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An analysis of two common reference points for EEGS

机译:EEGS的两个常见参考点分析

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Clinical electroencephalographic (EEG) data varies significantly depending on a number of operational conditions (e.g., the type and placement of electrodes, the type of electrical grounding used). This investigation explores the statistical differences present in two different referential montages: Linked Ear (LE) and Averaged Reference (AR). Each of these accounts for approximately 45% of the data in the TUH EEG Corpus. In this study, we explore the impact this variability has on machine learning performance. We compare the statistical properties of features generated using these two montages, and explore the impact of performance on our standard Hidden Markov Model (HMM) based classification system. We show that a system trained on LE data significantly outperforms one trained only on AR data (77.2% vs. 61.4%). We also demonstrate that performance of a system trained on both data sets is somewhat compromised (71.4% vs. 77.2%). A statistical analysis of the data suggests that mean, variance and channel normalization should be considered. However, cepstral mean subtraction failed to produce an improvement in performance, suggesting that the impact of these statistical differences is subtler.
机译:临床脑电图(EEG)数据会根据多种操作条件(例如,电极的类型和位置,所使用的电接地的类型)而有很大差异。这项研究探讨了两种不同的参考蒙太奇中存在的统计差异:链接耳朵(LE)和平均参考(AR)。这些中的每一个约占TUH EEG语料库中数据的45%。在这项研究中,我们探讨了这种可变性对机器学习性能的影响。我们比较了使用这两种蒙太奇生成的特征的统计属性,并探讨了性能对我们基于标准隐马尔可夫模型(HMM)的分类系统的影响。我们显示,对LE数据进行训练的系统明显优于仅对AR数据进行训练的系统(77.2%对61.4%)。我们还证明,在两个数据集上训练的系统的性能都受到一定程度的影响(分别为71.4%和77.2%)。数据的统计分析表明,应考虑均值,方差和渠道归一化。但是,倒谱均值减法无法改善性能,这表明这些统计差异的影响是微妙的。

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