Literature DB >> 14749321

Improved spike-sorting by modeling firing statistics and burst-dependent spike amplitude attenuation: a Markov chain Monte Carlo approach.

Christophe Pouzat1, Matthieu Delescluse, Pascal Viot, Jean Diebolt.   

Abstract

Spike-sorting techniques attempt to classify a series of noisy electrical waveforms according to the identity of the neurons that generated them. Existing techniques perform this classification ignoring several properties of actual neurons that can ultimately improve classification performance. In this study, we propose a more realistic spike train generation model. It incorporates both a description of "nontrivial" (i.e., non-Poisson) neuronal discharge statistics and a description of spike waveform dynamics (e.g., the events amplitude decays for short interspike intervals). We show that this spike train generation model is analogous to a one-dimensional Potts spin-glass model. We can therefore tailor to our particular case the computational methods that have been developed in fields where Potts models are extensively used, including statistical physics and image restoration. These methods are based on the construction of a Markov chain in the space of model parameters and spike train configurations, where a configuration is defined by specifying a neuron of origin for each spike. This Markov chain is built such that its unique stationary density is the posterior density of model parameters and configurations given the observed data. A Monte Carlo simulation of the Markov chain is then used to estimate the posterior density. We illustrate the way to build the transition matrix of the Markov chain with a simple, but realistic, model for data generation. We use simulated data to illustrate the performance of the method and to show that this approach can easily cope with neurons firing doublets of spikes and/or generating spikes with highly dynamic waveforms. The method cannot automatically find the "correct" number of neurons in the data. User input is required for this important problem and we illustrate how this can be done. We finally discuss further developments of the method.

Mesh:

Year:  2004        PMID: 14749321     DOI: 10.1152/jn.00227.2003

Source DB:  PubMed          Journal:  J Neurophysiol        ISSN: 0022-3077            Impact factor:   2.714


  20 in total

1.  Accurately estimating neuronal correlation requires a new spike-sorting paradigm.

Authors:  Valérie Ventura; Richard C Gerkin
Journal:  Proc Natl Acad Sci U S A       Date:  2012-04-23       Impact factor: 11.205

2.  Robustness of the significance of spike synchrony with respect to sorting errors.

Authors:  Antonio Pazienti; Sonja Grün
Journal:  J Comput Neurosci       Date:  2006-08-14       Impact factor: 1.621

3.  Spike train decoding without spike sorting.

Authors:  Valérie Ventura
Journal:  Neural Comput       Date:  2008-04       Impact factor: 2.026

4.  Traditional waveform based spike sorting yields biased rate code estimates.

Authors:  Valérie Ventura
Journal:  Proc Natl Acad Sci U S A       Date:  2009-04-16       Impact factor: 11.205

5.  Noise-Sensitive But More Precise Subcortical Representations Coexist with Robust Cortical Encoding of Natural Vocalizations.

Authors:  Samira Souffi; Christian Lorenzi; Léo Varnet; Chloé Huetz; Jean-Marc Edeline
Journal:  J Neurosci       Date:  2020-05-22       Impact factor: 6.167

6.  Elemental and configural olfactory coding by antennal lobe neurons of the honeybee (Apis mellifera).

Authors:  Anneke Meyer; C Giovanni Galizia
Journal:  J Comp Physiol A Neuroethol Sens Neural Behav Physiol       Date:  2011-11-15       Impact factor: 1.836

Review 7.  Towards reliable spike-train recordings from thousands of neurons with multielectrodes.

Authors:  Gaute T Einevoll; Felix Franke; Espen Hagen; Christophe Pouzat; Kenneth D Harris
Journal:  Curr Opin Neurobiol       Date:  2011-10-22       Impact factor: 6.627

Review 8.  An online spike detection and spike classification algorithm capable of instantaneous resolution of overlapping spikes.

Authors:  Felix Franke; Michal Natora; Clemens Boucsein; Matthias H J Munk; Klaus Obermayer
Journal:  J Comput Neurosci       Date:  2009-06-05       Impact factor: 1.621

9.  Automatic spike sorting using tuning information.

Authors:  Valérie Ventura
Journal:  Neural Comput       Date:  2009-09       Impact factor: 2.026

10.  Model-based spike sorting with a mixture of drifting t-distributions.

Authors:  Kevin Q Shan; Evgueniy V Lubenov; Athanassios G Siapas
Journal:  J Neurosci Methods       Date:  2017-06-23       Impact factor: 2.390

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