Favored patterns in spike trains. II. Application
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Published:1983-06-01
Issue:6
Volume:49
Page:1349-1363
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ISSN:0022-3077
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Container-title:Journal of Neurophysiology
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language:en
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Short-container-title:Journal of Neurophysiology
Author:
Dayhoff J. E.,Gerstein G. L.
Abstract
In this paper we apply the two methods described in the companion paper (4) to experimentally recorded spike trains from two preparations, the crayfish claw and the cat striate cortex. Neurons in the crayfish claw control system produced favored patterns in 23 of 30 spike trains under a variety of experimental conditions. Favored patterns generally consisted of 3-7 spikes and were found to be in excess by both quantized and template methods. Spike trains from area 17 of the lightly anesthetized cat showed favored patterns in 16 of 27 cases (in quantized form). Some patterns were also found to be favored in template form; these were not as abundant in the cat data as in the crayfish data. Most firing of the cat neurons occurred at times near stimulation, and the observed patterns may represent stimulus information. Favored patterns generally contained up to 7 spikes. No obvious correlations between identified neurons or experimental conditions and the generation of favored patterns were apparent from these data in either preparation. This work adds to the existing evidence that pattern codes are available for use by the nervous system. The potential biological significance of pattern codes is discussed.
Publisher
American Physiological Society
Subject
Physiology,General Neuroscience
Cited by
92 articles.
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