Asai Yoshiyuki, Villa Alessandro E P
The Center for Advanced Medical Engineering and Informatics, Osaka University, Toyonaka, Osaka 560-8531, Japan.
J Biol Phys. 2008 Aug;34(3-4):325-40. doi: 10.1007/s10867-008-9093-0. Epub 2008 Jul 31.
An experimentally recorded time series formed by the exact times of occurrence of the neuronal spikes (spike train) is likely to be affected by observational noise that provokes events mistakenly confused with neuronal discharges, as well as missed detection of genuine neuronal discharges. The points of the spike train may also suffer a slight jitter in time due to stochastic processes in synaptic transmission and to delays in the detecting devices. This study presents a procedure aimed at filtering the embedded noise (denoising the spike trains) the spike trains based on the hypothesis that recurrent temporal patterns of spikes are likely to represent the robust expression of a dynamic process associated with the information carried by the spike train. The rationale of this approach is tested on simulated spike trains generated by several nonlinear deterministic dynamical systems with embedded observational noise. The application of the pattern grouping algorithm (PGA) to the noisy time series allows us to extract a set of points that form the reconstructed time series. Three new indices are defined for assessment of the performance of the denoising procedure. The results show that this procedure may indeed retrieve the most relevant temporal features of the original dynamics. Moreover, we observe that additional spurious events affect the performance to a larger extent than the missing of original points. Thus, a strict criterion for the detection of spikes under experimental conditions, thus reducing the number of spurious spikes, may raise the possibility to apply PGA to detect endogenous deterministic dynamics in the spike train otherwise masked by the observational noise.
由神经元尖峰精确发生时间形成的实验记录时间序列(尖峰序列)可能会受到观测噪声的影响,这种噪声会引发被错误地与神经元放电混淆的事件,以及对真实神经元放电的漏检。由于突触传递中的随机过程和检测设备的延迟,尖峰序列的时间点也可能会出现轻微抖动。本研究提出了一种基于以下假设的程序,即尖峰的递归时间模式可能代表与尖峰序列所携带信息相关的动态过程的稳健表达,旨在对尖峰序列进行嵌入式噪声过滤(去噪尖峰序列)。该方法的原理在由几个带有嵌入式观测噪声的非线性确定性动力系统生成的模拟尖峰序列上进行了测试。将模式分组算法(PGA)应用于有噪声的时间序列,使我们能够提取一组形成重构时间序列的点。定义了三个新指标来评估去噪程序的性能。结果表明,该程序确实可以检索到原始动力学中最相关的时间特征。此外,我们观察到,额外的虚假事件对性能的影响比原始点的缺失更大。因此,在实验条件下严格的尖峰检测标准,从而减少虚假尖峰的数量,可能会增加应用PGA检测尖峰序列中原本被观测噪声掩盖的内源性确定性动力学的可能性。