Back to Search Start Over

Maximum entropy decoding of multivariate neural spike trains.

Authors :
Seiler, Hélène
Yang Zhang
Saleem, Aman B.
Bream, Phil
Apergis-Schoute, John
Schultz, Simon R.
Source :
BMC Neuroscience. 2009 Supplement 1, Vol. 10, Special section p1-2. 2p. 1 Graph.
Publication Year :
2009

Abstract

Scalable algorithms for decoding the information content of trains of action potentials fired by ensembles of neurons are of increasing interest for several reasons. Firstly, neurophysiological recording approaches such as multi-electrode arrays (MEAs) and two-photon calcium imaging are now producing recordings from unprecedented numbers and densities of neurons simultaneously. Secondly, recent work in the area of brain-machine interfaces has opened up the opportunity of taking advantage of such algorithms for purposes such as prosthetic device control, perceptual readout and communication with tetraplegic and "locked-in syndrome" patients. One approach taken for decoding multivariate neural spike trains is Bayesian decoding (see e.g. [1]), where the stimulus s is decoded via the rule s = argmaxs {P*(r|s)P(s)/P*(r)}, where P* refers to a model response probability function fit using a "training" dataset. In the present work, we extend this approach to maximum entropy models of neural population response patterns. To preserve decoder temporal resolution, we decode spatial patterns of spikes from time windows short enough that the responses of each cell can be considered binary. We use a training dataset to measure trial-averaged nth order correlations, then apply a numerical optimization algorithm to compute online the likelihood of observing each response pattern in the test dataset. We have examined the cross-validated performance of the algorithm by decoding patterns of activity in a 2D Ising Model in which stimulus dependent statistical structure has been imposed at different orders (see Figure 1). In addition to studying simulated data, we demonstrate the practicality of the technique by applying it to two physiological datasets. In the first dataset, we decode the direction of a drifting grating stimulus from spike trains recorded simultaneously by a MEA in the mouse visual cortex. In the second, we decode the time of occurrence of an air puff stimulus to the lip of a rat, from two-photon fluorescence imaging of complex-spike-related calcium signals in the rodent cerebellum. Our results suggest that the maximum entropy algorithm can be an effective approach for decoding neural ensemble activity when information content is embedded in spatial activity patterns. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
14712202
Volume :
10
Database :
Academic Search Index
Journal :
BMC Neuroscience
Publication Type :
Academic Journal
Accession number :
44114498
Full Text :
https://doi.org/10.1186/1471-2202-10-S1-P107