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首页> 外文期刊>Journal of Neuroscience Methods >Using Tweedie distributions for fitting spike count data
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Using Tweedie distributions for fitting spike count data

机译:使用Tweedie分布拟合尖峰计数数据

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Background: The nature of spike count distributions is of great practical concern for the analysis of neural data. These distributions often have a tendency for 'failures' and a long tail of large counts, and may show a strong dependence of variance on the mean. Furthermore, spike count distributions often show multiplicative rather than additive effects of covariates. We analyzed the responses of neurons in primary auditory cortex to transposed stimuli as a function of interaural time differences (ITD). In more than half of the cases, the variance of neuronal responses showed a supralinear dependence on the mean spike count. New method: We explored the use of the Tweedie family of distributions, which has a supralinear dependence of means on variances. To quantify the effects of ITD on neuronal responses, we used generalized linear models (GLMs), and developed methods for significance testing under the Tweedie assumption. Results: We found the Tweedie distribution to be generally a better fit to the data than the Poisson distribution for over-dispersed responses. Comparison with existing methods: Standard analysis of variance wrongly assumes Gaussian distributions with fixed variance and additive effects, but even generalized models under Poisson assumptions may be hampered by the over-dispersion of spike counts. The use of GLMs assuming Tweedie distributions increased the reliability of tests of sensitivity to ITD in our data. Conclusions: When spike count variance depends strongly on the mean, the use of Tweedie distributions for analyzing the data is advised.
机译:背景:尖峰计数分布的性质对于神经数据的分析非常重要。这些分布通常会出现“失败”的趋势,并且会出现大量尾巴,并且可能表现出对均值的强烈依赖性。此外,峰值计数分布通常显示协变量的乘法效应而不是加法效应。我们分析了听觉皮层神经元对转置刺激的响应,作为听觉间时差(ITD)的函数。在一半以上的病例中,神经元反应的差异显示出对平均峰值计数的超线性依赖性。新方法:我们探索了Tweedie分布族的用法,该族具有均值对方差的超线性依赖关系。为了量化ITD对神经元反应的影响,我们使用了广义线性模型(GLM),并在Tweedie假设下开发了用于显着性检验的方法。结果:对于过度分散的响应,我们发现Tweedie分布通常比Poisson分布更适合数据。与现有方法的比较:方差的标准分析错误地假设了具有固定方差和累加效应的高斯分布,但是即使是Poisson假设下的广义模型也可能会受到峰值计数的过度分散的影响。假设Tweedie分布使用GLM,可以提高我们数据中对ITD敏感性测试的可靠性。结论:当峰值计数方差很大程度上取决于均值时,建议使用Tweedie分布来分析数据。

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