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Shape Representation for Efficient Landmark-Based Segmentation in 3-D

机译:3-D中基于地标的有效分割的形状表示

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摘要

In this paper, we propose a novel approach to landmark-based shape representation that is based on transportation theory, where landmarks are considered as sources and destinations, all possible landmark connections as roads, and established landmark connections as goods transported via these roads. Landmark connections, which are selectively established, are identified through their statistical properties describing the shape of the object of interest, and indicate the least costly roads for transporting goods from sources to destinations. From such a perspective, we introduce three novel shape representations that are combined with an existing landmark detection algorithm based on game theory. To reduce computational complexity, which results from the extension from 2-D to 3-D segmentation, landmark detection is augmented by a concept known in game theory as strategy dominance. The novel shape representations, game-theoretic landmark detection and strategy dominance are combined into a segmentation framework that was evaluated on 3-D computed tomography images of lumbar vertebrae and femoral heads. The best shape representation yielded symmetric surface distance of 0.75 mm and 1.11 mm, and Dice coefficient of 93.6% and 96.2% for lumbar vertebrae and femoral heads, respectively. By applying strategy dominance, the computational costs were further reduced for up to three times.
机译:在本文中,我们提出了一种基于运输理论的基于地标的形状表示的新方法,其中将地标视为源和目的地,将所有可能的地标连接视为道路,并将已建立的地标连接视为通过这些道路运输的货物。选择性建立的地标连接通过描述感兴趣对象的形状的统计属性进行标识,并指示从源到目的地运输货物的成本最低的道路。从这种角度出发,我们介绍了三种新颖的形状表示,它们与基于博弈论的现有界标检测算法相结合。为了减少从2D分割到3D分割所导致的计算复杂性,地标检测通过博弈论中称为策略优势的概念进行了增强。新颖的形状表示,博弈论界标检测和策略优势被组合到一个分割框架中,该分割框架在腰椎和股骨头的3D计算机断层扫描图像上进行了评估。最佳的形状表现方式是腰椎和股骨头的对称表面距离分别为0.75 mm和1.11 mm,Dice系数分别为93.6%和96.2%。通过应用策略优势,计算成本进一步降低了三倍。

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