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皮层诱发反应的逐次试验变异性:对功能连接分析的影响。

Trial-to-trial variability of cortical evoked responses: implications for the analysis of functional connectivity.

作者信息

Truccolo Wilson A, Ding Mingzhou, Knuth Kevin H, Nakamura Richard, Bressler Steven L

机构信息

Center for Complex Systems and Brain Sciences, Florida Atlantic University, 777 Glades Road, Boca Raton, FL 33431, USA.

出版信息

Clin Neurophysiol. 2002 Feb;113(2):206-26. doi: 10.1016/s1388-2457(01)00739-8.

Abstract

OBJECTIVES

The time series of single trial cortical evoked potentials typically have a random appearance, and their trial-to-trial variability is commonly explained by a model in which random ongoing background noise activity is linearly combined with a stereotyped evoked response. In this paper, we demonstrate that more realistic models, incorporating amplitude and latency variability of the evoked response itself, can explain statistical properties of cortical potentials that have often been attributed to stimulus-related changes in functional connectivity or other intrinsic neural parameters.

METHODS

Implications of trial-to-trial evoked potential variability for variance, power spectrum, and interdependence measures like cross-correlation and spectral coherence, are first derived analytically. These implications are then illustrated using model simulations and verified experimentally by the analysis of intracortical local field potentials recorded from monkeys performing a visual pattern discrimination task. To further investigate the effects of trial-to-trial variability on the aforementioned statistical measures, a Bayesian inference technique is used to separate single-trial evoked responses from the ongoing background activity.

RESULTS

We show that, when the average event-related potential (AERP) is subtracted from single-trial local field potential time series, a stimulus phase-locked component remains in the residual time series, in stark contrast to the assumption of the common model that no such phase-locked component should exist. Two main consequences of this observation are demonstrated for statistical measures that are computed on the residual time series. First, even though the AERP has been subtracted, the power spectral density, computed as a function of time with a short sliding window, can nonetheless show signs of modulation by the AERP waveform. Second, if the residual time series of two channels co-vary, then their cross-correlation and spectral coherence time functions can also be modulated according to the shape of the AERP waveform. Bayesian estimation of single-trial evoked responses provides further proof that these time-dependent statistical changes are due to remnants of the evoked phase-locked component in the residual time series.

CONCLUSIONS

Because trial-to-trial variability of the evoked response is commonly ignored as a contributing factor in evoked potential studies, stimulus-related modulations of power spectral density, cross-correlation, and spectral coherence measures is often attributed to dynamic changes of the connectivity within and among neural populations. This work demonstrates that trial-to-trial variability of the evoked response must be considered as a possible explanation of such modulation.

摘要

目的

单次试验皮层诱发电位的时间序列通常呈现出随机的外观,其逐次试验的变异性通常由一个模型来解释,在该模型中,随机的持续背景噪声活动与一个刻板的诱发反应进行线性组合。在本文中,我们证明了更现实的模型,纳入诱发反应本身的幅度和潜伏期变异性,可以解释皮层电位的统计特性,这些特性通常被归因于功能连接或其他内在神经参数的刺激相关变化。

方法

首先通过解析推导逐次试验诱发电位变异性对方差、功率谱以及互相关和谱相干等相互依赖度量的影响。然后使用模型模拟来说明这些影响,并通过分析从执行视觉模式辨别任务的猴子记录的皮层内局部场电位进行实验验证。为了进一步研究逐次试验变异性对上述统计度量的影响,使用贝叶斯推理技术从持续背景活动中分离单次试验诱发反应。

结果

我们表明,当从单次试验局部场电位时间序列中减去平均事件相关电位(AERP)时,刺激锁相成分会保留在剩余时间序列中,这与常见模型中不应存在此类锁相成分的假设形成鲜明对比。对于在剩余时间序列上计算的统计度量,证明了这一观察结果的两个主要后果。首先,即使减去了AERP,使用短滑动窗口作为时间函数计算的功率谱密度仍可能显示出由AERP波形调制的迹象。其次,如果两个通道的剩余时间序列共同变化,那么它们的互相关和谱相干时间函数也可以根据AERP波形的形状进行调制。单次试验诱发反应的贝叶斯估计进一步证明,这些时间相关的统计变化是由于剩余时间序列中诱发锁相成分的残余所致。

结论

由于在诱发电位研究中,诱发反应的逐次试验变异性通常被视为一个无关因素而被忽略,功率谱密度、互相关和谱相干度量的刺激相关调制通常归因于神经群体内部和之间连接性的动态变化。这项工作表明,诱发反应的逐次试验变异性必须被视为这种调制的一种可能解释。

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