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The Automatic Sleep Stage Diagnosis Method by using SOM

机译:使用SOM自动睡眠阶段诊断方法

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In psychiatry, the sleep stage is one of the most important evidence for diagnosing mental disease. However, when doctor diagnose the sleep stage, much labor and skill are required, and a quantitative and objective method is required lor more accurate diagnosis. For this reason, an automatic diagnosis system must be developed. In this paper, we propose an automatic sleep stage diagnosis method by using Self-Organizing Maps (SOM). Neighborhood learning of SOM makes input data which has similar feature output closely, This function is effective to understandable classifying of complex input data automatically. We didn't only applied SOM to EEG of normal subjects but also applied to EEG of subjects suffer from disease. The spectrum of characteristic waves in EEG of disease subjects is often different from it of normal subjects. So, it is difficult to classify EEG of disease subjects with the rule for normal subjects. On the other hand, SOM classifies the EEG with features which data include. And rules for classification are made automatically. So, even the EEG of disease subjects is able to be classified automatically. In our experiment, first, the features included in EEG were extracted and learned by the Elman-type feedback SOM on competitive layer. The EEG data were preprocessed and the spectrums at sixteen bands were calculated. Second, the spectrum data were inputted to the Elman-type feedback SOM and data were classified on competitive layer. Third, the data were diagnosed by doctor and the sleep stages were labeled. The data of stage wake were input to the learned Elman-type feedback SOM, and the neuron which fires mostly was decided. This neuron is called wake winner neuron (WWN). Finally, data for testing were inputted to the learned Elman-type feedback SOM and corresponding sleep stage was diagnosed by the distance from WWN to Best Matching Unit. Experimental results indicated that the proposed method is able to achieve sleep stage diagnosis along with doctor's diagnosis.
机译:在精神病学中,睡眠阶段是诊断精神疾病的最重要证据之一。然而,当医生诊断睡眠阶段时,需要大量的劳动力和技能,并且需要定量和客观方法,因此更准确的诊断。因此,必须开发自动诊断系统。在本文中,我们通过使用自组织地图(SOM)提出了自动睡眠阶段诊断方法。 SOM的邻域学习使输入数据具有相似的特征输出,这种功能是有效的,可以自动地理分类复杂输入数据。我们不仅将SOM应用于正常科目的脑电图,而且应用于受试者的脑电图患有疾病。疾病受试者脑电图中的特征波的光谱通常与正常受试者的差异不同。因此,难以将疾病受试者的脑电图归类为正常科目的规则。另一方面,SOM将eEG分类为数据包括的功能。和分类规则是自动进行的。因此,即使是疾病受试者的脑电图能够自动归类。在我们的实验中,首先,通过竞争层上的ELMAN型反馈SOM提取并学习EEG中包含的功能。预处理EEG数据,并计算了十六条带的光谱。其次,将频谱数据输入到Elman型反馈SOM,数据在竞争层上进行分类。第三,数据被医生诊断,睡眠阶段被标记。舞台唤醒的数据被输入到学习的Elman型反馈SOM,并且决定了射击的神经元。这种神经元称为Wake Winner Neuron(WWN)。最后,将用于测试的数据输入到学习的Elman型反馈SOM,并且相应的睡眠阶段被WWN到最佳匹配单元的距离诊断。实验结果表明,该方法能够实现睡眠阶段诊断以及医生的诊断。

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