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SpikeDeep-classifier: a deep-learning based fully automatic offline spike sorting algorithm

Authors :
Christian Klaes
Susanne Dyck
Charles Y. Liu
Marita Metzler
Brian Lee
Ioannis Iossifidis
Robin Lienkämper
Omair Ali
Tobias Glasmachers
Richard A. Andersen
Jörg Wellmer
Muhammad Saif-ur-Rehman
Spencer Kellis
Yaroslav Parpaley
Source :
Journal of neural engineering. 18(1)
Publication Year :
2020

Abstract

Objective. Recent advancements in electrode designs and micro-fabrication technology has allowed existence of microelectrode arrays with hundreds of channels for single-cell recordings. In such electrophysiological recordings, each implanted micro-electrode can record the activities of more than one neuron in its vicinity. Recording the activities of multiple neurons may also be referred to as multiple unit activity. However, for any further analysis, the main goal is to isolate the activity of each recorded neuron and thus called single-unit activity. This process may also be referred to as spike sorting or spike classification. Recent approaches to extract SUA are time consuming, mainly due to the requirement of human intervention at various stages of spike sorting pipeline. Lack of standardization is another drawback of the current available approaches. Therefore, in this study we proposed a standard spike sorter: SpikeDeep-Classifier, a fully automatic spike sorting algorithm. Approach. We proposed a novel spike sorting pipeline, based on a set of supervised and unsupervised learning algorithms. We used supervised, deep learning-based algorithms for extracting meaningful channels and removing background activities (noise) from the extracted channels. We also showed that the process of clustering becomes straight-forward, once the noise/artifact is completely removed from the data. Therefore, in the next stage, we applied a simple clustering algorithm (K-mean) with predefined maximum number of clusters. Lastly, we used a similarity-based criterion to keep distinct clusters and merge similar-looking clusters. Main results. We evaluated our algorithm on a dataset collected from two different species (humans and non-human primates (NHPs)) without any retraining. We also validated our algorithm on two publicly available labeled datasets.<br />33 Pages, 14 Figures, 10 Tables

Details

ISSN :
17412552
Volume :
18
Issue :
1
Database :
OpenAIRE
Journal :
Journal of neural engineering
Accession number :
edsair.doi.dedup.....487559ea856a08e733b2fb4bbaeadab8