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Network-Wide Adaptive Burst Detection Depicts Neuronal Activity with Improved Accuracy

Authors :
Inkeri A. Välkki
Kerstin Lenk
Jarno E. Mikkonen
Fikret E. Kapucu
Jari A. K. Hyttinen
Tampere University
BioMediTech
Faculty of Biomedical Sciences and Engineering
Pervasive Computing
Research group: Computational Biophysics and Imaging Group
Source :
Frontiers in Computational Neuroscience, Vol 11 (2017), Frontiers in Computational Neuroscience
Publication Year :
2017
Publisher :
Frontiers Media S.A., 2017.

Abstract

Neuronal networks are often characterized by their spiking and bursting statistics. Previously, we introducedan adaptive burst analysis methodwhich enhances the analysis power for neuronal networks with highly varying firing dynamics. The adaptation is based on single channels analyzing each element of a network separately. Such kind of analysis was adequate for the assessment of local behavior, where the analysis focuses on the neuronal activity in the vicinity of a single electrode. However, the assessment of the whole network may be hampered, if parts of the network are analyzed using different rules. Here, we test how using multiple channels and measurement time points affect adaptive burst detection. The main emphasis is, if network-wide adaptive burst detection can provide new insights into the assessment of network activity. Therefore, we propose a modification to the previously introduced inter-spike interval (ISI) histogram based cumulative moving average (CMA) algorithm to analyze multiple spike trains simultaneously. The network size can be freely defined, e.g., to include all the electrodes in a microelectrode array (MEA) recording. Additionally, the method can be applied on a series of measurements on the same network to pool the data for statistical analysis. Firstly, we apply both the original CMA-algorithm and our proposed network-wide CMA-algorithm on artificial spike trains to investigate how the modification changes the burst detection. Thereafter, we use the algorithms on MEA data of spontaneously active chemically manipulated in vitro rat cortical networks. Moreover, we compare the synchrony of the detected bursts introducing a new burst synchrony measure. Finally, we demonstrate howthe bursting statistics can be used to classify networks by applying k-means clustering to the bursting statistics. The results showthat the proposed network wide adaptive burst detection provides a method to unify the burst definition in the whole network and thus improves the assessment and classification of the neuronal activity, e.g., the effects of different pharmaceuticals. The results indicate that the novel method is adaptive enough to be usable on networks with different dynamics, and it is especially feasible when comparing the behavior of differently spiking networks, for example in developing networks. publishedVersion

Details

Language :
English
ISSN :
16625188
Volume :
11
Database :
OpenAIRE
Journal :
Frontiers in Computational Neuroscience
Accession number :
edsair.doi.dedup.....26db17c880d1d0569095e3259d9b5288
Full Text :
https://doi.org/10.3389/fncom.2017.00040/full