Classifying Burst and Suppression in the EEG of Post Asphyctic Newborns using a Support Vector Machine

J. Löfhede, N. Löfgren, M. Thordstein, A. Flisberg, I. Kjellmer, K. Lindecrantz
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引用次数: 5

Abstract

A support vector machine (SVM) was trained to distinguish bursts from suppression in burst-suppression EEG, using five features inherent in the electro-encephalogram (EEG) as input. The study was based on data from six full term infants who had suffered from perinatal asphyxia, and the machine was trained with reference classifications made by an experienced electroencephalographer. The results show that the method may be useful, but that differences between patients in the data set makes optimization of the system difficult
基于支持向量机的新生儿窒息后脑电图爆发与抑制分类
利用脑电图固有的5个特征作为输入,训练支持向量机(SVM)来区分突发抑制脑电图中的突发与抑制。这项研究是基于六个患有围产期窒息的足月婴儿的数据,机器是由一位经验丰富的脑电图学家根据参考分类进行训练的。结果表明,该方法可能是有用的,但患者数据集的差异使系统难以优化
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