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Identifying, tabulating, and analyzing contacts between branched neuron morphologies

机译:识别,制表和分析分支神经元形态之间的联系

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Simulating neural tissue requires the construction of models of the anatomical structure and physiological function of neural microcircuitry. The Blue Brain Project is simulating the microcircuitry of a neocortical column with very high structural and physiological precision. This paper describes how we model anatomical structure by identifying, tabulating, and analyzing contacts between 104 neurons in a morphologically precise model of a column. A contact occurs when one element touches another, providing the opportunity for the subsequent creation of a simulated synapse. The architecture of our application divides the problem of detecting and analyzing contacts among thousands of processors on the IBM Blue Gene/L~(TM) supercomputer. Data required for contact tabulation is encoded with geometrical data for contact detection and is exchanged among processors. Each processor selects a subset of neurons and then iteratively 1) divides the number of points that represents each neuron among column subvolumes, 2) detects contacts in a subvolume, 3) tabulates arbitrary categories of local contacts, 4) aggregates and analyzes global contacts, and 5) revises the contents of a column to achieve a statistical objective. Computing, analyzing, and optimizing local data in parallel across distributed global data objects involve problems common to other domains (such as three-dimensional image processing and registration). Thus, we discuss the generic nature of the application architecture.
机译:模拟神经组织需要构建神经微电路的解剖结构和生理功能模型。蓝脑计划正在以极高的结构和生理精度来模拟新皮质柱的微电路。本文介绍了如何通过识别,列表化和分析列的形态学精确模型中的104个神经元之间的接触来对解剖结构进行建模。当一个元素接触另一个时,就会发生接触,从而为随后创建模拟突触提供了机会。我们应用程序的体系结构将检测和分析IBM Blue Gene / L〜(TM)超级计算机上成千上万个处理器之间的联系的问题划分了下来。接触表所需的数据与用于接触检测的几何数据一起编码,并在处理器之间交换。每个处理器选择一个神经元子集,然后迭代1)在列子体积中划分代表每个神经元的点数; 2)检测子体积中的联系人; 3)列出局部联系人的任意类别; 4)汇总并分析全局联系人,和5)修改列的内容以实现统计目标。跨分布式全局数据对象并行地计算,分析和优化本地数据涉及其他域共有的问题(例如三维图像处理和配准)。因此,我们讨论了应用程序体系结构的一般性质。

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