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Detection of apneic events from single channel nasal airflow using 2nd derivative method.

机译:使用二阶导数法从单通道鼻气流中检测出呼吸暂停事件。

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摘要

Detection of sleep apnea is one of the major tasks in sleep studies. Several methods, analyzing the various features of bio-signals, have been applied for automatic detection of sleep apnea, but it is still required to detect apneic events efficiently and robustly from a single nasal airflow signal under varying situations. This study introduces a new algorithm that analyzes the nasal airflow (NAF) for the detection of obstructive apneic events. It is based on mean magnitude of the second derivatives (MMSD) of NAF, which can detect respiration strength robustly under offset or baseline drift. Normal breathing epochs are extracted automatically by examining the stability of SaO(2) and NAF regularity for each subject. The standard MMSD and period of NAF, which are regarded as the values at the normal respiration level, are determined from the normal breathing epochs. In this study, 24 Polysomnography (PSG) recordings diagnosed as obstructive sleep apnea (OSA) syndrome were analyzed. By analyzing the meanperformance of the algorithm in a training set consisting of three PSG recordings, apnea threshold is determined to be 13% of the normal MMSD of NAF. NAF signal was divided into 1-s segments for analysis. Each segment is compared with the apnea threshold and classified into apnea events if the segment is included in a group of apnea segments and the group satisfies the time limitation. The suggested algorithm was applied to a test set consisting of the other 21 PSG recordings. Performance of the algorithm was evaluated by comparing the results with the sleep specialist's manual scoring on the same record. The overall agreement rate between the two was 92.0% (kappa=0.78). Considering its simplicity and lower computational load, the suggested algorithm is found to be robust and useful. It is expected to assist sleep specialists to read PSG more quickly and will be useful for ambulatory monitoring of apneas using airflow signals.
机译:睡眠呼吸暂停的检测是睡眠研究的主要任务之一。分析生物信号各种特征的几种方法已被用于自动检测睡眠呼吸暂停,但仍需要在变化的情况下从单个鼻气流信号有效而可靠地检测呼吸暂停事件。这项研究引入了一种新算法,该算法可分析鼻气流(NAF)以检测阻塞性呼吸暂停事件。它基于NAF的二阶导数(MMSD)的平均幅度,可以在偏移或基线漂移下稳健地检测呼吸强度。通过检查每个受试者的SaO(2)和NAF规律性的稳定性,自动提取正常的呼吸时期。根据正常呼吸时期确定标准MMSD和NAF周期(被视为正常呼吸水平下的值)。在这项研究中,分析了24例诊断为阻塞性睡眠呼吸暂停(OSA)综合征的多导睡眠监测(PSG)记录。通过在包含三个PSG记录的训练集中分析算法的平均性能,可以将呼吸暂停阈值确定为NAF正常MMSD的13%。将NAF信号分为1-s段进行分析。如果将每个段与呼吸暂停阈值进行比较,并且如果该段包含在一组呼吸暂停段中并且该组满足时间限制,则将其分类为呼吸暂停事件。建议的算法已应用于包含其他21个PSG录音的测试集。通过将结果与睡眠专家在同一记录上的手动评分进行比较,来评估算法的性能。两者之间的总体同意率为92.0%(kappa = 0.78)。考虑到它的简单性和较低的计算量,发现所建议的算法是健壮和有用的。有望帮助睡眠专家更快地阅读PSG,并将对使用气流信号进行的呼吸暂停动态监测有用。

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