Predicting stimulus-locked single unit spiking from cortical local field potentials.

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Predicting stimulus-locked single unit spiking from cortical local field potentials. / Galindo-Leon, Edgar; Liu, Robert C.

in: J COMPUT NEUROSCI, Jahrgang 29, Nr. 3, 3, 2010, S. 581-597.

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@article{ca0416e5d00a4c0abf0b2b3aa94f2e03,
title = "Predicting stimulus-locked single unit spiking from cortical local field potentials.",
abstract = "The rapidly increasing use of the local field potential (LFP) has motivated research to better understand its relation to the gold standard of neural activity, single unit (SU) spiking. We addressed this in an in vivo, awake, restrained mouse auditory cortical electrophysiology preparation by asking whether the LFP could actually be used to predict stimulus-evoked SU spiking. Implementing a Bayesian algorithm to predict the likelihood of spiking on a trial by trial basis from different representations of the despiked LFP signal, we were able to predict, with high quality and fine temporal resolution (2 ms), the time course of a SU's excitatory or inhibitory firing rate response to natural species-specific vocalizations. Our best predictions were achieved by representing the LFP by its wide-band Hilbert phase signal, and approximating the statistical structure of this signal at different time points as independent. Our results show that each SU's action potential has a unique relationship with the LFP that can be reliably used to predict the occurrence of spikes. This {"}signature{"} interaction can reflect both pre- and post-spike neural activity that is intrinsic to the local circuit rather than just dictated by the stimulus. Finally, the time course of this {"}signature{"} may be most faithful when the full bandwidth of the LFP, rather than specific narrow-band components, is used for representation.",
author = "Edgar Galindo-Leon and Liu, {Robert C}",
year = "2010",
language = "Deutsch",
volume = "29",
pages = "581--597",
journal = "J COMPUT NEUROSCI",
issn = "0929-5313",
publisher = "Springer Netherlands",
number = "3",

}

RIS

TY - JOUR

T1 - Predicting stimulus-locked single unit spiking from cortical local field potentials.

AU - Galindo-Leon, Edgar

AU - Liu, Robert C

PY - 2010

Y1 - 2010

N2 - The rapidly increasing use of the local field potential (LFP) has motivated research to better understand its relation to the gold standard of neural activity, single unit (SU) spiking. We addressed this in an in vivo, awake, restrained mouse auditory cortical electrophysiology preparation by asking whether the LFP could actually be used to predict stimulus-evoked SU spiking. Implementing a Bayesian algorithm to predict the likelihood of spiking on a trial by trial basis from different representations of the despiked LFP signal, we were able to predict, with high quality and fine temporal resolution (2 ms), the time course of a SU's excitatory or inhibitory firing rate response to natural species-specific vocalizations. Our best predictions were achieved by representing the LFP by its wide-band Hilbert phase signal, and approximating the statistical structure of this signal at different time points as independent. Our results show that each SU's action potential has a unique relationship with the LFP that can be reliably used to predict the occurrence of spikes. This "signature" interaction can reflect both pre- and post-spike neural activity that is intrinsic to the local circuit rather than just dictated by the stimulus. Finally, the time course of this "signature" may be most faithful when the full bandwidth of the LFP, rather than specific narrow-band components, is used for representation.

AB - The rapidly increasing use of the local field potential (LFP) has motivated research to better understand its relation to the gold standard of neural activity, single unit (SU) spiking. We addressed this in an in vivo, awake, restrained mouse auditory cortical electrophysiology preparation by asking whether the LFP could actually be used to predict stimulus-evoked SU spiking. Implementing a Bayesian algorithm to predict the likelihood of spiking on a trial by trial basis from different representations of the despiked LFP signal, we were able to predict, with high quality and fine temporal resolution (2 ms), the time course of a SU's excitatory or inhibitory firing rate response to natural species-specific vocalizations. Our best predictions were achieved by representing the LFP by its wide-band Hilbert phase signal, and approximating the statistical structure of this signal at different time points as independent. Our results show that each SU's action potential has a unique relationship with the LFP that can be reliably used to predict the occurrence of spikes. This "signature" interaction can reflect both pre- and post-spike neural activity that is intrinsic to the local circuit rather than just dictated by the stimulus. Finally, the time course of this "signature" may be most faithful when the full bandwidth of the LFP, rather than specific narrow-band components, is used for representation.

M3 - SCORING: Zeitschriftenaufsatz

VL - 29

SP - 581

EP - 597

JO - J COMPUT NEUROSCI

JF - J COMPUT NEUROSCI

SN - 0929-5313

IS - 3

M1 - 3

ER -