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首页> 外文期刊>Neural Computing and Applications >Classification of sleep stages using class-dependent sequential feature selection and artificial neural network
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Classification of sleep stages using class-dependent sequential feature selection and artificial neural network

机译:使用类别相关的顺序特征选择和人工神经网络对睡眠阶段进行分类

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摘要

Several studies have been conducted for automatic classification of sleep stages to ease time-consuming manual scoring process that can involve a high degree of experience and subjectivity. But none of them has found a practical usage in medical area so far because of their under acceptable success rates. In this study, a different classification scheme is proposed to increase the success rate in automatic sleep stage scoring in which sleep stages were classified as Awake, Non-REM1, Non-REM2, Non-REM3 and REM stages. Using EEG, EMG and EOG recordings of five healthy subjects, a modified version of sequential feature selection method was applied to the sleep epochs in class by class basis and different artificial neural network (ANN) architectures were trained for each class. That is to say, sleep stages were classified with five ANN architectures each of which uses different features and different network parameters for classification. The highest classification accuracy was obtained for REM sleep as 95.13 % in addition to the lowest classification accuracy of 86.42 % for Non-REM3 sleep. The overall accuracy, on the other hand, was recorded as 90.93 %, which is a comparatively good result when the other studies using all stages are taken into account.
机译:对于睡眠阶段的自动分类,已经进行了一些研究,以减轻耗时的手动评分过程,该过程可能涉及高度的经验和主观性。但是到目前为止,由于它们的成功率都在可接受范围内,因此没有一个在医学领域有实际用途。在这项研究中,提出了一种不同的分类方案,以提高自动睡眠阶段评分的成功率,该评分方法将睡眠阶段分为清醒阶段,非REM1,非REM2,非REM3和REM阶段。使用五个健康受试者的EEG,EMG和EOG记录,将逐级特征选择方法的改进版本应用于逐个班级的睡眠时期,并为每个班级训练了不同的人工神经网络(ANN)体系结构。也就是说,睡眠阶段使用五种ANN架构进行分类,每种架构使用不同的功能和不同的网络参数进行分类。除了REM3睡眠的最低分类精度为86.42%之外,REM睡眠的最高分类精度为95.13%。另一方面,总体准确度记录为90.93%,考虑到使用所有阶段的其他研究时,这是一个比较好的结果。

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