4.5 Article

Burst analysis tool for developing neuronal networks exhibiting highly varying action potential dynamics

Journal

Publisher

FRONTIERS MEDIA SA
DOI: 10.3389/fncom.2012.00038

Keywords

spike trains; action potential bursts; burst analysis; hESCs; human embryonic stem cells; developing neuronal networks; MEA; microelectrode array

Funding

  1. Academy of Finland [122947, 122959, 123233, 135220]
  2. BioneXt Tampere
  3. Pirkanmaa Hospital District
  4. Finnish Cultural Foundation
  5. Ella and Georg Ehrnrooth Foundation
  6. Academy of Finland (AKA) [122947, 135220, 123233, 122959, 122959, 123233, 122947, 135220] Funding Source: Academy of Finland (AKA)

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In this paper we propose a firing statistics based neuronal network burst detection algorithm for neuronal networks exhibiting highly variable action potential dynamics. Electrical activity of neuronal networks is generally analyzed by the occurrences of spikes and bursts both in time and space. Commonly accepted analysis tools employ burst detection algorithms based on predefined criteria. However, maturing neuronal networks, such as those originating from human embryonic stemc ells (hESCs), exhibit highly variable network structure and time-varying dynamics. To explore the developing burst/spike activities of such networks, we propose a burst detection algorithm which utilizes the firing statistics based on interspike interval (ISI) histograms. Moreover, the algorithm calculates ISI thresholds for burst spikes as well as for pre-burst spikes and burst tails by evaluating the cumulative moving average (CMA) and skewness of the ISI histogram. Because of the adaptive nature of the proposed algorithm, its analysis power is not limited by the type of neuronal cell network at hand. We demonstrate the functionality of our algorithm with two different types of microelectrode array (MEA) data recorded from spontaneously active hESC-derived neuronal cell networks. The same data was also analyzed by two commonly employed burst detection algorithms and the differences in burst detection results are illustrated. The results demonstrate that our method is both adaptive to the firing statistics of the network and yields successful burst detection from the data. In conclusion, the proposed method is a potential tool for analyzing of hESC-derived neuronal cell networks and thus can be utilized in studies aiming to understand the development and functioning of human neuronal networks and as an analysis tool for in vitro drug screening and neurotoxicity assays.

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