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A decision support system for automated identification of sleep stages from single-channel EEG signals

机译:决策支持系统,可根据单通道EEG信号自动识别睡眠阶段

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A decision support system for automated detection of sleep stages can alleviate the burden of medical professionals of manually annotating a large bulk of data, expedite sleep disorder diagnosis, and benefit research. Moreover, the implementation of a sleep monitoring device that is low-power and portable requires a reliable and successful sleep stage detection scheme. This article presents a methodology for computer-aided scoring of sleep stages using singe-channel EEG signals. EEG signal segments are first decomposed into sub-bands using tunable-Q wavelet transform (TQWT). Four statistical moments are then extracted from the resulting TQWT sub-bands. The proposed scheme exploits bootstrap aggregating (Bagging) for classification. Efficacy of the feature generation scheme is evaluated using intuitive, statistical, and Fisher criteria analyses. Furthermore, the efficacy of Bagging is evaluated using out-of-bag error analysis. Optimal choices of Bagging and TQWT parameters are explicated. The proposed methodology for automated sleep scoring is tested on the benchmark Sleep-EDF database and DREAMS Subjects database. Our methodology achieves 92.43%, 93.69%, 9436%, 96.55%, and 99.75% accuracy for 2-state to 6 state classification of sleep stages on Sleep-EDF database. Experimental results show that the algorithmic performance of the automated sleep scoring technique presented herein achieves better performance as compared to the state-of-the-art sleep staging algorithms. Besides, the proposed scheme performs equally well for two sleep scoring standards, namely- AASM and R&K. Moreover, the proposed decision support system yields high success rate for identifying sleep states REM and non-REM 1. It can be anticipated that owing to its use of only one channel of EEG signal, the proposed method will be suitable for device implementation, eliminate the onus of medical professionals of annotating a large volume of recordings manually, and expedite sleep disorder diagnosis. (C) 2017 Elsevier B.V. All rights reserved.
机译:用于自动检测睡眠阶段的决策支持系统可以减轻医疗专业人员手动注释大量数据,加快睡眠障碍诊断的速度,并有益于研究的负担。此外,低功率且便携式的睡眠监测设备的实现需要可靠且成功的睡眠阶段检测方案。本文介绍了一种使用单通道脑电信号对睡眠阶段进行计算机辅助评分的方法。首先,使用可调Q小波变换(TQWT)将EEG信号段分解为子带。然后从所得的TQWT子带中提取四个统计矩。所提出的方案利用了引导聚合(Bagging)进行分类。使用直观,统计和Fisher准则分析来评估特征生成方案的功效。此外,使用袋外误差分析来评估装袋的效率。说明了Bagging和TQWT参数的最佳选择。在基准Sleep-EDF数据库和DREAMS Subjects数据库上测试了建议的自动睡眠评分方法。我们的方法在Sleep-EDF数据库上对睡眠阶段的2状态到6状态分类实现了92.43%,93.69%,9436%,96.55%和99.75%的准确性。实验结果表明,与最新的睡眠分级算法相比,本文介绍的自动睡眠评分技术的算法性能达到了更好的性能。此外,所提出的方案对于两种睡眠评分标准,即AASM和R&K,同样表现良好。此外,所提出的决策支持系统在识别睡眠状态REM和非REM 1方面取得了很高的成功率。可以预见到,由于仅使用一个通道的EEG信号,因此所提出的方法将适用于设备的实现,消除了医务人员手动注释大量录音并加快睡眠障碍诊断的责任。 (C)2017 Elsevier B.V.保留所有权利。

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