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Machine learning with ensemble stacking model for automated sleep staging using dual-channel EEG signal

机译:使用双通道EEG信号进行自动睡眠分段的集合堆叠模型

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Sleep staging is an important part of diagnosing the different types of sleep-related disorders because any discrepancies in the sleep scoring process may cause serious health problems such as misinterpretations of sleep patterns, medication errors, and improper diagnosis. The best way of analyzing sleep staging is visual interpretations of the polysomnography (PSG) signals recordings from the patients, which is a quite tedious task, requires more domain experts, and time-consuming process. This proposed study aims to develop a new automated sleep staging system using the brain EEG signals. Based on a new automated sleep staging system based on an ensemble learning stacking model that integrates Random Forest (RF) and eXtreme Gradient Boosting (XGBoosting). Additionally, this proposed methodology considers the subjects' age, which helps analyze the S1 sleep stage properly. In this study, both linear (time and frequency) and non-linear features are extracted from the pre-processed signals. The most relevant features are selected using the ReliefF weight algorithm. Finally, the selected features are classified through the proposed two-layer stacking model. The proposed methodology performance is evaluated using the two most popular datasets, such as the Sleep-EDF dataset (S-EDF) and Sleep Expanded-EDF database (SE-EDF) under the Rechtschaffen & Kales (R&K) sleep scoring rules. The performance of the proposed method is also compared with the existing published sleep staging methods. The comparison results signify that the proposed sleep staging system has an excellent improvement in classification accuracy for the six-two sleep states classification. In the S-EDF dataset, the overall accuracy and Cohen's kappa coefficient score obtained by the proposed model is (91.10%, 0.87) and (90.68%, 0.86) with inclusion and exclusion of age feature using the Fpz-Cz channel, respectively. Similarly, the Pz-Oz channel's performance is (90.56%, 0.86) with age feature and (90.11%, 0.86) without age feature. The performed results with the SE-EDF dataset using Fpz-Cz channel is (81.32%, 0.77) and (81.06%, 0.76), using Pz-Oz channel with the inclusion and exclusion of the age feature, respectively. Similarly the model achieved an overall accuracy of 96.67% (CT-6), 96.60% (CT-5), 96.28% (CT-4),96.30% (CT-3) and 97.30% (CT-2) for with 16 selected features using S-EDF database. Similarly the model reported an overall accuracy of 85.85%, 84.98%, 85.51%, 85.37% and 87.40% for CT-6 to CT-2 with 18 selected features using SE-EDF database.
机译:睡眠分期是诊断不同类型的睡眠相关疾病的重要组成部分,因为睡眠评分过程中的任何差异可能导致严重的健康问题,例如睡眠模式的误解,药物错误和诊断不当。分析睡眠分段的最佳方式是对多核桃造理(PSG)信号的视觉解释来自患者的录音,这是一个相当繁琐的任务,需要更多的领域专家和耗时的过程。该拟议的研究旨在使用大脑EEG信号开发一种新的自动睡眠分期系统。基于新的自动睡眠分段系统,基于集成随机林(RF)和极端梯度提升(XGBoosting)的集成堆叠模型。此外,这一提出的方法考虑了受试者的年龄,这有助于将S1睡眠阶段正常分析。在该研究中,从预处理的信号中提取线性(时间和频率)和非线性特征。使用Relieff权重算法选择最相关的功能。最后,所选功能通过所提出的双层堆叠模型分类。使用两个最流行的数据集进行评估所提出的方法性能,例如睡眠EDF数据集(S-EDF)和睡眠扩展-EDF数据库(R&K)睡眠评分规则。该方法的性能也与现有的已发表的睡眠分期方法进行比较。比较结果表示,所提出的睡眠分期系统对六二睡眠状态分类的分类准确性具有出色的改进。在S-EDF数据集中,所提出的模型获得的总体精度和COHEN的Kappa系数分数(91.10%,0.87)和(90.68%,0.86),分别使用FPZ-CZ通道包含和排除年龄特征。同样,PZ-OZ通道的性能(90.56%,0.86),年龄特征和(90.11%,0.86),没有年龄特征。使用FPZ-CZ通道的SE-EDF数据集的执行结果(81.32%,0.77)和(81.06%,0.76),分别包含并排除年龄特征。类似地,该模型达到了96.67%(CT-6),96.60%(CT-5),96.28%(CT-4),96.30%(CT-3)和97.30%(CT-2)的总精度为16使用S-EDF数据库的选定功能。同样,该模型报告的总精度为85.85%,84.98%,85.51%,85.3%和87.51%,85.37%和87.40%,CT-2,使用SE-EDF数据库具有18个选定的特征。

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