Zeman Philip M, Till Bernie C, Livingston Nigel J, Tanaka James W, Driessen Peter F
CanAssist, University of Victoria, BC, Canada.
Clin Neurophysiol. 2007 Dec;118(12):2591-604. doi: 10.1016/j.clinph.2007.09.001. Epub 2007 Oct 29.
To evaluate the effectiveness of a new method of using Independent Component Analysis (ICA) and k-means clustering to increase the signal-to-noise ratio of Event-Related Potential (ERP) measurements while permitting standard statistical comparisons to be made despite the inter-subject variations characteristic of ICA.
Per-subject ICA results were used to create a channel pool, with unequal weights, that could be applied consistently across subjects. Signals derived from this and other pooling schemes, and from unpooled electrodes, were subjected to identical statistical analysis of the N170 own-face effect in a Joe/No Joe face recognition paradigm wherein participants monitored for a target face (Joe) presented amongst other unfamiliar faces and their own face. Results between the Joe, unfamiliar face and own face conditions were compared using Cohen's d statistic (square root of signal-to-noise ratio) to measure effect size.
When the own-face condition was compared to the Joe and unfamiliar-face conditions, the channel map method increased effect size by a factor ranging from 1.2 to 2.2. These results stand in contrast to previous findings, where conventional pooling schemes failed to reveal an N170 effect to the own-face stimulus (Tanaka JW, Curran T, Porterfield A, Collins D. The activation of pre-existing and acquired face representations: the N250 ERP as an index of face familiarity. J Cogn Neurosci 2006;18:1488-97). Consistent with conventional pooling schemes, the channel map approach showed no reliable differences between the Joe and Unfamiliar face conditions, yielding a decrease in effect size ranging from 0.13 to 0.75.
By increasing the signal-to-noise ratio in the measured waveforms, the channel pool method demonstrated an enhanced sensitivity to the neurophysiological response to own-face relative to other faces.
By overcoming the characteristic inter-subject variations of ICA, this work allows classic ERP analysis methods to exploit the improved signal-to-noise ratio obtainable with ICA.
评估一种使用独立成分分析(ICA)和k均值聚类的新方法的有效性,该方法可提高事件相关电位(ERP)测量的信噪比,同时允许进行标准的统计比较,尽管ICA具有个体间差异的特征。
利用每个受试者的ICA结果创建一个具有不等权重的通道池,该通道池可在受试者之间一致应用。从该通道池和其他合并方案以及未合并电极获得的信号,在乔/非乔面部识别范式中,对N170自身面部效应进行相同的统计分析,其中参与者监测在其他不熟悉面孔和自己面孔中呈现的目标面孔(乔)。使用科恩d统计量(信噪比的平方根)比较乔、不熟悉面孔和自身面孔条件之间的结果,以测量效应大小。
将自身面孔条件与乔和不熟悉面孔条件进行比较时,通道映射方法使效应大小增加了1.2至2.2倍。这些结果与之前的研究结果形成对比,在之前的研究中,传统的合并方案未能揭示对自身面孔刺激的N170效应(田中JW、柯伦T、波特菲尔德A、柯林斯D。预先存在和后天获得的面部表征的激活:N250 ERP作为面部熟悉度的指标。《认知神经科学杂志》2006年;18:1488 - 97)。与传统合并方案一致,通道映射方法显示乔和不熟悉面孔条件之间没有可靠差异,效应大小降低了0.13至0.75。
通过提高测量波形中的信噪比,通道池方法相对于其他面孔表现出对自身面孔神经生理反应的更高敏感性。
通过克服ICA的个体间差异特征,这项工作使经典的ERP分析方法能够利用ICA可获得的改善后的信噪比。