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Symbolic representation of the EEG for sleep stage classification

机译:脑电图的符号表示,用于睡眠阶段分类

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Manual visualization-based sleep stage classification is a time-consuming task prone to errors. Since the correct identification of sleep stages is vital for the correct identification of sleep disorders and for the research in this field in general, there is a growing demand for efficient automatic classification methods. However, there is still no symbolic representation of the biomedical signals that leads to a reliable and accurate automatic sleep classification system. This work presents the application of a novel method for symbolic representation of the EEG and evaluates its potential as information source for a sleep stage classifier, in this case a SVM classifier. The data is first analyzed using Self-Organizing Maps (SOM) and a mutual information (MI)-based variable selection algorithm. Preliminary results of sleep data classification provide success rates around 70%. These results are promising since only EEG is used, and there is still room for improvement in this new symbolic representation of the signal.
机译:基于手动可视化的睡眠阶段分类是一项耗时且容易出错的任务。由于正确识别睡眠阶段对于正确识别睡眠障碍和整个领域的研究至关重要,因此,对有效的自动分类方法的需求不断增长。但是,仍然没有生物医学信号的符号表示可导致可靠和准确的自动睡眠分类系统。这项工作介绍了一种新方法的应用,用于脑电图的符号表示,并评估了其作为睡眠阶段分类器(在本例中为SVM分类器)的信息源的潜力。首先使用自组织映射(SOM)和基于互信息(MI)的变量选择算法分析数据。睡眠数据分类的初步结果提供了大约70%的成功率。这些结果是有希望的,因为仅使用了脑电图,并且在信号的这种新符号表示中仍有改进的空间。

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