通过逆行追踪实验建立细胞类型特异性中尺度鼠类连接体模型

IF 3.6 3区 医学 Q2 NEUROSCIENCES
Network Neuroscience Pub Date : 2023-12-22 eCollection Date: 2023-01-01 DOI:10.1162/netn_a_00337
Samson Koelle, Dana Mastrovito, Jennifer D Whitesell, Karla E Hirokawa, Hongkui Zeng, Marina Meila, Julie A Harris, Stefan Mihalas
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引用次数: 0

摘要

艾伦小鼠脑连接图谱包括针对不同结构和类别的投射神经元的逆行追踪实验。除了在 C57BL/6 野生型小鼠中进行区域性顺行追踪外,还有很大一部分实验是使用转基因 Cre 线粒体进行的。这样就能获得特定细胞类别的全脑连接信息,而类别是由转基因品系定义的。然而,尽管实验数量庞大,但仍无法覆盖现有细胞类别存在的所有区域。在此,我们研究了我们能在多大程度上填补这些空白,并估算出细胞类别特异性连接功能,前提是简化假设,即附近体素具有平滑变化的投射,但这些投射张量会根据投射细胞的区域和类别发生急剧变化。本文介绍了如何将 Cre 线追踪实验转化为代表源结构和目标结构之间连接强度的特定类别连接矩阵。我们引入并验证了一种用于创建连接矩阵的新型统计模型。我们将之前用于填补空间空白的 Nadaraya-Watson 核学习方法扩展到了填补细胞类连接信息的空白。为此,我们根据特定类别的平均区域化投影构建了一个 "细胞类别空间",并在三维空间和这个抽象空间中结合平滑处理,以共享类似神经元类别之间的信息。利用这种方法,我们使用多级分辨率构建了一组连通性矩阵,其中假定了连通性的不连续性。我们发现,从该模型中获得的连通性显示了预期的细胞类型和结构特异性连通性。我们还表明,野生型连通性矩阵可以使用一组稀疏因子进行分解,并分析了这种潜在变量模型的信息量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modeling the cell-type-specific mesoscale murine connectome with anterograde tracing experiments.

The Allen Mouse Brain Connectivity Atlas consists of anterograde tracing experiments targeting diverse structures and classes of projecting neurons. Beyond regional anterograde tracing done in C57BL/6 wild-type mice, a large fraction of experiments are performed using transgenic Cre-lines. This allows access to cell-class-specific whole-brain connectivity information, with class defined by the transgenic lines. However, even though the number of experiments is large, it does not come close to covering all existing cell classes in every area where they exist. Here, we study how much we can fill in these gaps and estimate the cell-class-specific connectivity function given the simplifying assumptions that nearby voxels have smoothly varying projections, but that these projection tensors can change sharply depending on the region and class of the projecting cells. This paper describes the conversion of Cre-line tracer experiments into class-specific connectivity matrices representing the connection strengths between source and target structures. We introduce and validate a novel statistical model for creation of connectivity matrices. We extend the Nadaraya-Watson kernel learning method that we previously used to fill in spatial gaps to also fill in gaps in cell-class connectivity information. To do this, we construct a "cell-class space" based on class-specific averaged regionalized projections and combine smoothing in 3D space as well as in this abstract space to share information between similar neuron classes. Using this method, we construct a set of connectivity matrices using multiple levels of resolution at which discontinuities in connectivity are assumed. We show that the connectivities obtained from this model display expected cell-type- and structure-specific connectivities. We also show that the wild-type connectivity matrix can be factored using a sparse set of factors, and analyze the informativeness of this latent variable model.

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来源期刊
Network Neuroscience
Network Neuroscience NEUROSCIENCES-
CiteScore
6.40
自引率
6.40%
发文量
68
审稿时长
16 weeks
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