Department of Computer Engineering, Jeju National University, Jeju 63243, Korea.
Department of IT Convergence Engineering, Gachon University, Seongnam 13120, Korea.
Sensors (Basel). 2021 Aug 11;21(16):5430. doi: 10.3390/s21165430.
Over the past years, numerous Internet of Things (IoT)-based healthcare systems have been developed to monitor patient health conditions, but these traditional systems do not adapt to constraints imposed by revolutionized IoT technology. IoT-based healthcare systems are considered mission-critical applications whose missing deadlines cause critical situations. For example, in patients with chronic diseases or other fatal diseases, a missed task could lead to fatalities. This study presents a smart patient health monitoring system (PHMS) based on an optimized scheduling mechanism using IoT-tasks orchestration architecture to monitor vital signs data of remote patients. The proposed smart PHMS consists of two core modules: a healthcare task scheduling based on optimization and optimization of healthcare services using a real-time IoT-based task orchestration architecture. First, an optimized time-constraint-aware scheduling mechanism using a real-time IoT-based task orchestration architecture is developed to generate autonomous healthcare tasks and effectively handle the deployment of emergent healthcare tasks. Second, an optimization module is developed to optimize the services of the e-Health industry based on objective functions. Furthermore, our study uses Libelium e-Health toolkit to monitors the physiological data of remote patients continuously. The experimental results reveal that an optimized scheduling mechanism reduces the tasks starvation by 14% and tasks failure by 17% compared to a conventional fair emergency first (FEF) scheduling mechanism. The performance analysis results demonstrate the effectiveness of the proposed system, and it suggests that the proposed solution can be an effective and sustainable solution towards monitoring patient's vital signs data in the IoT-based e-Health domain.
在过去的几年中,已经开发出了许多基于物联网(IoT)的医疗保健系统来监测患者的健康状况,但是这些传统系统无法适应物联网技术的变革所带来的限制。基于物联网的医疗保健系统被认为是关键任务应用程序,如果错过截止日期,将会导致严重的情况。例如,在患有慢性病或其他致命疾病的患者中,错过任务可能会导致死亡。本研究提出了一种基于物联网任务协调架构的优化调度机制的智能患者健康监测系统(PHMS),用于监测远程患者的生命体征数据。所提出的智能 PHMS 由两个核心模块组成:基于优化的医疗保健任务调度和使用实时基于物联网的任务协调架构优化医疗服务。首先,开发了一种使用实时基于物联网的任务协调架构的优化的具有时间约束意识的调度机制,以生成自主医疗保健任务并有效地处理紧急医疗保健任务的部署。其次,开发了一个优化模块,以基于目标函数优化电子医疗行业的服务。此外,我们的研究使用 Libelium 电子医疗工具包来连续监测远程患者的生理数据。实验结果表明,与传统的公平紧急优先(FEF)调度机制相比,优化的调度机制可将任务饥饿减少 14%,任务失败减少 17%。性能分析结果证明了所提出系统的有效性,表明该解决方案可以成为基于物联网的电子医疗领域中监测患者生命体征数据的有效且可持续的解决方案。