstract

Curvilinear structure segmentation is important in medical imaging, quantifying structures such as vessels, airways, neurons, or organ boundaries in 2D slices. Segmentation via pixel-wise classification often fails to capture the small and low-contrast curvilinear structures. Prior topological information is typically used to address this problem, often at an expensive computational cost, and sometimes requiring prior knowledge of the expected topology. We present DTU-Net, a data-driven approach to topology-preserving curvilinear structure segmentation. DTU-Net consists of two sequential, lightweight U-Nets, dedicated to texture and topology, respectively. While the texture net makes a coarse prediction using image texture information, the topology net learns topological information from the coarse prediction by employing a triplet loss trained to recognize false and missed splits in the structure. We conduct experiments on a challenging multi-class ultrasound scan segmentation dataset as well as a well-known retinal imaging dataset. Results show that our model outperforms existing approaches in both pixel-wise segmentation accuracy and topological continuity, with no need for prior topological knowledge.
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DTU-Net:曲线结构分割的拓扑相似性学习
曲线结构分割在医学成像中很重要,可以在二维切片中量化血管、气道、神经元或器官边界等结构。通过逐像素分类的分割往往不能捕获小而低对比度的曲线结构。通常使用先验拓扑信息来解决此问题,通常需要昂贵的计算成本,并且有时需要对预期拓扑的先验知识。我们提出了DTU-Net,一种数据驱动的方法来保持拓扑的曲线结构分割。DTU-Net由两个连续的轻量级u - net组成,分别用于纹理和拓扑。纹理网络使用图像纹理信息进行粗预测,而拓扑网络则通过使用经过训练的三重损失来识别结构中错误和遗漏的分裂,从而从粗预测中学习拓扑信息。我们在一个具有挑战性的多类超声扫描分割数据集以及一个众所周知的视网膜成像数据集上进行了实验。结果表明,我们的模型在不需要先验拓扑知识的情况下,在像素分割精度和拓扑连续性方面都优于现有的方法。
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