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Learning EEG: Identification of novel electroencephalogram classifications and variability of baseline features in a large clinical dataset

机译:学习EEG:在大型临床数据集中识别新型脑电图分类和基线特征的可变性

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Despite its increasing use and public health importance, very little is known about the consistency and variability of baseline electroencephalogram (EEG) measurements in healthy individuals and in patient populations. This research aims to investigate population variability of EEG features and their ability to classify patients based on patient characteristics. We first propose a data-driven method of evaluating consistency and variability of commonly used EEG features. Using a Kruskal-Wallis test we find normalized features compared across different time intervals within a given recording to be consistent. Further, we find certain features to have better intra-subject consistency than others, notably spectral entropy, skew, and kurtosis. Using these results we apply machine learning techniques to classify patients based on sex, age, medications taken, and clinical impressions. We find statistically significant classifications for age, medications taken, and clinical impressions, achieving accuracies above 86%, 72%, and 74%, respectively.
机译:尽管使用越来越多,但公共卫生重要性,但很少是关于基线脑电图(EEG)在健康个体和患者群体中测量的一致性和变化而闻名的。本研究旨在调查脑电图特征的人口可变性及其基于患者特征对患者进行分类的能力。我们首先提出了一种评估常用EEG特征的一致性和可变性的数据驱动方法。使用Kruskal-Wallis测试,我们在给定记录中的不同时间间隔中找到了归一化特征,以保持一致。此外,我们发现某些特征可以具有比其他人的更好的主题一致性,特别是光谱熵,偏斜和峰氏症。使用这些结果,我们将机器学习技术应用于基于性别,年龄,服用药物和临床印象的患者进行分类。我们在统计上显着的年龄,采取药物和临床印象,分别达到86 %,72 %和74 %的临床印象。

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