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Sleep Stages Recognition Based on Combined Artificial Neural Network and Fuzzy System Using Wavelet Transform Features

机译:基于组合人工神经网络和使用小波变换功能的模糊系统的睡眠阶段识别

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Improving the quality of sleep is an important issue for many researches. A number of biomedical signals, such as EEG, EMG, and EOG were used to classify sleep stages. Based on those signals, one can detect and diagnose the sleep related disorders. There were many researches focused on automatic sleep stages classification. In this research, a new classification method is presented by applying Elman neuron network combined with fuzzy rules and features are extracted by wavelets packets. Nine subjects were recruited from Cheng-Ching General Hospital, Taichung, Taiwan. The sampling frequency is 250Hz and the single channel (C_3-A_1) EEG signal was acquired for each subject. Combined network was used to recognize the sleep stages in each epoch (a 10 second segment data). The classification results relied on the strong points of neural network and fuzzy logic with average sensitivity is 88.48%, average specificity achieves 95.96%, and average accuracy is 93.79%. The data samples and the length of sleep intervals will be increased for experiment in the future to improve the accuracy.
机译:提高睡眠质量是许多研究的重要问题。使用许多生物医学信号,例如EEG,EMG和EOG来分类睡眠阶段。基于这些信号,可以检测和诊断睡眠相关的障碍。有许多研究专注于自动睡眠阶段分类。在该研究中,通过应用Elman Neuron网络与模糊规则组合提供了一种新的分类方法,并且通过小波分组提取特征。九个科目是台湾台中川成宁综合医院的招聘。采样频率为250Hz,为每个主题获取单通道(C_3-A_1)EEG信号。组合网络用于识别每个时代(10秒段数据)中的睡眠阶段。依据神经网络的强点和平均敏感性的模糊逻辑依赖的分类结果为88.48%,平均特异性达到95.96%,平均准确性为93.79%。在将来的实验中,将增加数据样本和睡眠间隔的长度,以提高准确性。

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