|
|
||||||||
INVITED REVIEW
University of Manchester, Faculty of Life Sciences, Manchester, United Kingdom
Submitted 18 May 2007; accepted in final form 21 July 2007
ABSTRACT
Information Theory enables the quantification of how much information a neuronal response carries about external stimuli and is hence a natural analytic framework for studying neural coding. The main difficulty in its practical application to spike train analysis is that estimates of neuronal information from experimental data are prone to a systematic error (called "bias"). This bias is an inevitable consequence of the limited number of stimulus-response samples that it is possible to record in a real experiment. In this paper, we first explain the origin and the implications of the bias problem in spike train analysis. We then review and evaluate some recent general-purpose methods to correct for sampling bias: the Panzeri-Treves, Quadratic Extrapolation, Best Universal Bound, Nemenman-Shafee-Bialek procedures, and a recently proposed shuffling bias reduction procedure. Finally, we make practical recommendations for the accurate computation of information from spike trains. Our main recommendation is to estimate information using the shuffling bias reduction procedure in combination with one of the other four general purpose bias reduction procedures mentioned in the preceding text. This provides information estimates with acceptable variance and which are unbiased even when the number of trials per stimulus is as small as the number of possible discrete neuronal responses.
This article has been cited by other articles:
![]() |
M. R. Bale and R. S. Petersen Transformation in the Neural Code for Whisker Deflection Direction Along the Lemniscal Pathway J Neurophysiol, November 1, 2009; 102(5): 2771 - 2780. [Abstract] [Full Text] [PDF] |
||||
![]() |
F. Montani, R. A. A. Ince, R. Senatore, E. Arabzadeh, M. E. Diamond, and S. Panzeri The impact of high-order interactions on the rate of synchronous discharge and information transmission in somatosensory cortex Phil Trans R Soc A, August 28, 2009; 367(1901): 3297 - 3310. [Abstract] [Full Text] [PDF] |
||||
![]() |
H. P. Saal, S. Vijayakumar, and R. S. Johansson Information about Complex Fingertip Parameters in Individual Human Tactile Afferent Neurons J. Neurosci., June 24, 2009; 29(25): 8022 - 8031. [Abstract] [Full Text] [PDF] |
||||
![]() |
B. Hangya, Z. Borhegyi, N. Szilagyi, T. F. Freund, and V. Varga GABAergic Neurons of the Medial Septum Lead the Hippocampal Network during Theta Activity J. Neurosci., June 24, 2009; 29(25): 8094 - 8102. [Abstract] [Full Text] [PDF] |
||||
![]() |
G. Foffani, M. L. Morales-Botello, and J. Aguilar Spike Timing, Spike Count, and Temporal Information for the Discrimination of Tactile Stimuli in the Rat Ventrobasal Complex J. Neurosci., May 6, 2009; 29(18): 5964 - 5973. [Abstract] [Full Text] [PDF] |
||||
![]() |
D. McLelland and O. Paulsen Neuronal oscillations and the rate-to-phase transform: mechanism, model and mutual information J. Physiol., February 15, 2009; 587(4): 769 - 785. [Abstract] [Full Text] [PDF] |
||||
![]() |
R. Remedios, N. K. Logothetis, and C. Kayser An Auditory Region in the Primate Insular Cortex Responding Preferentially to Vocal Communication Sounds J. Neurosci., January 28, 2009; 29(4): 1034 - 1045. [Abstract] [Full Text] [PDF] |
||||
![]() |
A. Belitski, A. Gretton, C. Magri, Y. Murayama, M. A. Montemurro, N. K. Logothetis, and S. Panzeri Low-Frequency Local Field Potentials and Spikes in Primary Visual Cortex Convey Independent Visual Information J. Neurosci., May 28, 2008; 28(22): 5696 - 5709. [Abstract] [Full Text] [PDF] |
||||
![]() |
M. J. Rasch, A. Gretton, Y. Murayama, W. Maass, and N. K. Logothetis Inferring Spike Trains From Local Field Potentials J Neurophysiol, March 1, 2008; 99(3): 1461 - 1476. [Abstract] [Full Text] [PDF] |
||||
| HOME | HELP | FEEDBACK | SUBSCRIPTIONS | ARCHIVE | SEARCH | TABLE OF CONTENTS |
| Visit Other APS Journals Online |