A Framework for Real-time Remote ECG Monitoring and Diagnoses

Ahmed Badr, Khalid Elgazzar
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Abstract

Enabled by the fast development of Internet of Things (IoT) technologies in recent years, the healthcare domain has witnessed significant advancements in wearable devices that seamlessly collect vital medical information. With the availability of IoT devices serving the healthcare domain, extraordinary amounts of sensory data are generated in real-time, requiring immediate diagnoses and attention in critical medical conditions. The provision of remote patient monitoring (RPM) and analytics infrastructure proved to be fundamental components of the healthcare domain during the Coronavirus pandemic. Traditional healthcare services are digitized and offered virtually, where patients are monitored and managed remotely without the need to go to hospitals. This paper presents a comprehensive RPM framework for real-time telehealth operations with scalable data monitoring, real-time analytics and decision-making, fine-grained data access and robust notification mechanisms in emergencies and critical health conditions. We focus on the overall framework architecture, enabling technologies integration, various system-level integrations and deployment options. Furthermore, we provide a use case application for patients with chronic heart conditions for real-time electrocardiogram (ECG) monitoring. We are releasing the framework as open-source software to the active research community.
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一种实时远程心电监测与诊断框架
近年来,在物联网(IoT)技术快速发展的推动下,医疗保健领域见证了可穿戴设备的重大进步,这些设备可以无缝地收集重要的医疗信息。随着服务于医疗保健领域的物联网设备的可用性,实时生成了大量的传感数据,需要在危急的医疗条件下立即诊断和关注。在冠状病毒大流行期间,提供远程患者监测(RPM)和分析基础设施被证明是医疗保健领域的基本组成部分。传统的医疗保健服务被数字化并以虚拟方式提供,患者无需去医院就可以远程监控和管理。本文提出了一个全面的实时远程医疗操作RPM框架,具有可扩展的数据监测、实时分析和决策、细粒度数据访问和紧急情况和关键健康状况下的强大通知机制。我们专注于整体框架架构,支持技术集成、各种系统级集成和部署选项。此外,我们还为慢性心脏病患者提供了实时心电图监测的用例应用程序。我们将这个框架作为开源软件发布给活跃的研究社区。
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