The internet of medical things in healthcare management: a review

C. Ejiyi, Zhen Qin, M. B. Ejiyi, G. Nneji, H. Monday, Favour Amarachi Agu, Thomas Ugochukwu Ejiyi, Chidinma N. Diokpo, C. Orakwue
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Abstract

The widespread adoption of Internet of Things (IoT) technologies across various domains has given rise to the Internet of Medical Things (IoMT), which has significantly enhanced the accuracy and capabilities of electronic devices in producing reliable results applicable to the healthcare industry. To leverage the potential of IoMT in healthcare, a series of interconnected events must take place, starting with edge devices collecting data, followed by data aggregation, processing, and informed decision-making based on data analysis. This review article stems from a collaborative and innovative project conducted by participants in the digital economy, organized by the Department of Software Engineering at Tsinghua University in 2021. The project focused on implementing technologies in various fields, with specific teams dedicated to healthcare. During this project, several gaps were identified, and solutions centered around the IoT were proposed. In this comprehensive review, we extensively investigated IoMT services and applications and emphasized how these applications can be optimally implemented to unlock their potentials. Our survey encompassed over 300 research papers, that examined the implementation of IoMT in domains such as Pharmacy Management and Health Insurance Management. Additionally, we analyzed the key enablers and barriers to the successful implementation of IoMT in recent times. To provide a practical perspective, we presented a feasible case study that applied deep learning to IoMT, considering the security concerns associated with its implementation. Furthermore, we identified future research directions and potential areas of improvement based on the gaps identified from the reviewed literatures. By undertaking this review, we aim to contribute to a deeper understanding of IoMT services and applications, shedding light on their optimal utilization within the healthcare industry. Ultimately, our goal is to facilitate advancements in IoMT implementation and to pave the way for enhanced healthcare delivery and improved patient outcomes.
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医疗物联网在医疗管理中的应用综述
物联网(IoT)技术在各个领域的广泛采用催生了医疗物联网(IoMT),它大大提高了电子设备在产生适用于医疗保健行业的可靠结果方面的准确性和能力。为了充分利用IoMT在医疗保健领域的潜力,必须发生一系列相互关联的事件,首先是边缘设备收集数据,然后是数据聚合、处理和基于数据分析的明智决策。这篇综述文章源于清华大学软件工程系于2021年组织的数字经济参与者的协同创新项目。该项目侧重于在各个领域实施技术,有专门的团队致力于医疗保健。在这个项目中,发现了几个差距,并提出了以物联网为中心的解决方案。在这篇全面的综述中,我们广泛调查了IoMT服务和应用,并强调了如何优化实现这些应用以释放其潜力。我们的调查包括300多篇研究论文,这些论文研究了IoMT在药房管理和健康保险管理等领域的实施情况。此外,我们还分析了最近成功实现IoMT的关键促成因素和障碍。为了提供一个实际的视角,我们提出了一个可行的案例研究,将深度学习应用于IoMT,考虑到与其实施相关的安全问题。此外,根据文献综述中发现的差距,我们确定了未来的研究方向和潜在的改进领域。通过进行这一综述,我们的目标是有助于更深入地了解IoMT服务和应用,揭示它们在医疗保健行业中的最佳利用。最终,我们的目标是促进IoMT实施的进步,并为增强医疗保健服务和改善患者预后铺平道路。
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