Detection of bursts in neuronal spike trains by the mean inter-spike interval method

作者:Chen, Lin; Deng, Yong; Luo, Weihua; Wang, Zhen; Zeng, Shaoqun*
来源:Progress in Natural Science, 2009, 19(2): 229-235.
DOI:10.1016/j.pnsc.2008.05.027

摘要

Bursts are electrical spikes. ring with a high frequency, which are the most important property in synaptic plasticity and information processing in the central nervous system. However, bursts are difficult to identify because bursting activities or patterns vary with physiological conditions or external stimuli. In this paper, a simple method automatically to detect bursts in spike trains is described. This method auto-adaptively sets a parameter ( mean inter-spike interval) according to intrinsic properties of the detected burst spike trains, without any arbitrary choices or any operator judgment. When the mean value of several successive inter-spike intervals is not larger than the parameter, a burst is identified. By this method, bursts can be automatically extracted from different bursting patterns of cultured neurons on multi-electrode arrays, as accurately as by visual inspection. Furthermore, significant changes of burst variables caused by electrical stimulus have been found in spontaneous activity of neuronal network. These suggest that the mean inter-spike interval method is robust for detecting changes in burst patterns and characteristics induced by environmental alterations.