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Fractal character of the neural spike train in the visual system of the cat

机译:猫视觉系统中神经峰值序列的分形特征

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We used a variety of statistical measures to identify the point process that describes the maintained discharge of retinal ganglion cells (RGC's) and neurons in the lateral geniculate nucleus (LGN) of the cat. These measures are based on both interevent intervals and event counts and include the interevent-interval histogram, rescaled range analysis, the event-number histogram, the Fano factor, the Allan factor, and the periodogram. In addition, we applied these measures to surrogate versions of the data, generated by random shuffling of the order of interevent intervals. The counting statistics reveal 1/f-type fluctuations in the data (long-duration' power-law correlation), which are not present in the shuffled data. Estimates of the fractal exponents measured for RGC- and their target LGN-spike trains are similar in value, indicating that the fractal behavior either is transmitted from one cell to the other or has a common origin. The gamma-r renewal process model, often used in the analysis of visual-neuron interevent intervals, describes certain short-term features of the RGC and LGN data reasonably well but fails to account for the long-duration correlation. We present a new model for visual-system nerve-spike firings: a gamma-# renewal process whose mean is modulated by fractal binomial noise. This fractal, doubly stochastic point process characterizes the statistical behavior of both RGC and LGN data sets remarkably well. # 1997 Optical Society of America [S0740-3232(97)00202-0]
机译:我们使用了多种统计方法来确定描述猫的外侧膝状核(LGN)的视网膜神经节细胞(RGC)和神经元维持放电的点过程。这些度量基于事件间隔和事件计数,包括事件间隔直方图,重定范围分析,事件数直方图,Fano因子,Allan因子和周期图。此外,我们应用了这些措施来替代由事件间隔时间顺序的随机改组生成的数据版本。计数统计数据揭示了数据的1 / f型波动(长期的幂律相关性),这在混洗后的数据中不存在。 RGC和其目标LGN峰值序列的分形指数的估计值相似,表明分形行为要么从一个单元传递到另一个单元,要么具有共同的起源。 γ-r更新过程模型通常用于可视神经元事件间隔的分析,该模型很好地描述了RGC和LGN数据的某些短期特征,但未能说明长期相关性。我们提出了视觉系统神经穗放电的新模型:伽玛-#更新过程其平均数由分形二项式噪声调制。这种分形,双重随机点过程很好地表征了RGC和LGN数据集的统计行为。 #1997美国光学学会[S0740-3232(97)00202-0]

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