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An accurate sleep stages classification system using a new class of optimally time-frequency localized three-band wavelet filter bank

机译:一种准确的睡眠阶段分类系统,使用新的一类最佳的时频定位三频小波滤波器银行

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Sleep related disorder causes diminished quality of lives in human beings. Sleep scoring or sleep staging is the process of classifying various sleep stages which helps to detect the quality of sleep. The identification of sleep stages using electroencephalogram (EEG) signals is an arduous task. Just by looking at an EEG signal, one cannot determine the sleep stages precisely. Sleep specialists may make errors in identifying sleep stages by visual inspection. To mitigate the erroneous identification and to reduce the burden on doctors, a computer-aided EEG based system can be deployed in the hospitals, which can help identify the sleep stages, correctly. Several automated systems based on the analysis of polysomnographic (PSG) signals have been proposed. A few sleep stage scoring systems using EEG signals have also been proposed. But, still there is a need for a robust and accurate portable system developed using huge dataset. In this study, we have developed a new single-channel EEG based sleep-stages identification system using a novel set of wavelet-based features extracted from a large EEG dataset. We employed a novel three-band time-frequency localized (TBTFL) wavelet filter bank (FB). The EEG signals are decomposed using three-level wavelet decomposition, yielding seven sub-bands (SBs). This is followed by the computation of discriminating features namely, log-energy (LE), signal-fractal-dimensions (SFD), and signal-sample-entropy (SSE) from all seven SBs. The extracted features are ranked and fed to the support vector machine (SVM) and other supervised learning classifiers. In this study, we have considered five different classification problems (CPs), (two-class (CP-1), three-class (CP-2), four-class (CP-3), five-class (CP-4) and six-class (CP-5)). The proposed system yielded accuracies of 98.3%, 93.9%, 92.1%, 91.7%, and 91.5% for CP-1 to CP-5, respectively, using 10-fold cross validation (CV) technique.
机译:睡眠相关疾病导致人类生活质量下降。睡眠评分或睡眠分期是分类各种睡眠阶段的过程,有助于检测睡眠质量。使用脑电图(EEG)信号识别睡眠阶段是艰巨的任务。只要通过查看EEG信号,可以精确地确定睡眠阶段。睡眠专家可能会通过目视检查来识别睡眠阶段的错误。为了减轻错误的识别并减少医生的负担,可以在医院部署一个计算机辅助的eeg的系统,可以帮助正确识别睡眠阶段。已经提出了一种基于多仪表(PSG)信号分析的自动化系统。还提出了一些使用EEG信号的睡眠阶段评分系统。但是,仍然需要使用巨大数据集开发的强大和准确的便携式系统。在本研究中,我们开发了一种使用从大EEG数据集中提取的基于小波的基于小波的基于小波的功能的新的单通道eEG基础睡眠阶段识别系统。我们采用了一种新颖的三频段时频定期(TBTFL)小波滤波器组(FB)。 EEG信号使用三级小波分解进行分解,产生七个子带(SBS)。这是从所有七个SBS计算的鉴别特征,即来自所有七种SBS的信号 - 分形尺寸(SSE)。提取的特征被排序并馈送到支持向量机(SVM)和其他监督的学习分类器。在这项研究中,我们考虑了五个不同的分类问题(CPS),(两班(CP-1),三类(CP-2),四类(CP-3),五类(CP-4 )和六级(CP-5))。使用10倍交叉验证(CV)技术,所提出的系统分别产生98.3%,93.9%,92.1%,91.7%和91.5%的CP-5。

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