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@INPROCEEDINGS{Sridhar:861711,
author = {Sridhar, Shashwat and Yegenoglu, Alper and Voges, Nicole
and Brochier, Thomas and Riehle, Alexa and Grün, Sonja and
Denker, Michael},
title = {{SWAN}: {A} tool to track single units across consecutive
electrophysiological recordings},
reportid = {FZJ-2019-02141},
year = {2019},
abstract = {Electrophysiological experiments often involve the
measurement of extracellular analog voltage signals from
brain tissue using implanted microelectrodes. The spiking
activity of neurons in the direct vicinity of an electrode
is captured as short-lasting voltage deflections. Some of
the deflections are action potentials (spikes) of neurons
close to the electrode tip [1]. A crucial first step in the
analysis of such data is the extraction of spikes and their
assortment into clusters corresponding to contributions from
different putative single neurons, or in short ‘units’
(spike sorting) [1, 2]. The sorting compares the shape of
waveforms and the spiking characteristics. With chronically
implanted electrodes, spiking activity is recorded for
several months over multiple sessions. It is not clear if
each electrode detects identical units over the entire
course of an experiment. However, this knowledge would help
to monitor long-term changes of neural activity during
training for a task. In practice, some single units
disappear, (re-)appear or progressively change their spike
shape, likely due to small movements of the electrode and/or
tissue growth. Thus, it becomes a challenge to keep track of
identical units across consecutive chronic recordings [3,
4]. In the absence of such a tracking of neurons across
sessions, detected units in one session are assumed to be
independent of those in other sessions of the experiment.
They may thus be considered more than once in analyses of
several sessions, and bias statistics across sessions.Here
we present the Sequential Waveform Analyzer (SWAN) - an
open-source tool developed to track individual units across
sessions, but also to identify units that are different. It
provides a graphical user interface (GUI) to visualize and
relate spike-sorted data across multiple sessions. The
configurable user interface is divided into several windows
(see Figure). In each window, a certain set of features
(e.g., mean waveforms, inter-spike interval histograms,
principal component analysis of mean waveforms, firing rate
profiles) are compared between different units and across
multiple sessions. Each set of similar units across sessions
is then assigned one global unit ID, represented by one
common color across all windows. Thus, we visualize the
tracking of a certain unit across consecutive sessions. The
assignment of units to global unit IDs is performed by
published [3,4] and newly developed automatic algorithms,
and can be easily edited by the experimenter in the GUI. We
demonstrate the capabilities of SWAN and practically
illustrate its application on large-scale recordings from
macaque monkey motor cortex [5].Acknowledgements: EU Horizon
2020 Framework Programme for Research and Innovation under
Specific Grant Agreements No. 720270 and No. 785907 (Human
Brain Projects SGA1 and SGA2); DFG Grants DE 2175/2-1 and GR
1753/4-2 Priority Program (SPP 1665); International
Associated Laboratory (LIA) “Vision for Action” between
CNRS and Aix-Marseille Univ, Marseille, France, and Research
Centre Juelich, Germany. Christoph Gollan created the
initial version of SWAN.References:1. Einevoll, G. T. et al.
Cur Opinion Neurobiol 22, 11 (2012).2. Buzsáki, G. Nat
Neurosci 7, 446 (2004).3. Dickey, A. S. et al. J Neurophys
102, 1331 (2012).4. Fraser, G. W. et al. J Neurophys 107,
1970 (2012).5. Brochier, T. et al. Sci Data 5, 180055
(2018).},
month = {Mar},
date = {2019-03-19},
organization = {13th Göttingen Meeting of the German
Neuroscience Society, Göttingen
(Germany), 19 Mar 2019 - 23 Mar 2019},
subtyp = {After Call},
cin = {INM-6 / IAS-6 / INM-10 / JSC},
cid = {I:(DE-Juel1)INM-6-20090406 / I:(DE-Juel1)IAS-6-20130828 /
I:(DE-Juel1)INM-10-20170113 / I:(DE-Juel1)JSC-20090406},
pnm = {574 - Theory, modelling and simulation (POF3-574) / HBP
SGA1 - Human Brain Project Specific Grant Agreement 1
(720270) / HBP SGA2 - Human Brain Project Specific Grant
Agreement 2 (785907) / DFG project 238707842 - Kausative
Mechanismen mesoskopischer Aktivitätsmuster in der
auditorischen Kategorien-Diskrimination (238707842) / DFG
project 322093511 - Kognitive Leistung als Ergebnis
koordinierter neuronaler Aktivität in unreifen
präfrontal-hippokampalen Netzwerken (322093511) / 511 -
Computational Science and Mathematical Methods (POF3-511)},
pid = {G:(DE-HGF)POF3-574 / G:(EU-Grant)720270 /
G:(EU-Grant)785907 / G:(GEPRIS)238707842 /
G:(GEPRIS)322093511 / G:(DE-HGF)POF3-511},
typ = {PUB:(DE-HGF)24},
url = {https://juser.fz-juelich.de/record/861711},
}