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A Robust Airflow Envelope Tracking and Digitization Approach for Automatic Detection of Apnea and Hypopnea Events

机译:用于自动检测呼吸暂停和低次内膜事件的强大气流包络跟踪和数字化方法

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Sleep apnea hypopnea syndrome (SAHS) is a common sleep disorder that can significantly decrease the quality of life. Apnea hypopnea index, the number of apnea and hypopnea events per hour of sleep, is defined for the severity of SAHS. An automatic and accurate detection of apnea and hypopnea events can overcome the limitations of manual diagnosis of SAHS. This study explored the design of a novel automated algorithm to detect apnea and hypopnea events. From polysomnography records of the Sleep Heart Health Study, the airflow and pulse oximetry signals of 30 subjects were extracted. According to the updated American Academy of Sleep Medicine scoring manual, apnea and hypopnea events were scored by an experienced sleep physiologist. The peak signal excursion was precisely determined from the airflow envelope. An apnea event was detected by the precise determination of its pre-event baseline. A hypopnea event was detected when both the airflow reduction and oxygen desaturation were satisfied. Accordingly, the automated algorithm detected 5122 events (2215 apneas and 2907 hypopneas), against the manual scoring of 5021 events (2235 apneas and 2786 hypopneas). Strong correlations between scoring and detection of apnea, hypopnea, and combined events were achieved. The overall agreement between the scoring and detection of apnea, hypopnea, and combined events were respectively 99.1%, 95.7%, and 98.0%. This automatic algorithm is applicable to any portable sleep monitoring device for the accurate detection of apnea and hypopnea events.
机译:睡眠呼吸暂停缺氧综合征(SAHS)是一种常见的睡眠障碍,可以显着降低生活质量。呼吸暂停次缺血指数,睡眠睡眠的呼吸暂停和缺氧次数,为SAHS的严重程度定义。对呼吸暂停和次胃癌事件的自动和准确检测可以克服SAHS手动诊断的局限性。本研究探索了一种新型自动化算法的设计来检测呼吸暂停和缺氧事件。从睡眠心脏健康研究的多核桃刻记录,提取30个受试者的气流和脉搏血液血液流量信号。据更新的美国睡眠医学院评分手册,呼吸暂停和缺氧事件由经验丰富的睡眠生理学家评分。峰值信号偏移精确地从气流包络确定。通过精确确定其前列前基线检测到呼吸暂停事件。当满足空气流量减少和氧气停留时,检测到次酮事件。因此,针对5021个事件的手动评分(2235呼吸暂停和2786次低钾,检测到5122个事件(2215呼吸暂停和2907次低步骤)检测到5122个事件(2215呼吸暂停和2907次呼吸缺失)。达到了呼吸暂停,缺氧和组合事件的评分和检测之间的强关系。呼吸暂停,缺氧和组合事件的评分和检测之间的总体协议分别为99.1%,95.7%和98.0%。这种自动算法适用于任何便携式睡眠监测装置,用于准确检测呼吸暂停和低次内膜事件。

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