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首页> 外文期刊>Frontiers in Neuroinformatics >Brain-Wide Mapping of Axonal Connections: Workflow for Automated Detection and Spatial Analysis of Labeling in Microscopic Sections
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Brain-Wide Mapping of Axonal Connections: Workflow for Automated Detection and Spatial Analysis of Labeling in Microscopic Sections

机译:轴突连接的全脑映射:微观部分中标记的自动检测和空间分析的工作流程

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Axonal tracing techniques are powerful tools for exploring the structural organization of neuronal connections. Tracers such as biotinylated dextran amine (BDA) and Phaseolus vulgaris leucoagglutinin ( Pha -L) allow brain-wide mapping of connections through analysis of large series of histological section images. We present a workflow for efficient collection and analysis of tract-tracing datasets with a focus on newly developed modules for image processing and assignment of anatomical location to tracing data. New functionality includes automatic detection of neuronal labeling in large image series, alignment of images to a volumetric brain atlas, and analytical tools for measuring the position and extent of labeling. To evaluate the workflow, we used high-resolution microscopic images from axonal tracing experiments in which different parts of the rat primary somatosensory cortex had been injected with BDA or Pha -L. Parameters from a set of representative images were used to automate detection of labeling in image series covering the entire brain, resulting in binary maps of the distribution of labeling. For high to medium labeling densities, automatic detection was found to provide reliable results when compared to manual analysis, whereas weak labeling required manual curation for optimal detection. To identify brain regions corresponding to labeled areas, section images were aligned to the Waxholm Space (WHS) atlas of the Sprague Dawley rat brain (v2) by custom-angle slicing of the MRI template to match individual sections. Based on the alignment, WHS coordinates were obtained for labeled elements and transformed to stereotaxic coordinates. The new workflow modules increase the efficiency and reliability of labeling detection in large series of images from histological sections, and enable anchoring to anatomical atlases for further spatial analysis and comparison with other data.
机译:轴突追踪技术是探索神经元连接的结构组织的有力工具。诸如生物素化的右旋糖酐胺(BDA)和菜豆白斑凝集素(Pha -L)等示踪剂可通过分析大量组织切片图像对大脑范围内的连接进行映射。我们介绍了一种有效收集和分析管道跟踪数据集的工作流程,重点是用于图像处理和将解剖位置分配给跟踪数据的新开发模块。新功能包括自动检测大图像系列中的神经元标记,将图像与体积脑图谱对齐以及用于测量标记位置和范围的分析工具。为了评估工作流程,我们使用了来自轴突追踪实验的高分辨率显微图像,其中在大鼠原代体感皮层的不同部位注射了BDA或Pha -L。来自一组代表性图像的参数用于自动检测覆盖整个大脑的图像序列中的标记,从而生成标记分布的二元图。对于高到中等的标记密度,与手动分析相比,发现自动检测可提供可靠的结果,而弱标记需要手动调整才能获得最佳检测。为了识别与标记区域相对应的大脑区域,将切片图像通过MRI模板的自定义角度切片与Sprague Dawley大鼠大脑(v2)的Waxholm空间(WHS)地图集对齐,以匹配各个切片。基于比对,获得标记元素的WHS坐标,并将其转换为立体坐标。新的工作流程模块提高了来自组织学切片的大系列图像中标签检测的效率和可靠性,并使锚定到解剖图谱上可以进行进一步的空间分析以及与其他数据进行比较。

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