4.1 Article

A self-adapting approach for the detection of bursts and network bursts in neuronal cultures

Journal

JOURNAL OF COMPUTATIONAL NEUROSCIENCE
Volume 29, Issue 1-2, Pages 213-229

Publisher

SPRINGER
DOI: 10.1007/s10827-009-0175-1

Keywords

Logarithmic ISI histogram; Non-parametric burst detection; Network bursts; Neuronal cultures; Micro-electrode arrays

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Dissociated networks of neurons typically exhibit bursting behavior, whose features are strongly influenced by the age of the culture, by chemical/electrical stimulation or by environmental conditions To help the experimenter in identifying the changes possibly induced by specific protocols, we developed a self-adapting method for detecting both bursts and network bursts from electrophysiological activity recorded by means of micro-electrode arrays. The algorithm is based on the computation of the logarithmic inter-spike interval histogram and automatically detects the best threshold to distinguish between inter- and intra-burst inter-spike intervals for each recording channel of the array An analogous procedure is followed for the detection of network bursts, looking for sequences of closely spaced single-channel bursts. We tested our algorithm on recordings of spontaneous as well as chemically stimulated activity, comparing its performance to other methods available in the literature.

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