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Improved marked point process priors for single neurite tracing

机译:改进的标记点处理先验,用于单个神经突跟踪

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Recent advances in neuroimaging has produced a spurt for automatic neuronal reconstruction algorithms for large scale data. A stochastic marked point process framework for unsupervised, automatic reconstruction of single neurons has been proposed. In this paper, we introduce improved priors modeling arborization patterns encountered in neurons for efficient detection of bifurcation junctions, terminal nodes, and intermediate points on neurite branches. These priors also enforce constraints for preserving the connectedness of the neuronal tree components in spite of imperfect labeling causing intensity inhomogeneity and discontinuities in branches. To demonstrate the effectiveness of the proposed priors, we performed neurite tracing on 3D light microscopy images of Olfactory Projection Fibre axons from the DIADEM data set and obtained good scores. We also analyzed the errors and their sources in the neurite tracing pipeline, in the hope of better integration of neuroimaging and automated tracing.
机译:神经影像学的最新进展为大规模数据的自动神经元重建算法带来了突飞猛进的发展。提出了一种随机的标记点过程框架,用于无监督的自动重建单个神经元。在本文中,我们介绍了神经元中遇到的经过改进的先验建模树状化模式,以有效检测分叉结,终末节和神经突分支上的中间点。尽管标记不完善会导致强度不均匀和分支不连续,但这些先验还对保留神经元树组件的连接性施加了约束。为了证明所提出的先验方法的有效性,我们从DIADEM数据集中对嗅觉投射纤维轴突的3D光学显微镜图像进行了神经突跟踪,并获得了良好的评分。我们还分析了神经突跟踪管道中的错误及其来源,以期更好地集成神经成像和自动跟踪。

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