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首页> 外文期刊>International journal of psychophysiology: official journal of the International Organization of Psychophysiology >Decomposing delta, theta, and alpha time-frequency ERP activity from a visual oddball task using PCA.
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Decomposing delta, theta, and alpha time-frequency ERP activity from a visual oddball task using PCA.

机译:使用PCA从视觉奇异球任务中分解delta,theta和alpha时频ERP活动。

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OBJECTIVE: Time-frequency (TF) analysis has become an important tool for assessing electrical and magnetic brain activity from event-related paradigms. In electrical potential data, theta and delta activities have been shown to underlie P300 activity, and alpha has been shown to be inhibited during P300 activity. Measures of delta, theta, and alpha activity are commonly taken from TF surfaces. However, methods for extracting relevant activity do not commonly go beyond taking means of windows on the surface, analogous to measuring activity within a defined P300 window in time-only signal representations. The current objective was to use a data driven method to derive relevant TF components from event-related potential data from a large number of participants in an oddball paradigm. METHODS: A recently developed PCA approach was employed to extract TF components [Bernat, E. M., Williams, W. J., and Gehring, W. J. (2005). Decomposing ERP time-frequency energy using PCA. Clin Neurophysiol, 116(6), 1314-1334] from an ERP dataset of 2068 17 year olds (979 males). TF activity was taken from both individual trials and condition averages. Activity including frequencies ranging from 0 to 14 Hz and time ranging from stimulus onset to 1312.5 ms were decomposed. RESULTS: A coordinated set of time-frequency events was apparent across the decompositions. Similar TF components representing earlier theta followed by delta were extracted from both individual trials and averaged data. Alpha activity, as predicted, was apparent only when time-frequency surfaces were generated from trial level data, and was characterized by a reduction during the P300. CONCLUSIONS: Theta, delta, and alpha activities were extracted with predictable time-courses. Notably, this approach was effective at characterizing data from a single-electrode. Finally, decomposition of TF data generated from individual trials and condition averages produced similar results, but with predictable differences. Specifically, trial level data evidenced more and more varied theta measures, and accounted for less overall variance.
机译:目的:时频(TF)分析已成为从事件相关范例评估脑电活动和磁活动的重要工具。在电势数据中,已证明theta和delta活性是P300活性的基础,而alpha已被证明在P300活性期间受到抑制。 δ,θ和α活性的度量通常从TF表面获取。但是,提取相关活动的方法通常不会超出在表面上使用窗口的手段,类似于在仅时间的信号表示中测量已定义的P300窗口内的活动。当前的目标是使用一种数据驱动的方法,从奇异球范式中大量参与者的事件相关的潜在数据中得出相关的TF成分。方法:采用最近开发的PCA方法提取TF成分[Bernat,E. M.,Williams,W. J.和Gehring,W. J.(2005)。使用PCA分解ERP时频能量。 [Clin Neurophysiol,116(6),1314-1334]来自2068名17岁男性(979名男性)的ERP数据集。 TF活性来自单个试验和条件平均值。包括频率范围从0到14 Hz和时间范围从刺激发作到1312.5 ms的活动被分解。结果:在分解过程中出现了一组协调的时频事件。从各个试验和平均数据中都提取出类似的TF成分,它们分别代表较早的theta和随后的delta。如所预测的,仅当从试验水平数据生成时频表面时,α活性才明显,并且其特征在于P300期间的活性降低。结论:以可预测的时程提取了θ,δ和α活性。值得注意的是,这种方法有效地表征了单电极的数据。最后,从个别试验和条件平均值产生的TF数据分解产生了相似的结果,但具有可预测的差异。具体而言,试验水平的数据证明了越来越多的theta量度,并说明了总体差异较小。

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