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首页> 外文期刊>Biomedical Engineering, IEEE Transactions on >An Invasive and a Noninvasive Approach for the Automatic Differentiation of Obstructive and Central Hypopneas
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An Invasive and a Noninvasive Approach for the Automatic Differentiation of Obstructive and Central Hypopneas

机译:一种自动区分阻塞性和中枢性呼吸不足的有创和无创方法

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The automatic 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. This study presents a new classifier that automatically differentiates obstructive and central hypopneas with the Pes signal and a new approach for an automatic noninvasive classifier with nasal airflow. An overall of 28 patients underwent night polysomnography with Pes recording, and a total of 769 hypopneas were manually scored by human experts to create a gold-standard annotation set. Features were automatically extracted from the Pes signal to train and test the classifiers (discriminant analysis, support vector machines, and adaboost). After a significantly ( $p ) higher incidence of inspiratory flow limitation episodes in obstructive hypopneas was objectively, invasively assessed compared to central hypopneas, the feasibility of an automatic noninvasive classifier with features extracted from the airflow signal was demonstrated. The automatic invasive classifier achieved a mean sensitivity, specificity, and accuracy of 0.90 after a 100-fold cross validation. The automatic noninvasive feasibility study obtained similar hypopnea differentiation results as a manual noninvasive classification algorithm. Hence, both systems seem promising for the automatic differentiation of obstructive and central hypopneas.
机译:阻塞性和中枢性呼吸事件的自动区分是诊断睡眠呼吸障碍的主要挑战。食管压力(Pes)测量是识别这些事件的金标准方法。这项研究提出了一种新的分类器,该分类器可通过Pes信号自动区分阻塞性和中枢性呼吸不足,以及一种自动的无创鼻腔分类器。总共28例患者接受了夜间多导睡眠监测,并进行了Pes记录,人类专家手动对总共769例呼吸不足进行了评分,以创建金标准的注释集。从Pes信号中自动提取特征以训练和测试分类器(判别分析,支持向量机和adaboost)。与中枢性呼吸不足相比,客观地,有创地评估了阻塞性呼吸不足中吸气流量受限发作的显着($ p)发生率之后,证明了从气流信号中提取特征的自动无创分类器的可行性。经过100倍交叉验证后,自动侵入式分类器的平均灵敏度,特异性和准确性达到0.90。自动无创可行性研究获得的低通气分化结果与手动无创分类算法相似。因此,这两种系统对于阻塞性和中枢性呼吸不足的自动区分似乎都是有希望的。

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