IEEE J Biomed Health Inform. 2021 Aug;25(8):2917-2927. doi: 10.1109/JBHI.2021.3064694. Epub 2021 Aug 5.
The diagnosis of obstructive sleep apnea is based on daytime symptoms and the frequency of respiratory events during the night. The respiratory events are scored manually from polysomnographic recordings, which is time-consuming and expensive. Therefore, automatic scoring methods could considerably improve the efficiency of sleep apnea diagnostics and release the resources currently needed for manual scoring to other areas of sleep medicine. In this study, we trained a long short-term memory neural network for automatic scoring of respiratory events using input signals from peripheral blood oxygen saturation, thermistor-airflow, nasal pressure -airflow, and thorax respiratory effort. The signals were extracted from 887 in-lab polysomnography recordings. 787 patients with suspected sleep apnea were used to train the neural network and 100 patients were used as an independent test set. The epoch-wise agreement between manual and automatic neural network scoring was high (88.9%, κ = 0.728). In addition, the apnea-hypopnea index (AHI) calculated from the automated scoring was close to the manually determined AHI with a mean absolute error of 3.0 events/hour and an intraclass correlation coefficient of 0.985. The neural network approach for automatic scoring of respiratory events achieved high accuracy and good agreement with manual scoring. The presented neural network could be used for analysis of large research datasets that are unfeasible to score manually, and has potential for clinical use in the future In addition, since the neural network scores individual respiratory events, the automatic scoring can be easily reviewed manually if desired.
阻塞性睡眠呼吸暂停的诊断基于日间症状和夜间呼吸事件的频率。呼吸事件是从多导睡眠图记录中手动评分的,这既耗时又昂贵。因此,自动评分方法可以大大提高睡眠呼吸暂停诊断的效率,并将目前用于手动评分的资源释放到睡眠医学的其他领域。在这项研究中,我们使用来自外周血氧饱和度、热敏气流、鼻压气流和胸式呼吸努力的输入信号,训练了一个长短期记忆神经网络,用于自动评分呼吸事件。这些信号是从 887 份实验室多导睡眠图记录中提取出来的。787 名疑似睡眠呼吸暂停的患者被用于训练神经网络,100 名患者被用于独立测试集。手动和自动神经网络评分之间的逐epoch 一致性很高(88.9%,κ=0.728)。此外,从自动评分中计算出的呼吸暂停低通气指数(AHI)与手动确定的 AHI 接近,平均绝对误差为 3.0 次/小时,组内相关系数为 0.985。用于自动评分呼吸事件的神经网络方法具有很高的准确性和与手动评分的良好一致性。所提出的神经网络可用于分析大型研究数据集,这些数据集手动评分不可行,并且具有未来临床应用的潜力。此外,由于神经网络对单个呼吸事件进行评分,如果需要,自动评分可以轻松手动复查。