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Tree2Tree2: Neuron tracing in 3D

机译:Tree2Tree2:3D中的神经元跟踪

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摘要

We seek a complete description for the neurome of the Drosophila, which involves tracing more than 20,000 neurons. The currently available tracings are sensitive to background clutter and poor contrast of the images. In this paper, we present Tree2Tree2, an automatic neuron tracing algorithm to segment neurons from 3D confocal microscopy images. Building on our previous work in segmentation [1], this method uses an adaptive initial segmentation to detect the neuronal portions, as opposed to a global strategy that often results in under segmentation. In order to connect the disjoint portions, we use a technique called Path Search, which is based on a shortest path approach. An intelligent pruning step is also implemented to delete undesired branches. Tested on 3D confocal microscopy images of GFP labeled Drosophila neurons, the visual and quantitative results suggest that Tree2Tree2 is successful in automatically segmenting neurons in images plagued by background clutter and filament discontinuities.
机译:我们寻求对果蝇的神经元的完整描述,其中涉及追踪超过20,000个神经元。当前可用的跟踪对背景混乱和图像对比度差很敏感。在本文中,我们提出了Tree2Tree2,这是一种自动神经元跟踪算法,用于从3D共聚焦显微镜图像中分割神经元。在我们先前在分割[1]方面的工作的基础上,该方法使用自适应初始分割来检测神经元部分,这与通常导致分割不足的全局策略相反。为了连接不相交的部分,我们使用一种称为“路径搜索”的技术,该技术基于最短路径方法。还执行了智能修剪步骤以删除不需要的分支。在GFP标记的果蝇神经元的3D共聚焦显微镜图像上进行了测试,视觉和定量结果表明Tree2Tree2成功地自动分割了受背景杂波和细丝间断困扰的图像中的神经元。

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