Department of Computer Science and Engineering, American University of Sharjah, Sharjah P.O. Box 26666, United Arab Emirates.
Sensors (Basel). 2021 Oct 30;21(21):7233. doi: 10.3390/s21217233.
Atrial fibrillation (AF) is a type of cardiac arrhythmia affecting millions of people every year. This disease increases the likelihood of strokes, heart failure, and even death. While dedicated medical-grade electrocardiogram (ECG) devices can enable gold-standard analysis, these devices are expensive and require clinical settings. Recent advances in the capabilities of general-purpose smartphones and wearable technology equipped with photoplethysmography (PPG) sensors increase diagnostic accessibility for most populations. This work aims to develop a single model that can generalize AF classification across the modalities of ECG and PPG with a unified knowledge representation. This is enabled by approximating the transformation of signals obtained from low-cost wearable PPG sensors in terms of Pulse Rate Variability (PRV) to temporal Heart Rate Variability (HRV) features extracted from medical-grade ECG. This paper proposes a one-dimensional deep convolutional neural network that uses HRV-derived features for classifying 30-s heart rhythms as normal sinus rhythm or atrial fibrillation from both ECG and PPG-based sensors. The model is trained with three MIT-BIH ECG databases and is assessed on a dataset of unseen PPG signals acquired from wrist-worn wearable devices through transfer learning. The model achieved the aggregate binary classification performance measures of accuracy: 95.50%, sensitivity: 94.50%, and specificity: 96.00% across a five-fold cross-validation strategy on the ECG datasets. It also achieved 95.10% accuracy, 94.60% sensitivity, 95.20% specificity on an unseen PPG dataset. The results show considerable promise towards seamless adaptation of gold-standard ECG trained models for non-ambulatory AF detection with consumer wearable devices through HRV-based knowledge transfer.
心房颤动(AF)是一种影响每年数百万人的心律失常。这种疾病增加了中风、心力衰竭甚至死亡的可能性。虽然专门的医疗级心电图(ECG)设备可以进行黄金标准分析,但这些设备昂贵且需要临床环境。通用智能手机和配备光电容积脉搏波(PPG)传感器的可穿戴技术的功能最近取得了进展,这增加了大多数人群的诊断可及性。本工作旨在开发一种单一模型,该模型可以通过统一的知识表示来概括 ECG 和 PPG 模态中的 AF 分类。这是通过根据脉冲率变异性(PRV)来近似从低成本可穿戴 PPG 传感器获得的信号的变换来实现的,该变换被转换为从医疗级 ECG 提取的时间心率变异性(HRV)特征。本文提出了一种一维深度卷积神经网络,该网络使用 HRV 衍生特征来对来自 ECG 和 PPG 传感器的 30 秒心脏节律进行分类,将其分类为正常窦性节律或心房颤动。该模型使用三个 MIT-BIH ECG 数据库进行训练,并通过迁移学习在从腕戴式可穿戴设备采集的未见过的 PPG 信号数据集上进行评估。该模型在 ECG 数据集的五重交叉验证策略上实现了综合二进制分类性能指标的准确性:95.50%,敏感性:94.50%和特异性:96.00%。它在未见过的 PPG 数据集上也达到了 95.10%的准确性,94.60%的敏感性和 95.20%的特异性。结果表明,通过基于 HRV 的知识转移,通过消费者可穿戴设备对非卧床 AF 进行检测,对黄金标准 ECG 训练模型进行无缝适配具有相当大的前景。