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首页> 外文期刊>Journal of Neuroscience Methods >Efficient spike-sorting of multi-state neurons using inter-spike intervals information.
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Efficient spike-sorting of multi-state neurons using inter-spike intervals information.

机译:使用峰值间间隔信息对多状态神经元进行有效的峰值排序。

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We demonstrate the efficacy of a new spike-sorting method based on a Markov chain Monte Carlo (MCMC) algorithm by applying it to real data recorded from Purkinje cells (PCs) in young rat cerebellar slices. This algorithm is unique in its capability to estimate and make use of the firing statistics as well as the spike amplitude dynamics of the recorded neurons. PCs exhibit multiple discharge states, giving rise to multi-modal inter-spike interval (ISI) histograms and to correlations between successive ISIs. The amplitude of the spikes generated by a PC in an active vertebrates and invertebrates. These two features constitute a major and recurrent problem for all the presently available spike-sorting methods. We first show that a hidden Markov model with three log-normal states provides a flexible and satisfying description of the complex firing of single PCs. We then incorporate this model into our previous MCMC based spike-sorting algorithm [Pouzat C, Delescluse M, Viot P, Diebolt J. Improved spike-sorting by modeling firing statistics and burst-dependent spike amplitude attenuation: a Markov chain Monte Carlo approach. J Neurophysiol 2004;91:2910-28] and test this new algorithm on multi-unit recordings of bursting PCs. We show that our method successfully classifies the bursty spike trains fired by PCs by using an independent single unit recording from a patch-clamp pipette.
机译:我们通过将其应用于从年轻大鼠小脑切片的浦肯野细胞(PC)记录的真实数据中,证明了基于马尔可夫链蒙特卡罗(MCMC)算法的新的穗分类方法的功效。该算法在估计和利用触发统计数据以及所记录神经元的尖峰幅度动态方面具有独特的能力。 PC表现出多种放电状态,从而产生了多峰峰值间间隔(ISI)直方图以及连续的ISI之间的相关性。 PC在活跃的脊椎动物和无脊椎动物中产生的尖峰幅度。对于所有当前可用的尖峰分选方法,这两个特征构成了主要且反复出现的问题。我们首先显示具有三个对数正态的隐马尔可夫模型,为单个PC的复杂触发提供了灵活而令人满意的描述。然后,我们将此模型合并到我们以前基于MCMC的尖峰排序算法中[Pouzat C,Delecluse M,Viot P,DieboltJ。通过对点火统计数据和与突发相关的尖峰幅度衰减建模来改进尖峰排序:Markov链蒙特卡洛方法。 J Neurophysiol 2004; 91:2910-28],并在爆裂PC的多单元录音上测试了这种新算法。我们展示了我们的方法通过使用膜片钳移液器的独立单个单元记录,成功地对了PC发射的突发性尖峰串进行了分类。

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