A modulated template-matching approach to improve spike sorting of bursting neurons
Abstract
In extracellular neural electrophysiology, individual spikes have to be assigned to their cell of origin in a procedure called “spike sorting”. Spike sorting is an unsupervised problem, since no ground-truth information is generally available. Here, we focus on improving spike sorting performance, particularly during periods of high synchronous activity or socalled “bursting”. Bursting entails systematic changes in spike shapes and amplitudes and remains a challenge for current spike sorting schemes. We use realistic simulated bursting recordings of high-density micro-electrode arrays (HD-MEAs) and we present a fully automated algorithm based on template matching with a focus on recovering missed spikes during bursts. To compare and benchmark spike-sorting performance after applying our method, we used ground-truth information of simulated recordings. We show that our approach can be effective in improving spike sorting performance during bursting. Further validation with experimental recordings is necessary. Show more
Publication status
publishedExternal links
Book title
2021 IEEE Biomedical Circuits and Systems Conference (BioCAS)Pages / Article No.
Publisher
IEEEEvent
Organisational unit
03684 - Hierlemann, Andreas / Hierlemann, Andreas
Funding
694829 - Microtechnology and integrated microsystems to investigate neuronal networks across scales (EC)
19-2 FEL-17 - Multi-modal intracellular and extracellular modeling and investigation of neuronal single-cell dynamics (ETHZ)
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