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Filling Large Discontinuities in 3D Vascular Networks Using Skeleton- and Intensity-Based Information

机译:使用基于骨架和强度的信息填充3D血管网络中的大型不连续性

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Segmentation of vasculature is a common task in many areas of medical imaging, but complex morphology and weak signal often lead to incomplete segmentations. In this paper, we present a new gap filling strategy for 3D vascular networks. The novelty of our approach is to combine both skeleton- and intensity-based information to fill large discontinuities. Our approach also does not make any hypothesis on the network topology, which is particularly important for tumour vasculature due to the chaotic arrangement of vessels within tumours. Synthetic results show that using intensity-based information, in addition to skeleton-based information, can make the detection of large discontinuities more robust. Our strategy is also shown to outperform a classic gap filling strategy on 3D Micro-CT images of preclinical tumour models.
机译:脉管系统的分割是医学成像的许多领域的共同任务,但复杂的形态和弱信号通常导致不完全的细分。在本文中,我们为3D血管网络提供了一种新的差距填充策略。我们的方法的新颖性是将基于骨架和强度的信息组合以填补大型不连续性。我们的方法也没有对网络拓扑产生任何假设,这对于由于肿瘤内血管的混沌排列而对肿瘤脉管构造尤为重要。合成结果表明,使用基于强度的信息,除了基于骨架的信息之外,还可以检测大型不连续性更强。我们的策略还显示出突出的临床肿瘤模型的3D微CT图像上的经典差距填充策略。

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