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Method for detection of respiratory cycle-related EEG changes in sleep-disordered breathing.

机译:用于检测睡眠障碍性呼吸中与呼吸周期相关的脑电图变化的方法。

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摘要

STUDY OBJECTIVES: In sleep-disordered breathing (SDB), visual or computerized analysis of electroencephalogram (EEG) signals shows that disruption of sleep architecture occurs in association with apneas and hypopneas. We developed a new signal analysis algorithm to investigate whether brief changes in cortical activity can also occur with individual respiratory cycles. DESIGN: Retrospective. SETTING: University sleep laboratory. PARTICIPANTS: A 6 year-old boy with SDB. INTERVENTION: Polysomnography before and after clinically indicated adenotonsillectomy. MEASUREMENTS: For the first 3 hours of nocturnal sleep, a computer algorithm divided nonapneic respiratory cycles into 4 segments and, for each, computed mean EEG powers within delta, theta, alpha, sigma, and beta frequency ranges. Differences between segment-specific EEG powers were tested by analysis of variance. Respiratory cycle-related EEG changes (RCREC) were quantified. RESULTS: Preoperative RCREC were statistically significant in delta (P < .0001), theta (P < .001), and sigma (P < .0001) but not alpha or beta (P > .01) ranges. One year after the operation, RCREC in all ranges showed statistical significance (P < .01), but delta, theta, and sigma RCREC had decreased, whereas alpha and beta RCREC had increased. Preoperative RCREC also were demonstrated in a sequence of 101 breaths that contained no apneas or hypopneas (P < .0001). Several tested variations in the signal-analysis approach, including analysis of the entire nocturnal polysomnogram, did not meaningfully improve the significance of RCREC. CONCLUSIONS: In this child with SDB, the EEG varied with respiratory cycles to a quantifiable extent that changed after adenotonsillectomy. We speculate that RCREC may reflect brief but extremely numerous microarousals.
机译:研究目的:在睡眠呼吸障碍(SDB)中,对脑电图(EEG)信号进行视觉或计算机分析表明,睡眠结构的破坏与呼吸暂停和呼吸不足有关。我们开发了一种新的信号分析算法,以研究是否在单个呼吸周期中皮质活动也可能发生短暂变化。设计:回顾性。地点:大学睡眠实验室。参与者:一名6岁男孩,患有SDB。干预:临床上提示腺扁桃体切除术前后多导睡眠图检查。测量:在夜间睡眠的前3个小时中,计算机算法将非呼吸性呼吸周期分为4个部分,并针对每个计算出的平均EEG功率在delta,θ,α,sigma和beta频率范围内。通过方差分析测试了特定于段的脑电图能力之间的差异。量化与呼吸循环相关的脑电图变化(RCREC)。结果:术前RCREC在delta(P <.0001),theta(P <.001)和sigma(P <.0001)方面具有统计学意义,但在alpha或beta(P> .01)范围内无统计学意义。术后一年,所有范围的RCREC均具有统计学意义(P <.01),但δ,θ和σRCREC降低,而α和βRCREC升高。术前RCREC还通过101次呼吸而被证实,其中没有呼吸暂停或呼吸不足(P <.0001)。信号分析方法中的几个经过测试的变体,包括对整个夜间多导睡眠图的分析,都没有有意义地提高RCREC的重要性。结论:在这个患有SDB的儿童中,脑电图随呼吸周期变化至可量化的程度,在腺扁桃体切除术后发生变化。我们推测RCREC可能反映了简短但数量众多的微唤醒。

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