Horizons in Single-Lead ECG Analysis From Devices to Data

IF 1.3 Q3 ENGINEERING, ELECTRICAL & ELECTRONIC
A. Abdou, S. Krishnan
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引用次数: 3

Abstract

Single-lead wearable electrocardiographic (ECG) devices for remote monitoring are emerging as critical components of the viability of long-term continuous health and wellness monitoring applications. These sensors make it simple to monitor chronically ill patients and the elderly in long-term care homes, as well as empower users focused on fitness and wellbeing with timely health and lifestyle information and metrics. This article addresses the future developments in single-lead electrocardiogram (ECG) wearables, their design concepts, signal processing, machine learning (ML), and emerging healthcare applications. A literature review of multiple wearable ECG remote monitoring devices is first performed; Apple Watch, Kardia, Zio, BioHarness, Bittium Faros and Carnation Ambulatory Monitor. Zio showed the longest wear time with patients wearing the patch for 14 days maximum but required users to mail the device to a processing center for analysis. While the Apple Watch and Kardia showed good quality acquisition of raw ECG but are not continuous monitoring devices. The design considerations for single-lead ECG wearable devices could be classified as follows: power needs, computational complexity, signal quality, and human factors. These dimensions shadow hardware and software characteristics of ECG wearables and can act as a checklist for future single-lead ECG wearable designs. Trends in ECG de-noising, signal processing, feature extraction, compressive sensing (CS), and remote monitoring applications are later followed to show the emerging opportunities and recent innovations in single-lead ECG wearables.
从设备到数据的单导联心电图分析
用于远程监测的单导联可穿戴心电图(ECG)设备正在成为长期连续健康监测应用可行性的关键组成部分。这些传感器可以很容易地监测长期护理院里的慢性病患者和老年人,并为关注健身和福祉的用户提供及时的健康和生活方式信息和指标。本文讨论了单导联心电图(ECG)可穿戴设备的未来发展、它们的设计概念、信号处理、机器学习(ML)和新兴医疗保健应用。首先对多种可穿戴式心电远程监护设备进行了文献综述;采购产品Apple Watch, Kardia, Zio, BioHarness, Bittium Faros和康乃馨动态监视器。Zio显示,患者佩戴贴片的最长时间为14天,但需要用户将设备邮寄到处理中心进行分析。而Apple Watch和Kardia对原始心电图的采集质量较好,但不是连续监测设备。单导联心电可穿戴设备的设计考虑因素可分为以下几个方面:功率需求、计算复杂度、信号质量和人为因素。这些尺寸反映了ECG可穿戴设备的硬件和软件特征,可以作为未来单导联ECG可穿戴设计的检查表。随后介绍了心电降噪、信号处理、特征提取、压缩感知(CS)和远程监测应用的趋势,以展示单导联心电可穿戴设备的新兴机会和最新创新。
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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