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Pulse Rate Variability Analysis to Enhance Oximetry as at-Home Alternative for Sleep Apnea Diagnosing

机译:脉搏率变化分析,以增强血氧仪作为睡眠呼吸暂停诊断的替代品

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This study focuses on the at-home Sleep apnea-hypopnea syndrome (SAHS) severity estimation. Three percent oxygen desaturation index (ODI3) from nocturnal pulse-oximetry has been commonly evaluated as simplified alternative to polysomnography (PSG), the standard in-hospital diagnostic test. However, ODI3 has shown limited ability to detect SAHS as it only sums up information from desaturation events. Other physiological signs of SAHS can be found in respiratory and cardiac signals, providing additional helpful data to establish SAHS and its severity. Pulse rate variability time series (PRV), also derived from nocturnal oximetry, is considered a surrogate for heart rate variability, which provides both cardiac and respiratory information. In this study, 200 oximetric recordings obtained at patients home were involved, divided into training (50%) and test (50%) groups. ODI3 and PRV were obtained from them, the latter being characterized by the extraction of statistical features in time domain, as well as the spectral entropy from the commonly used very low (0-0.04 Hz.), low (0.04-0.15 Hz.), and high (0.15-0.4 Hz.) frequency bands. The ODI3 and PRV features were joined in a multi-layer perceptron artificial neural network (MLP), trained to estimate the apnea-hypopnea index (AHI), which is the PSG-derived parameter used to diagnose SAHS. Our results showed that single ODI3 rightly assigned 62.0% of the subjects from the test group into one out the four SAHS severity degrees, reaching 0.470 Cohens kappa, and 0.840 intra-class correlation coefficient (ICC) with the actual AHI (accuracies of 90.0, 88.0 and 82.0% in the increasing AHI cutoffs used to define SAHS severity). By contrast, our MLP model rightly assigned 75.0% of the subjects into their corresponding SAHS severity level, reaching 0.614 k and 0.904 ICC (accuracies of 93.0, 88.0 and 90.0%). These results suggest that SAHS diagnosis could be accurately conducted at-patients home by combining ODI3 and PRV from nocturnal oximetry
机译:本研究重点介绍了家庭睡眠呼吸暂停症综合征(SAHS)严重程度估算。来自夜间脉搏 - 血氧血管氧化法的三种氧去饱和指数(ODI3)已被评价为多核桃摄影(PSG)的简化替代,标准的诊断测试。但是,ODI3显示了检测SAH的能力有限,因为它仅总结了从废旧事件中的信息。 SAHS的其他生理迹象可以在呼吸系统和心脏信号中找到,提供额外的有用数据来建立SAHS及其严重程度。脉搏率可变性时间序列(PRV)也来自夜间血氧血管率,被认为是心率变异性的替代品,其提供了心脏和呼吸信息。在本研究中,涉及到患者家庭的200个血氧录音,分为培训(50%)和试验(50%)组。从它们中获得ODI3和PRV,后者的特征在于时域中的统计特征的提取,以及来自常用非常低(0-0.04Hz)的光谱熵,低(0.04-0.15 Hz。) ,高(0.15-0.4 Hz。)频段。 ODI3和PRV特征在多层感知人工神经网络(MLP)中加入,训练以估计呼吸暂停缺氧(AHI),这是用于诊断SAHS的PSG衍生参数。我们的研究结果表明,单一的ODI3正确地将62.0%的受试者从测试组中分配到四个SAHS严重程度,达到0.470Cohens Kappa,以及0.840个类内相关系数(ICC),实际AHI(含量为90.0), 88.0和82.0%在越来越多的AHI截止解用于定义SAHS严重程度)。相比之下,我们的MLP模型正确地将75.0%的受试者分配到相应的SAHS严重程度,达到0.614 K和0.904 ICC(93.0,88.0和90.0%的准确度)。这些结果表明,可以通过组合ODI3和PRV从夜间血氧基团来准确地进行SAHS诊断

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