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Bayes optimal template matching for spike sorting - combining fisher discriminant analysis with optimal filtering

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posted on 2016-02-16, 10:07 authored by F. Franke, Rodrigo Quian Quiroga, A. Hierlemann, K. Obermayer
Spike sorting, i.e., the separation of the firing activity of different neurons from extracellular measurements, is a crucial but often error-prone step in the analysis of neuronal responses. Usually, three different problems have to be solved: the detection of spikes in the extracellular recordings, the estimation of the number of neurons and their prototypical (template) spike waveforms, and the assignment of individual spikes to those putative neurons. If the template spike waveforms are known, template matching can be used to solve the detection and classification problem. Here, we show that for the colored Gaussian noise case the optimal template matching is given by a form of linear filtering, which can be derived via linear discriminant analysis. This provides a Bayesian interpretation for the well-known matched filter output. Moreover, with this approach it is possible to compute a spike detection threshold analytically. The method can be implemented by a linear filter bank derived from the templates, and can be used for online spike sorting of multielectrode recordings. It may also be applicable to detection and classification problems of transient signals in general. Its application significantly decreases the error rate on two publicly available spike-sorting benchmark data sets in comparison to state-of-the-art template matching procedures. Finally, we explore the possibility to resolve overlapping spikes using the template matching outputs and show that they can be resolved with high accuracy.

History

Citation

Journal of Computational Neuroscience, 2015, 38 (3), pp. 439-459

Author affiliation

/Organisation/COLLEGE OF SCIENCE AND ENGINEERING/Department of Engineering

Version

  • VoR (Version of Record)

Published in

Journal of Computational Neuroscience

Publisher

Springer Verlag (Germany)

issn

0929-5313

eissn

1573-6873

Acceptance date

2015-01-14

Copyright date

2015

Available date

2016-02-16

Publisher version

http://link.springer.com/article/10.1007/s10827-015-0547-7

Language

en

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