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Respiratory Mandibular Movement Signals Reliably Identify Obstructive Hypopnea Events During Sleep

机译:呼吸下颌运动信号可可靠地识别睡眠中的阻塞性呼吸不足事件

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摘要

>Context: Accurate discrimination between obstructive and central hypopneas requires quantitative assessments of respiratory effort by esophageal pressure (OeP) measurements, which preclude widespread implementation in sleep medicine practice. Mandibular Movement (MM) signals are closely associated with diaphragmatic effort during sleep.>Objective: We aimed at reliably detecting obstructive off central hypopneas events using MM statistical characteristics.>Methods: A bio-signal learning approach was implemented whereby raw MM fragments corresponding to normal breathing (NPB; n = 501), central (n = 263), and obstructive hypopneas (n = 1861) were collected from 28 consecutive patients (mean age = 54 years, mean AHI = 34.7 n/h) undergoing in-lab polysomnography (PSG) coupled with a MM magnetometer, and OeP recordings. Twenty three input features were extracted from raw data fragments to explore distinctive changes in MM signals. A Random Forest model was built upon those input features to classify the central and obstructive hypopnea events. External validation and interpretive analysis were performed to evaluate the model's performance and the contribution of each feature to the model's output.>Results: Obstructive hypopneas were characterized by a longer duration (21.9 vs. 17.8 s, p < 10−6), more extreme low values (p < 10−6), a more negative trend reflecting mouth opening amplitude, wider variation, and the asymmetrical distribution of MM amplitude. External validation showed a reliable performance of the MM features-based classification rule (Kappa coefficient = 0.879 and a balanced accuracy of 0.872). The interpretive analysis revealed that event duration, lower percentiles, central tendency, and the trend of MM amplitude were the most important determinants of events.>Conclusions: MM signals can be used as surrogate markers of OeP to differentiate obstructive from central hypopneas during sleep.
机译:>背景:要正确区分阻塞性和中枢性呼吸不足,需要通过食道压力(OeP)测量对呼吸作用进行定量评估,这无法在睡眠医学实践中广泛采用。下颌运动(MM)信号与睡眠期间diaphragm肌努力密切相关。>目的:我们旨在利用MM统计特征可靠地检测阻塞性中枢性呼吸不足事件。>方法:信号学习法的实施,从连续28例患者(平均年龄= 54岁)中收集了对应于正常呼吸(NPB; n = 501),中枢(n = 263)和阻塞性呼吸不足(n = 1861)的原始MM碎片平均AHI = 34.7 n / h)进行实验室内多导睡眠图(PSG)并结合MM磁力计和OeP记录。从原始数据片段中提取了23个输入特征,以探索MM信号的显着变化。在这些输入特征的基础上建立了随机森林模型,以对中枢性和阻塞性呼吸不足事件进行分类。进行了外部验证和解释性分析,以评估模型的性能以及每个功能对模型输出的贡献。>结果:阻塞性呼吸不足的特点是持续时间较长(21.9 vs. 17.8 s,p <10 -6 ),更极端的低值(p <10 -6 ),更负的趋势,反映了张开幅度,较宽的变化以及MM幅度的不对称分布。外部验证显示了基于MM特征的分类规则的可靠性能(Kappa系数= 0.879,平衡精度为0.872)。解释性分析表明,事件持续时间,较低的百分位数,中心趋势和MM振幅趋势是事件的最重要决定因素。>结论: MM信号可用作OeP的替代标志物,以区分阻塞性事件来自睡眠中的中央呼吸不足。

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