Classification of Sleep Stages for Healthy Subjects and Patients with Minor Sleep Disorders

C. Timplalexis, K. Diamantaras, I. Chouvarda
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引用次数: 9

Abstract

Sleep stage classification is one of the most critical steps in the effective diagnosis and treatment of sleeprelated disorders. Classic approaches involve trained human sleep scorers, utilizing a manual scoring technique, according to certain standards. This paper examines the implementation of an algorithm for the automation of the sleep scoring process. EEG recordings data are acquired from three different groups comprising of healthy subjects and people with minor sleep disorders. A mixture of time domain and frequency domain features are extracted. Temporal feature changes are utilized in order to capture contextual information of the EEG signal. Multiple classifiers are tested, culminating in a voting classifier, achieving a maximum accuracy of 90.8% for the healthy subjects' group. The main novelty introduced by the proposed solution is the algorithm's high accuracy when tested on a mixed dataset of healthy and patient subjects. The promising capabilities that derive from the successful implementation of this solution are discussed in the conclusions.
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健康受试者与轻度睡眠障碍患者的睡眠阶段分类
睡眠阶段分类是有效诊断和治疗睡眠相关障碍的最关键步骤之一。经典的方法包括训练有素的人类睡眠评分员,根据一定的标准使用手动评分技术。本文研究了睡眠评分过程自动化算法的实现。EEG记录数据来自三个不同的组,包括健康受试者和轻度睡眠障碍患者。提取时域和频域混合特征。利用时间特征变化来捕获脑电信号的上下文信息。对多个分类器进行了测试,最终得到一个投票分类器,在健康受试者组中实现了90.8%的最大准确率。提出的解决方案的主要新颖之处在于,当在健康和患者受试者的混合数据集上进行测试时,该算法具有很高的准确性。结论部分讨论了成功实现该解决方案所产生的有希望的功能。
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