Research Division, Renal Research Institute, New York, NY, USA.
Icahn School of Medicine at Mount Sinai Health System, New York, NY, USA.
Sci Rep. 2022 Sep 26;12(1):16023. doi: 10.1038/s41598-022-20493-0.
In patients with kidney failure treated by hemodialysis, intradialytic arterial oxygen saturation (SaO) time series present intermittent high-frequency high-amplitude oximetry patterns (IHHOP), which correlate with observed sleep-associated breathing disturbances. A new method for identifying such intermittent patterns is proposed. The method is based on the analysis of recurrence in the time series through the quantification of an optimal recurrence threshold ([Formula: see text]). New time series for the value of [Formula: see text] were constructed using a rolling window scheme, which allowed for real-time identification of the occurrence of IHHOPs. The results for the optimal recurrence threshold were confronted with standard metrics used in studies of obstructive sleep apnea, namely the oxygen desaturation index (ODI) and oxygen desaturation density (ODD). A high correlation between [Formula: see text] and the ODD was observed. Using the value of the ODI as a surrogate to the apnea-hypopnea index (AHI), it was shown that the value of [Formula: see text] distinguishes occurrences of sleep apnea with great accuracy. When subjected to binary classifiers, this newly proposed metric has great power for predicting the occurrences of sleep apnea-related events, as can be seen by the larger than 0.90 AUC observed in the ROC curve. Therefore, the optimal threshold [Formula: see text] from recurrence analysis can be used as a metric to quantify the occurrence of abnormal behaviors in the arterial oxygen saturation time series.
在接受血液透析治疗的肾衰竭患者中,透析内动脉血氧饱和度 (SaO) 时间序列呈现间歇性高频高振幅血氧仪模式 (IHHOP),与观察到的睡眠相关呼吸障碍相关。提出了一种识别此类间歇性模式的新方法。该方法基于通过量化最佳重复阈值 ([Formula: see text]) 来分析时间序列中的重复。使用滚动窗口方案为 [Formula: see text] 的新时间序列构建了新时间序列,这允许实时识别 IHHOP 的发生。最佳重复阈值的结果与阻塞性睡眠呼吸暂停研究中使用的标准指标进行了对比,即氧减指数 (ODI) 和氧减密度 (ODD)。观察到 [Formula: see text] 与 ODD 之间存在高度相关性。使用 ODI 值作为呼吸暂停低通气指数 (AHI) 的替代值,表明 [Formula: see text] 值能够非常准确地区分睡眠呼吸暂停的发生。当使用二进制分类器时,该新提出的指标具有很大的预测睡眠呼吸相关事件发生的能力,这可以从 ROC 曲线中观察到的大于 0.90 的 AUC 看出。因此,从递归分析中得出的最佳阈值 [Formula: see text] 可用于量化动脉血氧饱和度时间序列中异常行为的发生。