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Exponential decay characteristics of the stochastic integer multiple neural firing patterns

机译:随机整数多重神经激发模式的指数衰减特性

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摘要

Integer multiple neural firing patterns exhibit multi-peaks in inter-spike interval (ISI) histogram (ISIH) and exponential decay in amplitude of peaks, which results from their stochastic mechanisms. But in previous experimental observation that the decay in ISIH frequently shows obvious bias from exponential law. This paper studied three typical cases of the decay, by transforming ISI series of the firing to discrete binary chain and calculating the probabilities or frequencies of symbols over the whole chain. The first case is the exponential decay without bias. An example of this case was discovered on hippocampal CA1 pyramidal neuron stimulated by external signal. Probability calculation shows that this decay without bias results from a stochastic renewal process, in which the successive spikes are independent. The second case is the exponential decay with a higher first peak, while the third case is that with a lower first peak. An example of the second case was discovered in experiment on a neural pacemaker. Simulation and calculation of the second and third cases indicate that the dependency in successive spikes of the firing leads to the bias seen in decay of ISIH peaks. The quantitative expression of the decay slope of three cases of firing patterns, as well as the excitatory effect in the second case of firing pattern and the inhibitory effect in the third case of firing pattern are identified. The results clearly reveal the mechanism of the exponential decay in ISIH peaks of a number of important neural firing patterns and provide new understanding for typical bias from the exponential decay law.
机译:整数多个神经激发模式在峰间间隔(ISI)直方图(ISIH)中显示多个峰,并且峰振幅的指数衰减是由其随机机制引起的。但是在以前的实验观察中,ISIH的衰减经常显示出明显的偏离指数规律的趋势。通过将点火的ISI系列转换为离散的二元链并计算整个链上符号的概率或频率,研究了三种典型的衰减情况。第一种情况是无偏差的指数衰减。在外部信号刺激的海马CA1锥体神经元上发现了这种情况的一个例子。概率计算表明,这种无偏差的衰减是由随机更新过程引起的,其中连续的峰值是独立的。第二种情况是具有较高的第一峰值的指数衰减,而第三种情况是具有较低的第一峰值的指数衰减。在神经起搏器的实验中发现了第二种情况的一个例子。对第二种情况和第三种情况的仿真和计算表明,连续点火尖峰的依赖性导致了ISIH峰值衰减中的偏差。确定了三种点火方式的衰减斜率的定量表达,以及第二种点火方式的激发作用和第三种点火方式的抑制作用。结果清楚地揭示了许多重要神经激发模式的ISIH峰的指数衰减机理,并为指数衰减定律中的典型偏差提供了新的理解。

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