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Unsupervised Neural Tracing In Densely Labeled Multispectral Brainbow Images

机译:在密集标记的多光谱颅骨图像中无监督的神经追踪

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Recent advances in imaging technologies for generating large quantities of high-resolution 3D images, especially multispectral labeling technology such as Brainbow, permits unambiguous differentiation of neighboring neurons in a densely labeled brain. This enables, for the first time, the possibility of studying the connectivity between many neurons from a light microscopy image. The lack of reliable automated neuron morphology reconstruction, however, makes data analysis the bottleneck of extracting rich informatics in neuroscience. Supervoxel-based neuron segmentation methods have been proposed to solve this problem, however, previous approaches have been impeded by the large numbers of errors which arise in the final segmentation. In this paper, we present a novel unsupervised approach to trace neurons from multispectral Brainbow images, which prevents segmentation errors and tracing continuity errors using two innovations: First, we formulate a Gaussian mixture model-based clustering strategy to improve the separation of segmented color channels that provides accurate skeletons for the next steps. Then, a skeleton graph approach is proposed to allow the identification and correction of discontinuities in the neuron tree topology. We find that these innovations allow better performance over current state-of-the-art approaches, which results in more accurate neuron tracing results close to human expert annotation.
机译:用于产生大量高分辨率3D图像的成像技术的最新进展,尤其是多光谱标记技术,例如脑袋,允许在密集标记的大脑中邻近神经元的明确分化。这首次启用了从光学显微镜图像中研究许多神经元之间的连接的可能性。然而,缺乏可靠的自动神经元形态重建,使数据分析在神经科学中提取丰富信息的瓶颈。已经提出了基于Superveel的神经元分割方法来解决这个问题,然而,先前的方法已经受到最终分割中出现的大量误差。在本文中,我们提出了一种从多光谱颅骨图像中追踪神经元的新型无监督方法,这可以防止使用两种创新的分割误差和跟踪连续性误差:首先,我们制定了基于高斯混合模型的聚类策略,以改善分段色信的分离为下一步提供准确的骷髅。然后,提出了一种骨架图方法,以允许识别和校正神经元树拓扑中的不连续性。我们发现这些创新允许对当前最先进的方法进行更好的性能,这导致更准确的神经元跟踪结果接近人类专家注释。

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