IEEE J Biomed Health Inform. 2022 Nov;26(11):5428-5438. doi: 10.1109/JBHI.2022.3203560. Epub 2022 Nov 10.
This paper proposes a robust method to screen patients with sleep apnea syndrome (SAS) using a single-lead electrocardiogram (ECG). This method consists of minute-by-minute abnormal breathing detection and apnea-hypopnea index (AHI) estimation. Heartbeat interval and ECG-derived respiration (EDR) are calculated using the single-lead ECG and used to train the models, including ResNet18, ResNet34, and ResNet50. The proposed method, using data from 1232 subjects, was developed with two open datasets and experimental data and evaluated using two additional open datasets and data acquired from an abdomen-attached wearable device (in total, data from 189 subjects). ResNet18 showed the best results, having an average Cohen's kappa coefficient of 0.57, in the abnormal breathing detection. Moreover, SAS patient classification, with 15 as the AHI threshold, yielded an average Cohen's kappa coefficient of 0.71. The results of patient classification were biased toward data from the wearable patch-type device, which may be influenced by different ECG waveforms. The proposed method is tuned with a sample of the data from the device, and the performance result of Cohen's kappa increased from 0.54 to 0.91 for SAS patient classification. Our method, proposed in this paper, achieved equivalent performance results with data recorded using an abdomen-attached wearable device and two open datasets used in previous studies, although the method had not used those data during model training. The proposed method could reduce the development costs of commercial software, as it was developed using open datasets, has robust performance throughout all datasets.
本文提出了一种使用单导联心电图筛查睡眠呼吸暂停综合征(SAS)患者的稳健方法。该方法包括分钟级别的异常呼吸检测和呼吸暂停低通气指数(AHI)估计。使用单导联心电图计算心率间隔和心电图衍生呼吸(EDR),并用于训练包括 ResNet18、ResNet34 和 ResNet50 在内的模型。所提出的方法使用来自 1232 名受试者的数据,使用两个公开数据集和实验数据进行开发,并使用另外两个公开数据集和来自腹部附着式可穿戴设备的数据进行评估(总共来自 189 名受试者的数据)进行评估。ResNet18 在异常呼吸检测中的表现最佳,平均 Cohen's kappa 系数为 0.57。此外,将 AHI 阈值设置为 15 时,SAS 患者分类的平均 Cohen's kappa 系数为 0.71。患者分类的结果偏向于来自可穿戴式贴片设备的数据,这可能受到不同 ECG 波形的影响。所提出的方法使用该设备的数据样本进行调整,对于 SAS 患者分类,Cohen's kappa 的性能结果从 0.54 增加到 0.91。虽然该方法在模型训练过程中未使用这些数据,但我们在本文中提出的方法使用来自腹部附着式可穿戴设备的数据和以前研究中使用的两个公开数据集,实现了等效的性能结果。所提出的方法可以降低商业软件的开发成本,因为它是使用开放数据集开发的,在所有数据集上都具有稳健的性能。