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Testing the odds of inherent vs. observed overdispersion in neural spike counts

机译:测试神经峰值计数中固有分布与观察到的过度分散的几率

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摘要

The repeated presentation of an identical visual stimulus in the receptive field of a neuron may evoke different spiking patterns at each trial. Probabilistic methods are essential to understand the functional role of this variance within the neural activity. In that case, a Poisson process is the most common model of trial-to-trial variability. For a Poisson process, the variance of the spike count is constrained to be equal to the mean, irrespective of the duration of measurements. Numerous studies have shown that this relationship does not generally hold. Specifically, a majority of electrophysiological recordings show an “overdispersion” effect: responses that exhibit more intertrial variability than expected from a Poisson process alone. A model that is particularly well suited to quantify overdispersion is the Negative-Binomial distribution model. This model is well-studied and widely used but has only recently been applied to neuroscience. In this article, we address three main issues. First, we describe how the Negative-Binomial distribution provides a model apt to account for overdispersed spike counts. Second, we quantify the significance of this model for any neurophysiological data by proposing a statistical test, which quantifies the odds that overdispersion could be due to the limited number of repetitions (trials). We apply this test to three neurophysiological data sets along the visual pathway. Finally, we compare the performance of this model to the Poisson model on a population decoding task. We show that the decoding accuracy is improved when accounting for overdispersion, especially under the hypothesis of tuned overdispersion.
机译:在神经元的感受野中重复出现相同的视觉刺激可能会在每次试验中引起不同的尖峰模式。概率方法对于理解这种差异在神经活动中的功能作用至关重要。在这种情况下,泊松过程是试验间差异的最常见模型。对于泊松过程,峰值峰值的方差被限制为等于平均值​​,而与测量的持续时间无关。许多研究表明,这种关系通常不成立。具体而言,大多数电生理学记录显示出“过度分散”效应:与单独的泊松过程相比,表现出更大的间质变异性的响应。负二项分布模型是特别适合量化过度分散的模型。该模型已得到充分研究并得到广泛使用,但直到最近才应用于神经科学。在本文中,我们解决了三个主要问题。首先,我们描述负二项分布如何提供一种易于解决过度分散的尖峰计数的模型。第二,我们通过提出统计检验来量化该模型对于任何神经生理学数据的重要性,该检验量化了过度分散可能是由于重复次数(试验)有限所致的几率。我们将此测试应用于沿视觉通路的三个神经生理数据集。最后,我们将这个模型的性能与Poisson模型在人口解码任务上的性能进行了比较。我们表明,考虑到过度分散时,尤其是在调谐过度分散的假设下,解码精度得到了提高。

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