Department of Biomedical Informatics, Emory University, Atlanta, GA, United States of America.
Department of Electrical and Computer Engineering, Georgia Institute of Technology, Atlanta, GA, United States of America.
Physiol Meas. 2021 May 13;42(4). doi: 10.1088/1361-6579/abf1b0.
To develop a sleep staging method from wrist-worn accelerometry and the photoplethysmogram (PPG) by leveraging transfer learning from a large electrocardiogram (ECG) database.In previous work, we developed a deep convolutional neural network for sleep staging from ECG using the cross-spectrogram of ECG-derived respiration and instantaneous beat intervals, heart rate variability metrics, spectral characteristics, and signal quality measures derived from 5793 subjects in Sleep Heart Health Study (SHHS). We updated the weights of this model by transfer learning using PPG data derived from the Empatica E4 wristwatch worn by 105 subjects in the 'Emory Twin Study Follow-up' (ETSF) database, for whom overnight polysomnographic (PSG) scoring was available. The relative performance of PPG, and actigraphy (Act), plus combinations of these two signals, with and without transfer learning was assessed.The performance of our model with transfer learning showed higher accuracy (1-9 percentage points) and Cohen's Kappa (0.01-0.13) than those without transfer learning for every classification category. Statistically significant, though relatively small, incremental differences in accuracy occurred for every classification category as tested with the McNemar test. The out-of-sample classification performance using features from PPG and actigraphy for four-class classification was Accuracy (Acc) = 68.62% and Kappa = 0.44. For two-class classification, the performance was Acc = 81.49% and Kappa = 0.58.We proposed a combined PPG and actigraphy-based sleep stage classification approach using transfer learning from a large ECG sleep database. Results demonstrate that the transfer learning approach improves estimates of sleep state. The use of automated beat detectors and quality metrics means human over-reading is not required, and the approach can be scaled for large cross-sectional or longitudinal studies using wrist-worn devices for sleep staging.
利用从大型心电图 (ECG) 数据库中进行迁移学习,开发一种从腕戴式加速度计和光电容积脉搏波 (PPG) 中提取睡眠分期的方法。在之前的工作中,我们开发了一种基于深度卷积神经网络的 ECG 睡眠分期方法,该方法使用源自 ECG 的呼吸和瞬时心跳间隔的互功率谱、心率变异性指标、源自 5793 名睡眠心脏健康研究 (SHHS) 参与者的频谱特征和信号质量测量值。我们通过使用源自 105 名参加“埃默里双胞胎研究随访” (ETSF) 数据库的 Empatica E4 腕戴式设备的 PPG 数据进行迁移学习来更新该模型的权重,对于这些参与者,可获得整夜多导睡眠图 (PSG) 评分。评估了 PPG 和动作 (Act) 的相对性能,以及这两种信号的组合,以及有无迁移学习。具有迁移学习的模型的性能表现出更高的准确性(1-9 个百分点)和科恩氏 Kappa(0.01-0.13),而没有迁移学习的模型则没有。通过 McNemar 检验测试,每个分类类别都存在统计学上显著但相对较小的准确性增量差异。使用 PPG 和动作记录器的特征进行四类分类的样本外分类性能为准确性 (Acc) = 68.62%和 Kappa = 0.44。对于两类分类,性能为 Acc = 81.49%和 Kappa = 0.58。我们提出了一种基于 PPG 和动作记录器的睡眠阶段分类方法,该方法使用从大型 ECG 睡眠数据库中进行迁移学习。结果表明,迁移学习方法可提高睡眠状态的估计。使用自动心跳检测器和质量指标意味着不需要人工重读,并且该方法可以通过使用腕戴式设备进行大横截面或纵向研究来进行扩展,以进行睡眠分期。