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All night analysis of time interval between snores in subjects with sleep apnea hypopnea syndrome

机译:睡眠呼吸暂停低通气综合征患者打sn之间的时间间隔的整夜分析

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摘要

Sleep apnea–hypopnea syndrome (SAHS) is a serious sleep disorder, and snoring is one of its earliest and most consistent symptoms. We propose a new methodology for identifying two distinct types of snores: the so-called non-regular and regular snores. Respiratory sound signals from 34 subjects with different ranges of Apnea-Hypopnea Index (AHI = 3.7–109.9 h−1) were acquired. A total number of 74,439 snores were examined. The time interval between regular snores in short segments of the all night recordings was analyzed. Severe SAHS subjects show a shorter time interval between regular snores (p = 0.0036, AHI cp: 30 h−1) and less dispersion on the time interval features during all sleep. Conversely, lower intra-segment variability (p = 0.006, AHI cp: 30 h−1) is seen for less severe SAHS subjects. Features derived from the analysis of time interval between regular snores achieved classification accuracies of 88.2 % (with 90 % sensitivity, 75 % specificity) and 94.1 % (with 94.4 % sensitivity, 93.8 % specificity) for AHI cut-points of severity of 5 and 30 h−1, respectively. The features proved to be reliable predictors of the subjects’ SAHS severity. Our proposed method, the analysis of time interval between snores, provides promising results and puts forward a valuable aid for the early screening of subjects suspected of having SAHS.
机译:睡眠呼吸暂停低通气综合症(SAHS)是一种严重的睡眠障碍,打is是其最早且最一致的症状之一。我们提出了一种新的方法来识别两种不同类型的打sn:所谓的非常规打regular和常规打sn。采集了来自34名呼吸暂停低通气指数范围不同(AHI = 3.7-109.9 h -1 )的受试者的呼吸声信号。总共检查了74,439次打sn。分析了整夜录音中短段规律打sn之间的时间间隔。严重的SAHS受试者在定期打sn之间的时间间隔较短(p = 0.0036,AHI cp:30h -1 ),并且在所有睡眠期间对时间间隔特征的分散较小。相反,对于较不严重的SAHS受试者,其段内变异性较低(p = 0.006,AHI cp:30 h -1 )。通过分析定期打ore之间的时间间隔得出的特征,对于AHI严重程度为5和5的临界值,分类准确度分别为88.2%(敏感性为90%,特异性为75%)和94.1%(敏感性为94.4%,特异性为93.8%)。 30小时 -1 。这些功能被证明可以可靠地预测受试者的SAHS严重程度。我们提出的方法,打sn之间的时间间隔的分析,提供了可喜的结果,并为早期筛查怀疑患有SAHS的受试者提供了宝贵的帮助。

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