Adaptive ECG Leads Selection for Low-Power ECG Monitoring Systems Using Multi-class Classification

Hebatalla Ouda, Hossam S. Hassanein, Khalid Elgazzar
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Abstract

The computer-aided interpretation of ECG signals has become a pivotal tool for physicians in the clinical assessment of cardiovascular diseases during the last decade. Therefore, computerized diagnosis systems depend heavily on machine learning and deep learning models to guarantee high classification accuracy. However, a large amount of power is consumed due to the need for heavy computations to handle the classification tasks which act as a barrier to maintain continuous ECG monitoring. Hence, this work targets energy saving in the constrained embedded environment on a Texas Instruments CC2650 Micro-controller Unit (MCU). We provide a new approach to support energy-efficient ECG monitoring in real-time through the adaptive selection of ECG leads after applying multi-class classification on the raw ECG signals. We deploy two different CNN model scenarios on MIT-BIH and CODE-test datasets, and adjust the number of ECG streamed channels to 1,4, and 8, based on the detected cardiac abnormalities, such as arrhythmias and heart blocks. The adaptive selection of ECG channels achieves 77.7% power saving in the normal cardiac condition and up to 55.5% for the heart blocks, sinus bradycardia, and sinus tachycardia.
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基于多类分类的低功耗心电监测系统自适应导联选择
近十年来,心电信号的计算机辅助解读已成为医生临床评估心血管疾病的关键工具。因此,计算机化诊断系统在很大程度上依赖于机器学习和深度学习模型来保证高分类精度。然而,由于需要大量的计算来处理分类任务,这是维持连续心电监测的障碍,因此消耗了大量的功率。因此,这项工作的目标是在德州仪器CC2650微控制器单元(MCU)的受限嵌入式环境下节能。通过对原始心电信号进行多类分类,自适应选择心电导联,提供了一种支持实时节能心电监测的新方法。我们在MIT-BIH和CODE-test数据集上部署了两种不同的CNN模型场景,并根据检测到的心脏异常(如心律失常和心脏传导阻滞)将ECG流通道的数量调整为1、4和8。心电通道的自适应选择在心脏正常状态下节能77.7%,在心脏传导阻滞、窦性心动过缓、窦性心动过速时节能55.5%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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