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Detection of sleep disorders by a modified Matching Pursuit algorithm

机译:通过改进的匹配追踪算法检测睡眠障碍

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Sleep disturbances are, beside headaches, the most frequently articulated problems at general practitioners. Approximately 20% of adults in the western world suffer from sleep disturbances, most commonly sleep apnea (SA), which affects 2-4% of middle-aged adults. Therefore a reliable, ambulant screening test is requested, which is easy to perform and does not necessarily demand profound knowledge of sleep medicine. In this paper a new Matching Pursuit based algorithm is presented, that uses a combination of SpO_2 and photoplethysmographically derived pulse wave information to calculate a respiratory disturbance index (RDI). Furthermore an "autonomic arousal index" (AAI) was constructed to reflect the intensity of pulsatile changes suggestive sudden bursts of sympathetic activity associated with arousal from sleep. A signal decomposition algorithm, based on a dictionary of time-frequency atoms (known as "Matching Pursuit method"), has been modified in order to analyse different patterns in the photoplethysmographic signals. The performance of the algorithm was tested on 62 consecutive adult patients with suspected SA, who were referred to the sleep laboratory. In a second step indices of autonomic arousals were analysed and compared in different patient groups.The correlation coefficient between manual scored AHI and automatically calculated RDI, using only pulse oximetry channels, was r = 0.967. Bland-Altmann analysis showed a mean difference of -0.6 between the two parameters. Using a cut-off value of RDI ≥ 15/h for SA classification, a sensitivity of 96.2% and specificity of 91.7% was reached. The mean AAI differed significantly between healthy individuals and people with moderate number of respiratory events, severe SA patients and insomniacs.This novel computer algorithm provides a simple and highly accurate tool for quantification of SA and provides important information about autonomic activity during sleep. Thus such screening system appears to provide important information for the diagnosis of other diseases like autonomic neuropathy or insomnia.
机译:除了头痛外,睡眠障碍也是全科医生最常出现的问题。在西方世界,大约有20%的成年人患有睡眠障碍,最常见的是睡眠呼吸暂停(SA),这会影响2-4%的中年成年人。因此,需要一种可靠的,可移动的筛查测试,该测试易于执行且不一定需要对睡眠医学有深入的了解。本文提出了一种新的基于匹配追踪的算法,该算法结合了SpO_2和光电容积描记法导出的脉搏波信息来计算呼吸干扰指数(RDI)。此外,构建了“自主唤醒指数”(AAI),以反映搏动性变化的强度,提示与睡眠引起的交感神经活动突然爆发。一种基于时频原子字典的信号分解算法(称为“匹配追踪法”)已经过修改,以便分析光电容积描记器信号中的不同模式。该算法的性能在转诊到睡眠实验室的62名连续的疑似SA的成年患者中进行了测试。第二步,分析并比较了不同患者组的自主神经唤醒指数。 仅使用脉搏血氧饱和度测定通道,手动评分的AHI与自动计算的RDI之间的相关系数为r = 0.967。 Bland-Altmann分析显示两个参数之间的平均差为-0.6。使用RDI≥15 / h的临界值进行SA分类,可达到96.2%的灵敏度和91.7%的特异性。健康个体与中等数量呼吸事件,严重SA患者和失眠者之间的平均AAI差异显着。 这种新颖的计算机算法为SA的定量提供了一个简单且高度准确的工具,并提供了有关睡眠期间自主神经活动的重要信息。因此,这种筛选系统似乎为诊断其他疾病,例如自主神经病或失眠提供了重要信息。

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