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Automated scalable segmentation of neurons from multispectral images

机译:来自多光谱图像的神经元自动可分级分割

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Reconstruction of neuroanatomy is a fundamental problem in neuroscience. Stochastic expression of colors in individual cells is a promising tool, although its use in the nervous system has been limited due to various sources of variability in expression. Moreover, the intermingled anatomy of neuronal trees is challenging for existing segmentation algorithms. Here, we propose a method to automate the segmentation of neurons in such (potentially pseudo-colored) images. The method uses spatio-color relations between the voxels, generates supervoxels to reduce the problem size by four orders of magnitude before the final segmentation, and is parallelizable over the supervoxels. To quantify performance and gain insight, we generate simulated images, where the noise level and characteristics, the density of expression, and the number of fluorophore types are variable. We also present segmentations of real Brainbow images of the mouse hippocampus, which reveal many of the dendritic segments.
机译:神经解剖学的重建是神经科学中的一个基本问题。颜色的随机表达在单个细胞中是一种很有前途的工具,尽管由于表达变异的各种来源,其在神经系统中的使用受到了限制。此外,对于现有的分割算法,神经元树的混合解剖结构具有挑战性。在这里,我们提出了一种在这种(可能是伪彩色的)图像中自动分割神经元的方法。该方法使用体素之间的时空颜色关系,生成超级体素以在最终分割之前将问题大小减小四个数量级,并且可在这些超级体素上并行化。为了量化性能并获得洞察力,我们生成了模拟图像,其中的噪声水平和特征,表达的密度以及荧光团类型的数量是可变的。我们还提出了小鼠海马的真实Brainbow图像的分割,揭示了许多树突状分割。

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