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Efficient sleep stage recognition system based on EEC signal using k-means clustering based feature weighting

机译:基于基于k均值聚类的特征加权的EEC信号的高效睡眠阶段识别系统

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Sleep scoring is one of the most important methods for diagnosis in psychiatry and neurology. Sleep stag-ing is a time consuming and difficult task conducted by sleep specialists. The purposes of this work are to automatic score the sleep stages and to help to sleep physicians on sleep stage scoring. In this work, a novel data preprocessing method called κ-means clustering based feature weighting (KMCFW) has been proposed and combined with k-NN (κ-nearest neighbor) and decision tree classifiers to classify the EEC (electroencephalogram) sleep into six sleep stages including awake, N-REM (non-rapid eye movement) stage 1, N-REM stage 2, N-REM stage 3, REM, and non-sleep (movement time). First of all, frequency domain features belonging to sleep EEC signal have been extracted using Welch spectral analysis method and composed 129 features from EEC signal relating each sleep stages. In order to decrease the features, the statistical features comprising minimum value, maximum Value, standard deviation, and mean value have been used and then reduced from 129 to 4 features. In the second phase, the sleep stages dataset with four features has been weighted by means of fc-means clustering based feature weighting. Finally, the weighted sleep stages have been automatically classified into six sleep stages using k-NN and C4.5 decision tree classifier. In the classification of sleep stages, the k values of 10, 20, 30, 40, 50, and 60 in κ-NN classifier have been used and compared with each other. In the experimental results, while sleep stages has been classified with 55.88% success rate using k-NN classifier (for k value of 40), the weighted sleep stages with KMCFW has been recognized with 82.15% success rate k-NN classifier (for k value of 40). And also, we have investigated the relevance between sleep stages and frequency domain features belonging to EEC signal. These results have demonstrated that proposed weighting method have a con-siderable impact on automatic determining of sleep stages. This system could be used as an online system in the automatic scoring of sleep stages and helps to sleep physicians in the sleep scoring process.
机译:睡眠评分是精神病学和神经病学中最重要的诊断方法之一。睡眠停滞是睡眠专家进行的耗时且困难的任务。这项工作的目的是对睡眠阶段进行自动评分,并帮助睡眠医生对睡眠阶段进行评分。在这项工作中,提出了一种新的数据预处理方法,称为基于κ-均值聚类的特征加权(KMCFW),并将其与k-NN(κ最近邻)和决策树分类器结合,将EEC(脑电图)睡眠分为六种睡眠包括清醒阶段,N-REM(非快速眼动)阶段,N-REM阶段2,N-REM阶段3,REM和非睡眠(运动时间)。首先,已经使用韦尔奇频谱分析方法提取了属于睡眠EEC信号的频域特征,并从与每个睡眠阶段相关的EEC信号中组成了129个特征。为了减少特征,已使用包括最小值,最大值,标准偏差和平均值的统计特征,然后将其从129个特征减少到4个特征。在第二阶段,已通过基于fc-means聚类的特征加权对具有四个特征的睡眠阶段数据集进行了加权。最后,加权睡眠阶段已使用k-NN和C4.5决策树分类器自动分为六个睡眠阶段。在睡眠阶段的分类中,已使用κ-NN分类器中的k值10、20、30、40、50和60进行了比较。在实验结果中,虽然使用k-NN分类器将睡眠阶段的成功率分类为55.88%(对于k值为40),但使用KMCFW的加权睡眠阶段已被识别为82.15%的成功率k-NN分类器(对于k值40)。并且,我们还研究了睡眠阶段与属于EEC信号的频域特征之间的相关性。这些结果表明,提出的加权方法对睡眠阶段的自动确定具有相当大的影响。该系统可用作睡眠阶段自动评分的在线系统,并有助于睡眠医师在睡眠评分过程中使用。

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