scholarly journals Author Correction: Accurate signal-source localization in brain slices by means of high-density microelectrode arrays

2020 ◽  
Vol 10 (1) ◽  
Author(s):  
Marie Engelene J. Obien ◽  
Andreas Hierlemann ◽  
Urs Frey
Author(s):  
Xinyue Yuan ◽  
Manuel Schröter ◽  
Marie Engelene J. Obien ◽  
Michele Fiscella ◽  
Wei Gong ◽  
...  

Abstract The use of high-density microelectrode arrays (HD-MEAs) provides a promising approach for electrophysiological studies targeted at understanding of brain functions, profiling of neurodegenerative diseases, and drug screening. Here we present the protocol for the preparation of various biological samples for the recording of extracellular signals using HD-MEA, including primary cortical neurons, induced pluripotent stem cells (iPSCs)-derived neurons, rodent brain slices, retina, and iPSC-derived neuronal spheroids.


The Analyst ◽  
2009 ◽  
Vol 134 (11) ◽  
pp. 2301 ◽  
Author(s):  
Sebastian J. Hood ◽  
Dimitrios. K. Kampouris ◽  
Rashid O. Kadara ◽  
Norman Jenkinson ◽  
F. Javier del Campo ◽  
...  

2018 ◽  
Vol 120 (6) ◽  
pp. 3155-3171 ◽  
Author(s):  
Roland Diggelmann ◽  
Michele Fiscella ◽  
Andreas Hierlemann ◽  
Felix Franke

High-density microelectrode arrays can be used to record extracellular action potentials from hundreds to thousands of neurons simultaneously. Efficient spike sorters must be developed to cope with such large data volumes. Most existing spike sorting methods for single electrodes or small multielectrodes, however, suffer from the “curse of dimensionality” and cannot be directly applied to recordings with hundreds of electrodes. This holds particularly true for the standard reference spike sorting algorithm, principal component analysis-based feature extraction, followed by k-means or expectation maximization clustering, against which most spike sorters are evaluated. We present a spike sorting algorithm that circumvents the dimensionality problem by sorting local groups of electrodes independently with classical spike sorting approaches. It is scalable to any number of recording electrodes and well suited for parallel computing. The combination of data prewhitening before the principal component analysis-based extraction and a parameter-free clustering algorithm obviated the need for parameter adjustments. We evaluated its performance using surrogate data in which we systematically varied spike amplitudes and spike rates and that were generated by inserting template spikes into the voltage traces of real recordings. In a direct comparison, our algorithm could compete with existing state-of-the-art spike sorters in terms of sensitivity and precision, while parameter adjustment or manual cluster curation was not required. NEW & NOTEWORTHY We present an automatic spike sorting algorithm that combines three strategies to scale classical spike sorting techniques for high-density microelectrode arrays: 1) splitting the recording electrodes into small groups and sorting them independently; 2) clustering a subset of spikes and classifying the rest to limit computation time; and 3) prewhitening the spike waveforms to enable the use of parameter-free clustering. Finally, we combined these strategies into an automatic spike sorter that is competitive with state-of-the-art spike sorters.


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