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Automated Scoring of Obstructive Sleep Apnea and Hypopnea Events Using Short-Term Electrocardiogram Recordings

机译:使用短期心电图记录自动计入阻塞性睡眠呼吸暂停和呼吸不足事件

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摘要

Obstructive sleep apnea or hypopnea causes a pause or reduction in airflow with continuous breathing effort. The aim of this study is to identify individual apnea and hypopnea events from normal breathing events using wavelet-based features of 5-s ECG signals (sampling rate $=$ 250 Hz) and estimate the surrogate apnea index (AI)/hypopnea index (HI) (AHI). Total 82 535 ECG epochs (each of 5-s duration) from normal breathing during sleep, 1638 ECG epochs from 689 hypopnea events, and 3151 ECG epochs from 1862 apnea events were collected from 17 patients in the training set. Two-staged feedforward neural network model was trained using features from ECG signals with leave-one-patient-out cross-validation technique. At the first stage of classification, events (apnea and hypopnea) were classified from normal breathing events, and at the second stage, hypopneas were identified from apnea. Independent test was performed on 16 subjects’ ECGs containing 483 hypopnea and 1352 apnea events. The cross-validation and independent test accuracies of apnea and hypopnea detection were found to be 94.84% and 76.82%, respectively, for training set, and 94.72% and 79.77%, respectively, for test set. The Bland–Altman plots showed unbiased estimations with standard deviations of $pm$ 2.19, $pm$ 2.16, and $pm$ 3.64 events/h for AI, HI, and AHI, respectively. Results indicate the possibility of recognizing apnea/hypopnea events based on shorter segments of ECG signals.
机译:阻塞性睡眠呼吸暂停或呼吸不足会导致呼吸暂停或呼吸持续减少。这项研究的目的是使用基于小波的5-s心电图信号(采样率$ = $ 250 Hz)从正常呼吸事件中识别出个别的呼吸暂停和呼吸不足事件,并评估替代呼吸暂停指数(AI)/呼吸不足指数( HI)(AHI)。从训练集中的17位患者中收集了睡眠期间正常呼吸的总共82到535个ECG时期(每个持续5 s),689个呼吸不足事件的1638个ECG时期和1862个呼吸暂停事件的3151个ECG时期。使用ECG信号的特征和留一病假交叉验证技术训练了两阶段前馈神经网络模型。在分类的第一阶段,从正常呼吸事件中分类事件(呼吸暂停和呼吸不足),在第二阶段,从呼吸暂停中识别出呼吸不足。对16名受试者的心电图进行了独立测试,其中包括483次呼吸不足和1352次呼吸暂停事件。对于训练组,呼吸暂停和呼吸不足检测的交叉验证和独立测试准确度分别为94.84%和76.82%,对于测试组,分别为94.72%和79.77%。 Bland-Altman图显示了AI,HI和AHI的无偏估计,标准差分别为$ pm $ 2.19,$ pm $ 2.16和$ pm $ 3.64个事件/ h。结果表明,根据心电图信号的较短片段识别呼吸暂停/呼吸不足事件的可能性。

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