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Computational methods and challenges for large-scale circuit mapping

机译:大规模电路映射的计算方法和挑战

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摘要

The connectivity architecture of neuronal circuits is essential to understand how brains work, yet our knowledge about the neuronal wiring diagrams remains limited and partial. Technical breakthroughs in labeling and imaging methods starting more than a century ago have advanced knowledge in the field. However, the volume of data associated with imaging a whole brain or a significant fraction thereof, with electron or light microscopy, has only recently become amenable to digital storage and analysis. A mouse brain imaged at light-microscopic resolution is about a terabyte of data, and 1mm 3 of the brain at EM resolution is about half a petabyte. This has given rise to a new field of research, computational analysis of large-scale neuroanatomical data sets, with goals that include reconstructions of the morphology of individual neurons as well as entire circuits. The problems encountered include large data management, segmentation and 3D reconstruction, computational geometry and workflow management allowing for hybrid approaches combining manual and algorithmic processing. Here we review this growing field of neuronal data analysis with emphasis on reconstructing neurons from EM data cubes.
机译:神经元电路的连通性体系结构对于理解大脑的工作原理至关重要,但是我们对神经元接线图的了解仍然有限且不完整。从一个多世纪前开始的标记和成像方法的技术突破已在该领域获得了先进的知识。但是,与电子或光学显微镜对整个大脑或其大部分成像相关的数据量直到最近才适合数字存储和分析。以光学显微镜分辨率成像的小鼠大脑大约为TB的数据,在EM分辨率下为1mm 3的大脑大约为PB的一半。这引起了一个新的研究领域,即大规模神经解剖学数据集的计算分析,其目标包括重构单个神经元以及整个回路的形态。遇到的问题包括大数据管理,分段和3D重建,计算几何和工作流管理,从而允许将手动和算法处理相结合的混合方法。在这里,我们回顾了神经元数据分析这个不断发展的领域,重点是从EM数据立方体重建神经元。

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