Li Zhaohui, Cui Dong, Li Xiaoli
School of Information Science and Engineering, Yanshan University, Qinhuangdao, China.
State Key Laboratory of Cognitive Neuroscience and Learning and IDG/McGovern Institute for Brain Research, Beijing Normal University, Beijing, China; Center for Collaboration and Innovation in Brain and Learning Sciences, Beijing Normal University, Beijing, China.
J Neurosci Methods. 2016 Aug 30;269:33-8. doi: 10.1016/j.jneumeth.2016.05.004. Epub 2016 May 13.
In neuroscience, relating the spiking activity of individual neurons to the local field potential (LFP) of neural ensembles is an increasingly useful approach for studying rhythmic neuronal synchronization. Many methods have been proposed to measure the strength of the association between spikes and rhythms in the LFP recordings, and most existing measures are dependent upon the total number of spikes.
In the present work, we introduce a robust approach for quantifying spike-LFP synchronization which performs reliably for limited samples of data. The measure is termed as spike-triggered correlation matrix synchronization (SCMS), which takes LFP segments centered on each spike as multi-channel signals and calculates the index of spike-LFP synchronization by constructing a correlation matrix.
The simulation based on artificial data shows that the SCMS output almost does not change with the sample size. This property is of crucial importance when making comparisons between different experimental conditions. When applied to actual neuronal data recorded from the monkey primary visual cortex, it is found that the spike-LFP synchronization strength shows orientation selectivity to drifting gratings.
In comparison to another unbiased method, pairwise phase consistency (PPC), the proposed SCMS behaves better for noisy spike trains by means of numerical simulations.
This study demonstrates the basic idea and calculating process of the SCMS method. Considering its unbiasedness and robustness, the measure is of great advantage to characterize the synchronization between spike trains and rhythms present in LFP.
在神经科学领域,将单个神经元的放电活动与神经群体的局部场电位(LFP)相关联,是研究节律性神经元同步化日益有用的方法。已经提出了许多方法来测量LFP记录中尖峰与节律之间的关联强度,并且大多数现有测量方法都依赖于尖峰的总数。
在本研究中,我们引入了一种稳健的方法来量化尖峰-LFP同步化,该方法在有限的数据样本上也能可靠地运行。该测量方法被称为尖峰触发相关矩阵同步化(SCMS),它将以每个尖峰为中心的LFP片段作为多通道信号,并通过构建相关矩阵来计算尖峰-LFP同步化指数。
基于人工数据的模拟表明,SCMS输出几乎不随样本大小而变化。在比较不同实验条件时,这一特性至关重要。当将其应用于从猴子初级视觉皮层记录的实际神经元数据时,发现尖峰-LFP同步化强度对漂移光栅表现出方向选择性。
通过数值模拟,与另一种无偏方法——成对相位一致性(PPC)相比,所提出的SCMS在处理有噪声的尖峰序列时表现更好。
本研究展示了SCMS方法的基本思想和计算过程。考虑到其无偏性和稳健性,该测量方法在表征尖峰序列与LFP中存在的节律之间的同步化方面具有很大优势。