首页> 外文会议>32nd Annual International Conference of the IEEE Engineering in Medicine and Biology Society >Automatic non-invasive differentiation of obstructive and central hypopneas with nasal airflow compared to esophageal pressure
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Automatic non-invasive differentiation of obstructive and central hypopneas with nasal airflow compared to esophageal pressure

机译:与食管压力相比,通过鼻气流自动阻塞性和中枢性呼吸不足的非侵入性鉴别

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The differentiation of obstructive and central respiratory events is a major challenge in the diagnosis of sleep disordered breathing. Esophageal pressure (Pes) measurement is the gold-standard method to identify these events but its invasiveness deters its usage in clinical routine. Flattening patterns appear in the airflow signal during episodes of inspiratory flow limitation (IFL) and have been shown with invasive techniques to be useful to differentiate between central and obstructive hypopneas. In this study we present a new method for the automatic non-invasive differentiation of obstructive and central hypopneas solely with nasal airflow. An overall of 36 patients underwent full night polysomnography with systematic Pes recording and a total of 1069 hypopneas were manually scored by human experts to create a gold-standard annotation set. Features were automatically extracted from the nasal airflow signal to train and test our automatic classifier (Discriminant Analysis). Flattening patterns were non-invasively assessed in the airflow signal using spectral and time analysis. The automatic non-invasive classifier obtained a sensitivity of 0.71 and an accuracy of 0.69, similar to the results obtained with a manual non-invasive classification algorithm. Hence, flattening airflow patterns seem promising for the non-invasive differentiation of obstructive and central hypopneas.
机译:阻塞性和中央呼吸事件的区分是诊断睡眠呼吸障碍的主要挑战。食管压力(Pes)测量是识别这些事件的金标准方法,但其侵袭性阻碍了其在临床常规中的使用。在吸气流量受限(IFL)的发作期间,气流信号中出现扁平化模式,并已通过侵入性技术显示出扁平化模式可用于区分中枢性和阻塞性呼吸不足。在这项研究中,我们提出了一种仅通过鼻气流自动进行非侵入性阻塞性和中央性呼吸不足的新方法。总共36例患者接受了整夜的多导睡眠监测,并进行了系统的Pes记录,人类专家手动对总共1069例呼吸不足进行了评分,以创建金标准的注释集。从鼻气流信号中自动提取特征,以训练和测试我们的自动分类器(判别分析)。使用频谱和时间分析在气流信号中以非侵入性方式评估展平模式。自动非侵入式分类器获得的灵敏度为0.71,准确度为0.69,类似于使用手动非侵入式分类算法获得的结果。因此,扁平的气流模式对于阻塞性和中央性呼吸不足的非侵入性分化似乎很有希望。

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