IEEE Trans Biomed Circuits Syst. 2019 Oct;13(5):1112-1121. doi: 10.1109/TBCAS.2019.2930215. Epub 2019 Jul 22.
Wearable intelligent ECG monitoring devices can perform automatic ECG diagnosis in real time and send out alert signal together with abnormal ECG signal for doctor's further analysis. This provides a means for the patient to identify their heart problem as early as possible and go to doctors for medical treatment. For such system the key requirements include high accuracy and low power consumption. However, the existing wearable intelligent ECG monitoring schemes suffer from high power consumption in both ECG diagnosis and transmission in order to achieve high accuracy. In this work, we have proposed an energy-efficient wearable intelligent ECG monitor scheme with two-stage end-to-end neural network and diagnosis-based adaptive compression. Compared to the state-of-the-art schemes, it significantly reduces the power consumption in ECG diagnosis and transmission while maintaining high accuracy.
可穿戴智能心电图监测设备可以实时进行自动心电图诊断,并在异常心电图信号发出警报信号,以便医生进行进一步分析。这为患者尽早发现心脏问题并去看医生提供了一种手段。对于这样的系统,关键要求包括高精度和低功耗。然而,现有的可穿戴智能心电图监测方案在实现高精度的同时,在心电图诊断和传输方面都存在功耗高的问题。在这项工作中,我们提出了一种具有两级端到端神经网络和基于诊断的自适应压缩的节能型可穿戴智能心电图监测方案。与最先进的方案相比,它在保持高精度的同时,显著降低了心电图诊断和传输的功耗。