Literature DB >> 10097463

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

H Kaneko1, S S Suzuki, J Okada, M Akamatsu.   

Abstract

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.

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Year:  1999        PMID: 10097463     DOI: 10.1109/10.748981

Source DB:  PubMed          Journal:  IEEE Trans Biomed Eng        ISSN: 0018-9294            Impact factor:   4.538


  4 in total

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Journal:  eNeuro       Date:  2021-02-09

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Authors:  Akifumi Fujishiro; Hidekazu Kaneko; Takahiro Kawashima; Makoto Ishida; Takeshi Kawano
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4.  Population coding of figure and ground in natural image patches by V4 neurons.

Authors:  Yukako Yamane; Atsushi Kodama; Motofumi Shishikura; Kouji Kimura; Hiroshi Tamura; Ko Sakai
Journal:  PLoS One       Date:  2020-06-26       Impact factor: 3.240

  4 in total

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