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APP2: automatic tracing of 3D neuron morphology based on hierarchical pruning of a gray-weighted image distance-tree

机译:APP2:基于灰度加权图像距离树的分层修剪,自动跟踪3D神经元形态

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Motivation: Tracing of neuron morphology is an essential technique in computational neuroscience. However, despite a number of existing methods, few open-source techniques are completely or sufficiently automated and at the same time are able to generate robust results for real 3D microscopy images. Results: We developed all-path-pruning 2.0 (APP2) for 3D neuron tracing. The most important idea is to prune an initial reconstruction tree of a neuron’s morphology using a long-segment-first hierarchical procedure instead of the original termini-first-search process in APP. To further enhance the robustness of APP2, we compute the distance transform of all image voxels directly for a gray-scale image, without the need to binarize the image before invoking the conventional distance transform. We also design a fast-marching algorithm-based method to compute the initial reconstruction trees without pre-computing a large graph. This method allows us to trace large images. We bench-tested APP2 on -700 3D microscopic images and found that APP2 can generate more satisfactory results in most cases than several previous methods. Availability: The software has been implemented as an open-source Vaa3D plugin. The source code is available in the Vaa3D code repository http://vaa3d.org.
机译:动机:跟踪神经元形态是计算神经科学中的一项必不可少的技术。但是,尽管有许多现有方法,但是很少有开源技术能够完全或充分地自动化,并且同时能够为真实的3D显微镜图像生成可靠的结果。结果:我们为3D神经元跟踪开发了全路径修剪2.0(APP2)。最重要的想法是使用长段优先的层次结构而不是APP中原始的“终点优先”搜索过程来修剪神经元形态的初始重建树。为了进一步增强APP2的鲁棒性,我们直接为灰度图像计算所有图像体素的距离变换,而无需在调用常规距离变换之前对图像进行二值化。我们还设计了一种基于快速行进算法的方法来计算初始重建树,而无需预先计算大型图。这种方法使我们可以跟踪大图像。我们在-700张3D显微图像上对APP2进行了台架测试,发现在大多数情况下,APP2可以比以前的几种方法产生更令人满意的结果。可用性:该软件已实现为开源Vaa3D插件。可以在Vaa3D代码存储库http://vaa3d.org中找到源代码。

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