Time-Frequency Ridge Analysis of Sleep Stage Transitions

C. McCausland, P. Biglarbeigi, R. Bond, G. Yadollahikhales, D. Finlay
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Abstract

The development of automated sleep apnea detection algorithms is an emerging topic of interest [1], [2]. The main aim of automation is to reduce the time and cost associated with manually scoring polysomnogram (PSG) tests [3]. To automate the process, traditional algorithms attempt to mimic the human observer by implementing a series of predefined rules, such as the American Academy of Sleep Medicine's (AASM) scoring guidelines [4]. Recently, data driven methods have emerged [5]. Electroencephalogram (EEG) frequency is known to be an important feature for both the human observer and data driven methods for sleep staging classification. This study presents the initial findings for a novel approach to sleep stage analysis. EEG time-frequency analysis is used to characterise the dominant frequency with respect to time, specifically at the point of sleep stage transition. Poor inter-scorer agreement at sleep stage transitions is a noted limitation of current manual and automated methods as the point of transition is poorly defined [6]. The goal of this study is to further discuss on the topic of sleep staging automation and explore alternative and novel features to improve the inter-scorer reliability of sleep staging.
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睡眠阶段转换的时频脊分析
自动睡眠呼吸暂停检测算法的发展是一个新兴的话题[1],[2]。自动化的主要目的是减少人工计分多导睡眠图(PSG)测试的时间和成本[3]。为了实现这一过程的自动化,传统算法试图通过实施一系列预定义的规则来模仿人类观察者,例如美国睡眠医学学会(AASM)的评分指南[4]。最近出现了数据驱动的方法[5]。众所周知,脑电图(EEG)频率是人类观察者和数据驱动的睡眠分期分类方法的重要特征。本研究提出了一种新的睡眠阶段分析方法的初步发现。脑电图时频分析用于表征相对于时间的主导频率,特别是在睡眠阶段转换点。由于对睡眠阶段过渡点的定义不明确,目前手工和自动化方法的一个显著限制是在睡眠阶段过渡时评分者之间的一致性差[6]。本研究的目的是进一步探讨睡眠分期自动化的主题,并探索可替代的和新颖的功能,以提高睡眠分期的评分者之间的可靠性。
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