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Detection of event-related potentials in individual subjects using support vector machines

机译:使用支持向量机检测单个受试者中与事件相关的电位

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摘要

Event-related potentials (ERPs) are tiny electrical brain responses in the human electroencephalogram that are typically not detectable until they are isolated by a process of signal averaging. Owing to the extremely smallsize of ERP components (ranging from less than 1 μV to tens of μV), compared to background brain rhythms, statistical analyses of ERPs are predominantly carried out in groups of subjects. This limitation is a barrier to the translation of ERP-based neuroscience to applications such as medical diagnostics. We show here that support vector machines (SVMs) are a useful method to detect ERP components in individual subjects with a small set of electrodes and a small number of trials for a mismatch negativity (MMN) ERP component. Such a reduced experiment setup is important for clinical applications. One hundred healthy individuals were presented with an auditory pattern containing pattern-violating deviants to evoke the MMN. Two-class SVMs were then trained to classify averaged ERP waveforms in response to the standard tone (tones that match the pattern) and deviant tone stimuli (tones that violate the pattern). The influence of kernel type, number of epochs, electrode selection, and temporal window size in the averaged waveform were explored. When using all electrodes, averages of all available epochs, and a temporal window from 0 to 900-ms post-stimulus, a linear SVM achieved 94.5 % accuracy. Further analyses using SVMs trained with narrower, sliding temporal windows confirmed the sensitivity of the SVM to data in the latency range associated with the MMN.
机译:事件相关电位(ERP)是人类脑电图中微小的脑电反应,通常只有通过信号平均过程将其隔离后才能检测到。与背景脑节律相比,由于ERP组件的尺寸非常小(范围从小于1μV到数十μV),因此主要在受试者组中进行ERP的统计分析。此限制是将基于ERP的神经科学转换为医学诊断等应用程序的障碍。我们在这里表明,支持向量机(SVM)是一种有用的方法,可以检测带有少量电极的个体对象中的ERP组件,并且可以进行不匹配阴性(MMN)ERP组件的少量试验。这样减少的实验设置对于临床应用很重要。向一百名健康个体提供听觉模式,其中包含违反模式的异常,以唤起MMN。然后训练两类SVM,以响应标准音调(与模式匹配的音调)和异常音调刺激(违反模式的音调)对平均ERP波形进行分类。探讨了核类型,历元数,电极选择和时间窗口大小对平均波形的影响。当使用所有电极,所有可用历元的平均值以及刺激后0到900毫秒的时间窗时,线性SVM的准确度达到94.5%。使用由更狭窄的滑动时间窗口训练的SVM进行的进一步分析证实了SVM对与MMN相关的延迟范围内的数据的敏感性。

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