Department of Mechanical, Aerospace and Biomedical Engineering, The University of Tennessee, Knoxville, TN 37996, USA.
Sensors (Basel). 2012;12(9):12844-69. doi: 10.3390/s120912844. Epub 2012 Sep 21.
Long term continuous monitoring of electrocardiogram (ECG) in a free living environment provides valuable information for prevention on the heart attack and other high risk diseases. This paper presents the design of a real-time wearable ECG monitoring system with associated cardiac arrhythmia classification algorithms. One of the striking advantages is that ECG analog front-end and on-node digital processing are designed to remove most of the noise and bias. In addition, the wearable sensor node is able to monitor the patient's ECG and motion signal in an unobstructive way. To realize the real-time medical analysis, the ECG is digitalized and transmitted to a smart phone via Bluetooth. On the smart phone, the ECG waveform is visualized and a novel layered hidden Markov model is seamlessly integrated to classify multiple cardiac arrhythmias in real time. Experimental results demonstrate that the clean and reliable ECG waveform can be captured in multiple stressed conditions and the real-time classification on cardiac arrhythmia is competent to other workbenches.
长期在自由生活环境中对心电图(ECG)进行连续监测,可为预防心脏病发作和其他高危疾病提供有价值的信息。本文提出了一种实时可穿戴 ECG 监测系统的设计,并提出了相关的心律失常分类算法。其显著优点之一是,ECG 模拟前端和节点上的数字处理被设计为去除大部分噪声和偏差。此外,可穿戴传感器节点能够以非侵入性的方式监测患者的 ECG 和运动信号。为了实现实时医疗分析,ECG 通过蓝牙数字化并传输到智能手机上。在智能手机上,可视化 ECG 波形,并无缝集成了一种新颖的分层隐马尔可夫模型,以实时分类多种心律失常。实验结果表明,在多种应激条件下可以捕获到清洁可靠的 ECG 波形,并且实时心律失常分类能够胜任其他工作台。