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首页> 外文期刊>Neuroscience Research: The Official Journal of the Japan Neuroscience Society >A new approach to spike sorting for multi-neuronal activities recorded with a tetrode--how ICA can be practical.
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A new approach to spike sorting for multi-neuronal activities recorded with a tetrode--how ICA can be practical.

机译:一种用四极杆记录多神经元活动的峰值分类的新方法-ICA如何实用。

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Multi-neuronal recording with a tetrode is a powerful technique to reveal neuronal interactions in local circuits. However, it is difficult to detect precise spike timings among closely neighboring neurons because the spike waveforms of individual neurons overlap on the electrode when more than two neurons fire simultaneously. In addition, the spike waveforms of single neurons, especially in the presence of complex spikes, are often non-stationary. These problems limit the ability of ordinary spike sorting to sort multi-neuronal activities recorded using tetrodes into their single-neuron components. Though sorting with independent component analysis (ICA) can solve these problems, it has one serious limitation that the number of separated neurons must be less than the number of electrodes. Using a combination of ICA and the efficiency of ordinary spike sorting technique (k-means clustering), we developed an automatic procedure to solve the spike-overlapping and the non-stationarity problems with no limitation on the number of separated neurons. The results for the procedure applied to real multi-neuronal data demonstrated that some outliers which may be assigned to distinct clusters if ordinary spike-sorting methods were used can be identified as overlapping spikes, and that there are functional connections between a putative pyramidal neuron and its putative dendrite. These findings suggest that the combination of ICA and k-means clustering can provide insights into the precise nature of functional circuits among neurons, i.e. cell assemblies.
机译:用四极管进行多神经元记录是揭示局部回路中神经元相互作用的有效技术。但是,由于在同时触发两个以上神经元时,单个神经元的尖峰波形在电极上重叠,因此很难检测到紧密相邻的神经元之间的精确尖峰定时。另外,单个神经元的尖峰波形,尤其是在存在复杂尖峰的情况下,通常是不稳定的。这些问题限制了普通尖峰分选将使用四极体记录的多神经元活动分类为单神经元成分的能力。尽管使用独立成分分析(ICA)进行分选可以解决这些问题,但存在一个严重的局限性,即分离的神经元的数量必须少于电极的数量。通过结合ICA和普通尖峰排序技术(k均值聚类)的效率,我们开发了一种自动程序来解决尖峰重叠和非平稳性问题,而对分离神经元的数量没有限制。该程序应用于真实多神经元数据的结果表明,如果使用普通的峰值分类方法,可以将某些离群值分配给不同的簇,这些异常值可以被识别为重叠的峰值,并且假定的锥体神经元和神经元之间存在功能连接。其推定的枝晶。这些发现表明,ICA和k-均值聚类的组合可以提供对神经元即细胞装配体之间功能电路的精确性质的见解。

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