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单试次皮质电信号的时频分析:基线校正及其他。

Single-trial time-frequency analysis of electrocortical signals: baseline correction and beyond.

机构信息

Key Laboratory of Cognition and Personality (Ministry of Education) and School of Psychology, Southwest University, Chongqing, China.

出版信息

Neuroimage. 2014 Jan 1;84:876-87. doi: 10.1016/j.neuroimage.2013.09.055. Epub 2013 Sep 29.

Abstract

Event-related desynchronization (ERD) and synchronization (ERS) of electrocortical signals (e.g., electroencephalogram [EEG] and magnetoencephalogram) reflect important aspects of sensory, motor, and cognitive cortical processing. The detection of ERD and ERS relies on time-frequency decomposition of single-trial electrocortical signals, to identify significant stimulus-induced changes in power within specific frequency bands. Typically, these changes are quantified by expressing post-stimulus EEG power as a percentage of change relative to pre-stimulus EEG power. However, expressing post-stimulus EEG power relative to pre-stimulus EEG power entails two important and surprisingly neglected issues. First, it can introduce a significant bias in the estimation of ERD/ERS magnitude. Second, it confuses the contribution of pre- and post-stimulus EEG power. Taking the human electrocortical responses elicited by transient nociceptive stimuli as an example, we demonstrate that expressing ERD/ERS as the average percentage of change calculated at single-trial level introduces a positive bias, resulting in an overestimation of ERS and an underestimation of ERD. This bias can be avoided using a single-trial baseline subtraction approach. Furthermore, given that the variability in ERD/ERS is not only dependent on the variability in post-stimulus power but also on the variability in pre-stimulus power, an estimation of the respective contribution of pre- and post-stimulus EEG variability is needed. This can be achieved using a multivariate linear regression (MVLR) model, which could be optimally estimated using partial least square (PLS) regression, to dissect and quantify the relationship between behavioral variables and pre- and post-stimulus EEG activities. In summary, combining single-trial baseline subtraction approach with PLS regression can be used to achieve a correct detection and quantification of ERD/ERS.

摘要

事件相关去同步化(ERD)和同步化(ERS)的脑电信号(如脑电图[EEG]和脑磁图)反映了感觉、运动和认知皮层处理的重要方面。ERD 和 ERS 的检测依赖于单试脑电信号的时频分解,以识别特定频带内与刺激相关的功率显著变化。通常,这些变化通过将刺激后 EEG 功率表示为相对于刺激前 EEG 功率的百分比变化来量化。然而,将刺激后 EEG 功率表示为相对于刺激前 EEG 功率的百分比变化涉及两个重要且令人惊讶的被忽视的问题。首先,它会对 ERD/ERS 幅度的估计引入显著偏差。其次,它混淆了刺激前和刺激后 EEG 功率的贡献。以瞬态伤害性刺激引起的人类脑电响应为例,我们证明,在单试水平上计算平均百分比变化来表示 ERD/ERS 会引入正偏差,导致 ERS 高估和 ERD 低估。可以使用单试基线减法方法避免这种偏差。此外,由于 ERD/ERS 的可变性不仅取决于刺激后功率的可变性,还取决于刺激前功率的可变性,因此需要估计刺激前和刺激后 EEG 可变性的各自贡献。这可以使用多元线性回归(MVLR)模型来实现,该模型可以使用偏最小二乘(PLS)回归进行最佳估计,以剖析和量化行为变量与刺激前和刺激后 EEG 活动之间的关系。总之,结合单试基线减法方法和 PLS 回归可以用于正确检测和量化 ERD/ERS。

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