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Multi-electrode array recording and data analysis methods for molluscan central nervous systems

机译:用于软体动物中枢神经系统的多电极阵列记录和数据分析方法

摘要

In this work the use of the central nervous system (CNS) of the aquatic snail Lymnaea stagnalis on planar multi-electrode arrays (MEAs) was developed and analysis methods for the data generated were created. A variety of different combinations of configurations of tissue from the Lymnaea CNS were explored to determine the signal characteristics that could be recorded by sixty channel MEAs. In particular, the suitability of the semi-intact system consisting of the lips, oesophagus, CNS, and associated nerve connectives was developed for use on the planar MEA. The recording target area of the dorsal surface of the buccal ganglia was selected as being the most promising for study and recordings of its component cells during fictive feeding behaviour stimulated by sucrose were made. The data produced by this type of experimentation is very high volume and so its analysis required the development of a custom set of software tools. The goal of this tool set is to find the signal from individual neurons in the data streams of the electrodes of a planar MEA, to estimate their position, and then to predict their causal connectivity. To produce such an analysis techniques for noise filtration, neural spike detection, and group detection of bursts of spikes were created to pre-process electrode data streams. The Kohonen self-organising map (SOM) algorithm was adapted for the purpose of separating detected spikes into data streams representing the spike output of individual cells found in the target system. A significant addition to SOM algorithm was developed by the concurrent use of triangulation methods based on current source density analysis to predict the position of individual cells based on their spike output on more than one electrode. The likely functional connectivity of individual neurons identified by the SOM technique were analysed through the use of a statistical causality method known as Granger causality/causal connectivity. This technique was used to produce a map of the likely connectivity between neural sources.
机译:在这项工作中,开发了在平面多电极阵列(MEAs)上使用水生蜗牛幼枝的中枢神经系统(CNS),并为产生的数据创建了分析方法。探索了来自Lymnaea CNS的组织结构的各种不同组合,以确定可以由六十个通道MEA记录的信号特征。特别是,开发了由唇,食道,中枢神经系统和相关神经连接物组成的半完整系统的适用性,以用于平面MEA。选择颊神经节背表面的记录目标区域作为最有希望的研究对象,并在蔗糖刺激的虚构进食行为期间记录其组成细胞。通过这种类型的实验产生的数据量非常大,因此要进行分析需要开发一套定制的软件工具。该工具集的目标是从平面MEA电极数据流中的单个神经元中找到信号,估计其位置,然后预测其因果关系。为了产生这种用于噪声过滤的分析技术,创建了神经尖峰检测和尖峰脉冲的组检测以预处理电极数据流。 Kohonen自组织图(SOM)算法适用于将检测到的尖峰分离为代表目标系统中发现的单个单元格的尖峰输出的数据流的目的。通过同时使用基于电流源密度分析的三角测量方法,对SOM算法进行了重大改进,以根据单个电池在多个电极上的峰值输出来预测单个电池的位置。通过使用称为格兰杰因果关系/因果联系的统计因果关系方法,分析了通过SOM技术识别出的单个神经元可能的功能联系。该技术用于生成神经源之间可能的连通性图。

著录项

  • 作者

    Passaro Peter A;

  • 作者单位
  • 年度 2012
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  • 原文格式 PDF
  • 正文语种 English
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