Published May 2007 | Version Published
Book Section - Chapter Open

Spike Clustering and Neuron Tracking over Successive Time Windows

  • 1. ROR icon California Institute of Technology

Abstract

This paper introduces a new methodology for tracking signals from individual neurons over time in multiunit extracellular recordings. The core of our strategy relies upon an extension of a traditional mixture model approach, with parameter optimization via expectation-maximimization (EM), to incorporate clustering results from the preceding time period in a Bayesian manner. EM initialization is also achieved by utilizing these prior clustering results. After clustering, we match the current and prior clusters to track persisting neurons. Applications of this spike sorting method to recordings from macaque parietal cortex show that it provides significantly more consistent clustering and tracking results.

Additional Information

© 2007 IEEE. Issue Date: 2-5 May 2007; date of current version: 11 June 2007. We thank Richard Andersen and the members of his lab, particularly Grant Mulliken for collaboration and test data. This work is funded by the National Institutes of Health, grant R01 EY015545.

Attached Files

Published - Wolf2007p89612007_3Rd_International_IeeeEmbs_Conference_On_Neural_Engineering_Vols_1_And_2.pdf

Files

Wolf2007p89612007_3Rd_International_IeeeEmbs_Conference_On_Neural_Engineering_Vols_1_And_2.pdf

Additional details

Identifiers

Eprint ID
18128
Resolver ID
CaltechAUTHORS:20100504-153301506

Funding

NIH
R01 EY015545

Dates

Created
2010-06-03
Created from EPrint's datestamp field
Updated
2021-11-08
Created from EPrint's last_modified field