Enabling event-related potential assessments using low-density electrode arrays: A new technique for denoising individual channel EEG data

S. Hajra, Shishir Gopinath, Careesa C. Liu, G. Pawlowski, S. Fickling, Xiaowei Song, R. D'Arcy
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引用次数: 8

Abstract

Background: Brain function assessments based on event-related potentials (ERPs) derived from electroencephalography (EEG) are increasingly being conducted in realistic out-of-the-laboratory settings for clinical and non-clinical uses. For rapid testing and practical limitations, such applications require the use of low-density electrode arrays. A major impediment to their use in these applications is the lack of denoising techniques capable of removing artefactual contamination and isolating the ERPs features of interest within low-density arrays. Methods: A novel denoising technique combining empirical mode decomposition (EMD) with template matching procedure is developed and applied to individual-channel data, and the results of this new approach are compared to the results of a conventional (independent component analysis) denoising approach. Both whole-epoch morphological comparisons and specific ERP feature amplitude comparisons were undertaken at the group and individual level for a variety of ERPs indexing sensory (N100), attention (P300) and language processing (N400) using data from 31 healthy adults. Results: The new denoising technique successfully enables the capture of ERPs ranging from low-level sensation to attention to language processing (all p<0.05). Intra-class correlation analysis reveals high degree of similarity in the time series waveforms derived from the new and the conventional denoising approaches for all ERPs (highest r=0.89, all p<0.001). Analysis of specific ERP features of interest reveals no significant differences between the ERP amplitudes of the waveforms generated using the two techniques, and Pearson correlation suggests a high degree of similarity at the individual level (0.88 for N100, 0.78 for P300, and 0.80 for N400, all p<0.05). Conclusion: The new denoising technique is capable of operating on individual-channel EEG data, and produces results that are similar to those produced by conventional denoising techniques that use data from large whole-head electrode arrays. This new approach may thus enable more widespread use of ERP techniques in real world settings with low-density electrode arrays.
使用低密度电极阵列实现事件相关电位评估:一种去噪单个通道脑电图数据的新技术
背景:基于脑电图(EEG)得出的事件相关电位(ERPs)的脑功能评估越来越多地在临床和非临床的现实实验室环境中进行。由于快速测试和实际限制,此类应用需要使用低密度电极阵列。在这些应用中使用它们的一个主要障碍是缺乏能够去除人工污染和隔离低密度阵列中感兴趣的erp特征的去噪技术。方法:开发了一种结合经验模态分解(EMD)和模板匹配过程的新型去噪技术,并将其应用于单通道数据,并将这种新方法的结果与传统(独立分量分析)去噪方法的结果进行了比较。利用31名健康成人的数据,在群体和个体水平上对各种ERP指标(感觉(N100)、注意(P300)和语言处理(N400)进行了全epoch形态学比较和特定ERP特征幅度的比较。结果:新的去噪技术成功地捕获了从低级感觉到注意到语言处理的erp(均p<0.05)。类内相关分析显示,所有erp的新降噪方法和传统降噪方法得出的时间序列波形高度相似(最高r=0.89,所有p<0.001)。对特定ERP特征的分析显示,使用两种技术产生的ERP波形振幅之间没有显着差异,Pearson相关性表明个体水平上的相似性很高(N100为0.88,P300为0.78,N400为0.80,均p<0.05)。结论:新的去噪技术能够对单通道EEG数据进行操作,并且产生的结果与使用大型全头部电极阵列数据的传统去噪技术产生的结果相似。因此,这种新方法可能使ERP技术在低密度电极阵列的现实世界环境中得到更广泛的应用。
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