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EEG-Based Automatic Sleep Staging Using Ontology and Weighting Feature Analysis

机译:基于本体和加权特征分析的基于脑电图的自动睡眠分期

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摘要

Sleep staging is considered as an effective indicator for auxiliary diagnosis of sleep diseases and related psychiatric diseases, so it attracts a lot of attention from sleep researchers. Nevertheless, sleep staging based on visual inspection of tradition is subjective, time-consuming, and error-prone due to the large bulk of data which have to be processed. Therefore, automatic sleep staging is essential in order to solve these problems. In this article, an electroencephalogram- (EEG-) based scheme that is able to automatically classify sleep stages is proposed. Firstly, EEG data are preprocessed to remove artifacts, extract features, and normalization. Secondly, the normalized features and other context information are stored using an ontology-based model (OBM). Thirdly, an improved method of self-adaptive correlation analysis is designed to select the most effective EEG features. Based on these EEG features and weighting features analysis, the improved random forest (RF) is considered as the classifier to achieve the classification of sleep stages. To investigate the classification ability of the proposed method, several sets of experiments are designed and conducted to classify the sleep stages into two, three, four, and five states. The accuracy of five-state classification is 89.37%, which is improved compared to the accuracy using unimproved RF (84.37%) or previously reported classifiers. In addition, a set of controlled experiments is executed to verify the effect of the number of sleep segments (epochs) on the classification, and the results demonstrate that the proposed scheme is less affected by the sleep segments.
机译:睡眠分期被认为是辅助诊断睡眠疾病和相关精神疾病的有效指标,因此它引起了睡眠研究人员的广泛关注。然而,由于必须处理大量数据,因此基于视觉检查传统的睡眠分阶段是主观的,耗时的并且容易出错。因此,自动睡眠分级对于解决这些问题至关重要。在本文中,提出了一种能够自动分类睡眠阶段的基于脑电图(EEG)的方案。首先,对脑电数据进行预处理以去除伪影,提取特征并进行归一化。其次,使用基于本体的模型(OBM)存储规范化的特征和其他上下文信息。第三,设计了一种改进的自适应相关分析方法,以选择最有效的脑电特征。基于这些EEG特征和加权特征分析,改进的随机森林(RF)被视为实现睡眠阶段分类的分类器。为了研究该方法的分类能力,设计并进行了几组实验,将睡眠阶段分为两个,三个,四个和五个状态。五态分类的准确性为89.37%,与使用未经改进的RF(84.37%)或先前报告的分类器的准确性相比有所提高。另外,执行一组受控实验以验证睡眠段(时期)的数量对分类的影响,结果表明所提出的方案受睡眠段的影响较小。

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