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首页> 外文期刊>Frontiers in Computational Neuroscience >Serial Spike Time Correlations Affect Probability Distribution of Joint Spike Events
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Serial Spike Time Correlations Affect Probability Distribution of Joint Spike Events

机译:串行峰值时间相关性影响联合峰值事件的概率分布

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Detecting the existence of temporally coordinated spiking activity, and its role in information processing in the cortex, has remained a major challenge for neuroscience research. Different methods and approaches have been suggested to test whether the observed synchronized events are significantly different from those expected by chance. To analyze the simultaneous spike trains for precise spike correlation, these methods typically model the spike trains as a Poisson process implying that the generation of each spike is independent of all the other spikes. However, studies have shown that neural spike trains exhibit dependence among spike sequences, such as the absolute and relative refractory periods which govern the spike probability of the oncoming action potential based on the time of the last spike, or the bursting behavior, which is characterized by short epochs of rapid action potentials, followed by longer episodes of silence. Here we investigate non-renewal processes with the inter-spike interval distribution model that incorporates spike-history dependence of individual neurons. For that, we use the Monte Carlo method to estimate the full shape of the coincidence count distribution and to generate false positives for coincidence detection. The results show that compared to the distributions based on homogeneous Poisson processes, and also non-Poisson processes, the width of the distribution of joint spike events changes. Non-renewal processes can lead to both heavy tailed or narrow coincidence distribution. We conclude that small differences in the exact autostructure of the point process can cause large differences in the width of a coincidence distribution. Therefore, manipulations of the autostructure for the estimation of significance of joint spike events seem to be inadequate.
机译:对于神经科学研究而言,检测时间相关的突突活动的存在及其在皮层信息处理中的作用一直是一项重大挑战。已经提出了不同的方法和方法来测试观察到的同步事件是否与偶然预期的事件显着不同。为了分析同步尖峰序列以实现精确的尖峰相关性,这些方法通常将尖峰序列建模为泊松过程,这意味着每个尖峰的生成都独立于所有其他尖峰。然而,研究表明,神经尖峰序列在尖峰序列之间表现出依赖性,例如绝对和相对不应期,它们根据最后一次尖峰的时间或爆发行为来控制即将发生的动作电位的尖峰概率。短暂的快速动作电位,然后较长时间的沉默。在这里,我们用钉间间隔分布模型研究了非更新过程,该模型结合了单个神经元的钉对历史的依赖性。为此,我们使用蒙特卡洛方法来估计符合计数分布的完整形状,并为符合检测生成假阳性。结果表明,与基于均匀泊松过程以及非泊松过程的分布相比,联合峰值事件的分布宽度发生了变化。非续签过程可能导致重尾分布或重合的狭窄分布。我们得出的结论是,点过程的精确自动结构中的细微差异会导致重合分布宽度的较大差异。因此,为估计联合尖峰事件的重要性而对自动结构进行的操纵似乎是不充分的。

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