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Improved method for automatic cerebrovascular labelling using stochastic tunnelling

机译:改进的随机隧道自动脑血管标记方法

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The complexity and high morphological variation of cerebral vasculature make comparison and analysis of the vessel patterning difficult and laborious. A framework for automatic labelling of the cerebral vessels in high resolution 3D images has been introduced in the literature that addresses this need. The segmented vasculature is represented as an attributed relational graph. Each vessel segment is an edge in the graph with local attributes such as diameter and length, as well as relational features representing the connectivity of the vessel segments. Each edge in the graph is automatically labelled with an anatomical name through a stochastic relaxation algorithm. In this paper, we compare the performance of four different optimization schemes, including stochastic tunnelling, for automatic labelling. We validated our method on 7 micro-CT images of C57Bl/6J mice with a leave-one-out test. The mean recognition rate of complete cerebrovasculature using stochastic tunnelling is 80% and shows a 2% (>60 vessel segments) improvement compared to simulated annealing optimization.
机译:脑脉管系统的复杂性和高形态变化使得比较和分析血管图案变得困难而费力。在高分辨率的3D图像中自动标记脑血管的框架已在文献中提出,可以解决这一需求。分割的脉管系统表示为属性关系图。每个血管段都是图形中的一条边,具有诸如直径和长度之类的局部属性,以及代表血管段连通性的关系特征。通过随机松弛算法,图中的每个边缘都会自动用解剖名称标记。在本文中,我们比较了四种用于随机标记的优化方案的性能,包括随机隧道效应。我们通过留一法测试在C57Bl / 6J小鼠的7张微CT图像上验证了我们的方法。与模拟退火优化相比,使用随机隧穿的完整脑血管系统的平均识别率为80%,并且显示出2%(> 60个血管段)的改善。

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