边缘计算助力智能医疗:利用深度学习方法进行监测和诊断

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC ACS Applied Electronic Materials Pub Date : 2024-02-21 DOI:10.1007/s10723-023-09726-2
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引用次数: 0

摘要

摘要 如今,切换前的数据同步和迁移是云架构面临的两个最紧迫的问题。由于云计算存在安全问题,对集中管理的物联网基础设施的要求限制了其可扩展性。最根本的因素是,健康监测等健康系统需要对大量数据进行计算操作,这导致在这些系统中出现设备延迟的敏感性。雾计算是一种提高云计算效率的新方法,它允许使用必要的资源并接近终端用户。现有的雾计算方法仍存在一些缺点,包括倾向于高估反应时间或考虑结果的正确性,但同时管理这两种情况会影响系统的兼容性。为了专注于深度学习算法和自动监控,FETCH 是一个连接边缘计算设备的拟议框架。它为现实生活中的医疗保健系统(如治疗心脏病和其他疾病的系统)提供了一个建设性框架。建议的雾化云计算系统使用 FogBus,它在功耗、通信带宽、振荡、延迟、执行持续时间和正确性方面都有优势。
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Edge Computing Empowered Smart Healthcare: Monitoring and Diagnosis with Deep Learning Methods

Abstract

Nowadays, data syncing before switchover and migration are two of the most pressing issues confronting cloud-based architecture. The requirement for a centrally managed IoT-based infrastructure has limited scalability due to security problems with cloud computing. The fundamental factor is that health systems, such as health monitoring, etc., demand computational operations on large amounts of data, which leads to the sensitivity of device latency emerging during these systems. Fog computing is a novel approach to increasing the effectiveness of cloud computing by allowing the use of necessary resources and close to end users. Existing fog computing approaches still have several drawbacks, including the tendency to either overestimate reaction time or consider result correctness, but managing both at once compromises system compatibility. To focus on deep learning algorithms and automated monitoring, FETCH is a proposed framework that connects with edge computing devices. It provides a constructive framework for real-life healthcare systems, such as those treating heart disease and other conditions. The suggested fog-enabled cloud computing system uses FogBus, which exhibits benefits in terms of power consumption, communication bandwidth, oscillation, delay, execution duration, and correctness.

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来源期刊
CiteScore
7.20
自引率
4.30%
发文量
567
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