Rapp P E, Zimmerman I D, Vining E P, Cohen N, Albano A M, Jiménez-Montaño M A
Department of Physiology, Medical College of Pennsylvania, Philadelphia 19129.
J Neurosci. 1994 Aug;14(8):4731-9. doi: 10.1523/JNEUROSCI.14-08-04731.1994.
The interspike interval spike trains of spontaneously active cortical neurons can display nonrandom internal structure. The degree of nonrandom structure can be quantified and was found to decrease during focal epileptic seizures. Greater statistical discrimination between the two physiological conditions (normal vs seizure) was obtained with measurements of context-free grammar complexity than by measures of the distribution of the interspike intervals such as the mean interval, its standard deviation, skewness, or kurtosis. An examination of fixed epoch data sets showed that two factors contribute to the complexity: the firing rate and the internal structure of the spike train. However, calculations with randomly shuffled surrogates of the original data sets showed that the complexity is not completely determined by the firing rate. The sequence-sensitive structure of the spike train is a significant contributor. By combining complexity measurements with statistically related surrogate data sets, it is possible to classify neurons according to the dynamical structure of their spike trains. This classification could not have been made on the basis of conventional distribution-determined measures. Computations with more sophisticated kinds of surrogate data show that the structure observed using complexity measures cannot be attributed to linearly correlated noise or to linearly correlated noise transformed by a static monotonic nonlinearity. The patterns in spike trains appear to reflect genuine nonlinear structure. The limitations of these results are also discussed. The results presented in this article do not, of themselves, establish the presence of a fine-structure encoding of neural information.
自发活动的皮层神经元的峰电位间隔序列可呈现非随机的内部结构。非随机结构的程度可以量化,并且发现在局灶性癫痫发作期间其程度会降低。与通过峰电位间隔分布的测量方法(如平均间隔、标准差、偏度或峰度)相比,通过无上下文语法复杂性的测量能在两种生理状态(正常与癫痫发作)之间获得更大的统计区分度。对固定时段数据集的检查表明,有两个因素导致了复杂性:放电率和峰电位序列的内部结构。然而,对原始数据集的随机打乱替代数据进行计算表明,复杂性并非完全由放电率决定。峰电位序列的序列敏感结构是一个重要因素。通过将复杂性测量与统计相关的替代数据集相结合,可以根据神经元峰电位序列的动态结构对其进行分类。这种分类无法基于传统的分布确定测量方法来完成。使用更复杂类型的替代数据进行的计算表明,使用复杂性测量观察到的结构不能归因于线性相关噪声或由静态单调非线性变换的线性相关噪声。峰电位序列中的模式似乎反映了真正的非线性结构。本文还讨论了这些结果的局限性。本文所呈现的结果本身并不能确定神经信息的精细结构编码的存在。