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Characterization of Arousals in Polysomnography Using the Statistical Significance of Power Change

机译:利用电力变化统计显着性的多面组唤醒表征

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Arousals are neural events during sleep represented as abrupt increases of high-frequency electroencephalogram (EEG) signals in polysomnography (PSG). In clinical practice, a human scorer uses visual detection to demarcate the starts and ends of arousals, whereas other properties of arousals are hardly ever studied. Here we characterized arousals by the statistical significance of arousal-associated changes in the EEG signal power. To evaluate the test-retest reliability, we used a database of 1026 men who completed two PSGs separated by several years. Ten-second segments of EEG signals that either contained or were without arousals were extracted. For each segment, the power of EEG signal filtered in delta, theta, alpha, beta or gamma frequency band was computed. Then for each PSG, statistical significance of the difference in power between the arousal-containing and the arousal-absent group of EEG segments was computed. The statistical significance showed good test-retest reliability (intraclass correlation coefficient ICC0.40). In comparison, the numeric value of the difference in power showed generally poor test-retest reliability (ICC <;0.10). The statistical significance had higher test-retest reliability in theta band (4-8 Hz) than in other frequency bands, and higher reliability in Stage 2 sleep than in rapid eye movement (REM) sleep. Furthermore, the statistical significance in theta band was not influenced by the incidence rate of arousals. Thus, statistical significance of power change in the theta band is a robust metric of arousal-associated EEG signal changes, which may become useful in studying diseases associated with abnormal arousals.
机译:唤醒是在睡眠期间的神经事件,表示为多核刻(PSG)中的高频脑电图(EEG)信号的突然增加。在临床实践中,人类得分手使用视觉检测划分唤醒的开始和结束,而唤醒的其他性质难以研究。在这里,我们通过EEG信号功率谐振相关变化的统计显着性表征了唤醒。为了评估测试 - 保持可靠性,我们使用了1026名男性的数据库,他们完成了几年分隔的两个PSG。提取含有或没有唤醒的脑电图信号的十二段。对于每个段,计算了在Δ,θ,alpha,beta或伽马频带中过滤的eeg信号的力量。然后,对于每个PSG,计算含唤起和唤醒段的唤醒段之间的功率差异的统计显着性。统计学显着性显示出良好的测试 - 保持可靠性(脑内相关系数ICC0.40)。相比之下,功率差异的数值显示出通常差的测试 - 保持性可靠性(ICC <; 0.10)。统计学显着性在Theta带(4-8Hz)中具有比其他频带更高的测试 - 保持性可靠性,并且在阶段2睡眠中的可靠性高于快速眼睛运动(REM)睡眠。此外,θ带的统计显着性不会受震动发生率的影响。因此,THETA带中功率变化的统计显着性是令人振奋相关的EEG信号变化的稳健性度量,这可能在研究与异常唤醒相关的疾病中有用。

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