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Closed form jitter methods for neuronal spike train analysis

机译:用于神经元尖峰序列分析的闭合形式抖动方法

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Interval jitter and spike resampling methods are used to analyze the time scale at which temporal correlations occur in neuronal spike trains. These methods allow the computation of jitter-corrected cross correlograms as well as statistically robust hypothesis testing to decide whether observed correlations at a given time scale are significant. Since currently used Monte Carlo methods are computationally costly, we propose to compute the distribution of the probability of observing a jittered spike train in closed form. We show that this distribution is obtained by computing the analytical solution for each jitter interval and then convolving the distributions of all intervals. For all mean firing rates tested, computing the convolutions in Fourier space rather than directly improves performance considerably without loss of accuracy. Performance increased with mean firing rates and length of spike trains. The method allows for rapid analysis of long spike trains with high accuracy.
机译:间隔抖动和尖峰重采样方法用于分析在神经元尖峰序列中出现时间相关性的时间尺度。这些方法可以计算抖动校正的交叉相关图,并进行统计上可靠的假设检验,以决定在给定的时间尺度上观察到的相关性是否显着。由于当前使用的蒙特卡洛方法在计算上是昂贵的,因此我们建议计算封闭形式下观察到的尖峰信号串的概率的分布。我们表明,这种分布是通过计算每个抖动间隔的解析解,然后对所有间隔的卷积进行卷积而获得的。对于所有测试的平均点火率,计算傅立叶空间中的卷积而不是直接显着提高性能而不会损失准确性。性能随着平均点火速度和长钉序列的长度而增加。该方法可以高精度快速分析长钉序列。

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