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Multineuronal spike classification based on multisite electrode recording, whole-waveform analysis, and hierarchical clustering

机译:基于多站点电极记录,全波形分析和层次聚类的多神经尖峰分类

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We proposed here a method of multineuronal spike classification based on multisite electrode recording, whole-waveform analysis, and hierarchical clustering for studying correlated activities of adjacent neurons in nervous systems. Multineuronal spikes were recorded with a multisite electrode placed in the hippocampal pyramidal cell layer of anesthetized rats. If the impedance of each electrode site is relatively low and the distance between electrode sites is sufficiently small, a spike generated by a neuron is simultaneously recorded at multielectrode sites with different amplitudes. The covariance between the spike waveform at each electrode site and a template was calculated as a damping factor due to the volume conduction of the spike from the neuron to the electrode site. Calculated damping factors were vectorized and analyzed by hierarchical clustering using a multidimensional statistical test. Since a cluster of damping vectors was shown to correspond to an antidromically identified neuron, spikes of different neurons are classified by referring to the distributions of damping vectors. Errors in damping vector calculation due to partially overlapping spikes were minimized by successively subtracting preceding spikes from raw data. Clustering errors due to complex spike bursts (i,e., spikes with variable amplitudes) were avoided by detecting such bursts and then using only the first spike of a burst for clustering. These special procedures produced better cluster separation than conventional methods, and enabled multiple neuronal spikes to be classified automatically. Waveforms of classified spikes were well superimposed. We concluded that this method is particularly useful for separating the activities of adjacent neurons that fire partially overlapping spikes and/or complex spike bursts.
机译:我们在这里提出了一种基于多站点电极记录,全波形分析和层次聚类的多神经突峰分类方法,用于研究神经系统中相邻神经元的相关活动。用放置在麻醉大鼠海马锥体细胞层中的多位电极记录多神经元尖峰。如果每个电极部位的阻抗相对较低并且电极部位之间的距离足够小,则神经元产生的尖峰会同时记录在振幅不同的多电极部位。由于从神经元到电极部位的尖峰的体积传导,每个电极部位的尖峰波形与模板之间的协方差被计算为阻尼因子。对计算出的阻尼因子进行矢量化处理,并使用多维统计检验通过层次聚类进行分析。由于显示了阻尼矢量的集群对应于反特征识别的神经元,因此通过参考阻尼矢量的分布对不同神经元的尖峰进行分类。通过从原始数据中连续减去先前的峰值,可以将由于部分重叠的峰值导致的阻尼矢量计算误差降至最低。通过检测这样的突发,然后仅使用突发的第一个尖峰进行聚类,可以避免由于复杂的尖峰突发(即幅度可变的尖峰)导致的聚类错误。与常规方法相比,这些特殊程序产生了更好的簇分离,并使多个神经元尖峰能够自动分类。分类尖峰的波形很好地叠加。我们得出结论,此方法对于分离激发部分重叠的尖峰和/或复杂的尖峰爆发的相邻神经元的活动特别有用。

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