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A comparative study on classification of sleep stage based on EEG signals using feature selection and classification algorithms.

机译:基于脑电信号特征选择和分类算法的睡眠阶段分类比较研究。

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摘要

Sleep scoring is one of the most important diagnostic methods in psychiatry and neurology. Sleep staging is a time consuming and difficult task undertaken by sleep experts. This study aims to identify a method which would classify sleep stages automatically and with a high degree of accuracy and, in this manner, will assist sleep experts. This study consists of three stages: feature extraction, feature selection from EEG signals, and classification of these signals. In the feature extraction stage, it is used 20 attribute algorithms in four categories. 41 feature parameters were obtained from these algorithms. Feature selection is important in the elimination of irrelevant and redundant features and in this manner prediction accuracy is improved and computational overhead in classification is reduced. Effective feature selection algorithms such as minimum redundancy maximum relevance (mRMR); fast correlation based feature selection (FCBF); ReliefF; t-test; and Fisher score algorithms are preferred at the feature selection stage in selecting a set of features which best represent EEG signals. The features obtained are used as input parameters for the classification algorithms. At the classification stage, five different classification algorithms (random forest (RF); feed-forward neural network (FFNN); decision tree (DT); support vector machine (SVM); and radial basis function neural network (RBF)) classify the problem. The results, obtained from different classification algorithms, are provided so that a comparison can be made between computation times and accuracy rates. Finally, it is obtained 97.03?% classification accuracy using the proposed method. The results show that the proposed method indicate the ability to design a new intelligent assistance sleep scoring system.
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。睡眠分阶段是睡眠专家进行的耗时且困难的任务。这项研究旨在确定一种可以自动,高度准确地对睡眠阶段进行分类的方法,并以此方式协助睡眠专家。这项研究包括三个阶段:特征提取,从EEG信号中选择特征以及对这些信号进行分类。在特征提取阶段,在四个类别中使用了20种属性算法。从这些算法中获得了41个特征参数。特征选择对于消除不相关和多余的特征很重要,这样可以提高预测精度,并减少分类中的计算开销。有效的特征选择算法,例如最小冗余最大相关性(mRMR);基于快速相关的特征选择(FCBF);救济F; t检验在选择一组最能代表脑电信号的特征时,最好在特征选择阶段使用Fisher和Fisher评分算法。所获得的特征用作分类算法的输入参数。在分类阶段,五种不同的分类算法(随机森林(RF);前馈神经网络(FFNN);决策树(DT);支持向量机(SVM);以及径向基函数神经网络(RBF))对分类进行了分类问题。提供了从不同分类算法获得的结果,以便可以在计算时间和准确率之间进行比较。最终,使用所提出的方法获得了97.03%的分类精度。结果表明,该方法具有设计新型智能辅助睡眠评分系统的能力。

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