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Rivulet: 3D Neuron Morphology Tracing with Iterative Back-Tracking

机译:Rivulet:3D神经元形态学跟踪与迭代回溯

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The digital reconstruction of single neurons from 3D confocal microscopic images is an important tool for understanding the neuron morphology and function. However the accurate automatic neuron reconstruction remains a challenging task due to the varying image quality and the complexity in the neuronal arborisation. Targeting the common challenges of neuron tracing, we propose a novel automatic 3D neuron reconstruction algorithm, named Rivulet, which is based on the multi-stencils fast-marching and iterative back-tracking. The proposed Rivulet algorithm is capable of tracing discontinuous areas without being interrupted by densely distributed noises. By evaluating the proposed pipeline with the data provided by the Diadem challenge and the recent BigNeuron project, Rivulet is shown to be robust to challenging microscopic imagestacks. We discussed the algorithm design in technical details regarding the relationships between the proposed algorithm and the other state-of-the-art neuron tracing algorithms.
机译:从3D共聚焦显微图像对单个神经元进行数字重建是了解神经元形态和功能的重要工具。然而,由于图像质量的变化和神经元树状化的复杂性,准确的自动神经元重建仍然是一项艰巨的任务。针对神经元跟踪的常见挑战,我们提出了一种新颖的自动3D神经元重建算法,称为Rivulet,该算法基于多模板快速行进和迭代回溯。提出的Rivulet算法能够跟踪不连续区域,而不会被密集分布的噪声干扰。通过使用Diadem挑战赛和最近的BigNeuron项目提供的数据评估拟议中的管道,Rivulet被证明对挑战显微图像栈具有鲁棒性。我们在技术细节上讨论了算法设计,有关所提出的算法与其他现有的神经元跟踪算法之间的关系。

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