时变神经信号贝叶斯单试验分析的敏感性和特异性。

Jeff T Mohl, Valeria C Caruso, Surya T Tokdar, Jennifer M Groh
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摘要

我们最近报道了神经信号波动的存在,这可能允许神经元对多个同时发生的刺激按时间顺序进行编码[1]。这需要采用一种新颖的统计方法,以便在个体试验的规模上对神经活动进行调查。在这里,我们提出使用合成数据的测试来评估这种分析的敏感性和特异性。我们制作了数据集来匹配从单刺激反应分布中得到的几种潜在反应模式。特别是,我们模拟了双刺激试验尖峰计数,反映了单刺激尖峰计数、稳定的中间平均值、单刺激赢家通吃或单刺激反应定义范围之外的反应分布(如求和或抑制)的波动混合。然后,我们评估了分析如何恢复正确的反应模式,作为模拟试验次数的函数,以及对每个“刺激”单独的模拟反应之间的差异。我们发现,当试验次数>20次,单刺激反应率分别为50Hz和20Hz时,混合、中间和外部类别的回收率很好(正确率>97%),单一/赢者通吃类别的回收率很好(正确率>90%)。更大的试验次数和更大的单刺激放电率之间的分离都提高了分类的准确性。这些结果为使用该方法在个体试验时间尺度上研究多个项目的编码提供了基准和数据收集指南。
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Sensitivity and specificity of a Bayesian single trial analysis for time varying neural signals.

We recently reported the existence of fluctuations in neural signals that may permit neurons to code multiple simultaneous stimuli sequentially across time [1]. This required deploying a novel statistical approach to permit investigation of neural activity at the scale of individual trials. Here we present tests using synthetic data to assess the sensitivity and specificity of this analysis. We fabricated datasets to match each of several potential response patterns derived from single-stimulus response distributions. In particular, we simulated dual stimulus trial spike counts that reflected fluctuating mixtures of the single stimulus spike counts, stable intermediate averages, single stimulus winner-take-all, or response distributions that were outside the range defined by the single stimulus responses (such as summation or suppression). We then assessed how well the analysis recovered the correct response pattern as a function of the number of simulated trials and the difference between the simulated responses to each "stimulus" alone. We found excellent recovery of the mixture, intermediate, and outside categories (>97% correct), and good recovery of the single/winner-take-all category (>90% correct) when the number of trials was >20 and the single-stimulus response rates were 50Hz and 20Hz respectively. Both larger numbers of trials and greater separation between the single stimulus firing rates improved categorization accuracy. These results provide a benchmark, and guidelines for data collection, for use of this method to investigate coding of multiple items at the individual-trial time scale.

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