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Reconstruction of 3D Neuronal Structures from Densely Packed Electron Microscopy Data Stacks

机译:从密集包装的电子显微镜数据堆栈重建3D神经元结构

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摘要

The goal of fully decoding how the brain works requires a detailed wiring diagram of the brain network that reveals the complete connectivity matrix. Recent advances in high-throughput 3D electron microscopy (EM) image acquisition techniques have made it possible to obtain high-resolution 3D imaging data that allows researchers to follow axons and dendrites and to identify pre-synaptic and post-synaptic sites, enabling the reconstruction of detailed neural circuits of the nervous system at the level of synapses. However, these massive data sets pose unique challenges to structural reconstruction because the inevitable staining noise, incomplete boundaries, and inhomogeneous staining intensities increase difficulty of 3D reconstruction and visualization.In this dissertation, a new set of algorithms are provided for reconstruction of neuronal morphology from stacks of serial EM images. These algorithms include (1) segmentation algorithms for obtaining the full geometry of neural circuits, (2) interactive segmentation tools for manual correction of erroneous segmentations, and (3) a validation method for obtaining a topologically correct segmentation when a set of segmentation alternatives are available. Experimental results obtained by using EM images containing densely packed cells demonstrate that (1) the proposed segmentation methods can successfully reconstruct full anatomical structures from EM images, (2) the editing tools provide a way for the user to easily and quickly refine incorrect segmentations, (3) and the validation method is effective in combining multiple segmentation results. The algorithms presented in this dissertation are expected to contribute to the reconstruction of the connectome and to open new directions in the development of reconstruction methods.
机译:要完全解码大脑的工作原理,需要详细的大脑网络接线图,以揭示完整的连通性矩阵。高通量3D电子显微镜(EM)图像采集技术的最新进展使得获得高分辨率3D成像数据成为可能,这使研究人员能够追踪轴突和树突,并识别突触前和突触后部位,从而实现重建突触水平的详细神经系统神经回路。然而,这些庞大的数据集对结构重建提出了独特的挑战,因为不可避免的染色噪声,边界不完整和染色强度不均匀会增加3D重建和可视化的难度。本文提供了一套新的算法​​来重建神经元形态堆栈的串行EM映像。这些算法包括:(1)用于获得神经回路的完整几何形状的分段算法;(2)用于手动校正错误分段的交互式分段工具;以及(3)当一组分段备选方案被获得时用于获得拓扑正确分段的验证方法。可用。通过使用包含密集排列的细胞的EM图像获得的实验结果表明,(1)提出的分割方法可以从EM图像成功重建完整的解剖结构,(2)编辑工具为用户提供了一种方法,可让用户轻松快捷地细化错误的分割, (3)和验证方法可以有效地组合多个分割结果。本文所提出的算法有望为连接组的重建做出贡献,并为重建方法的发展开辟新的方向。

著录项

  • 作者

    Yang Huei-Fang;

  • 作者单位
  • 年度 2011
  • 总页数
  • 原文格式 PDF
  • 正文语种 en_US
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