Department of Computer Science and Engineering, School of Engineering, Indrashil University, Rajpur, Mehsana, Gujarat, India.
Department of Computer Science, College of Computer Engineering and Sciences, Prince Sattam Bin Abdulaziz University, Alkharj 11942, Saudi Arabia.
Comput Intell Neurosci. 2022 Jul 16;2022:7218113. doi: 10.1155/2022/7218113. eCollection 2022.
Internet of Medical Thing (IoMT) is the most emerging era of the Internet of Thing (IoT), which is exponentially gaining researchers' attention with every passing day because of its wide applicability in Smart Healthcare systems (SHS). Because of the current pandemic situation, it is highly risky for an individual to visit the doctor for every small problem. Hence, using IoMT devices, we can easily monitor our day-to-day health records, and thereby initial precautions can be taken on our own. IoMT is playing a crucial role within the healthcare industry to increase the accuracy, reliability, and productivity of electronic devices. This research work provides an overview of IoMT with emphasis on various enabling techniques used in smart healthcare systems (SHS), such as radio frequency identification (RFID), artificial intelligence (AI), and blockchain. We are providing a comparative analysis of various IoMT architectures proposed by several researchers. Also, we have defined various health domains of IoMT, including the analysis of different sensors with their application environment, merits, and demerits. In addition, we have figured out key protocol design challenges, which are to be considered during the implementation of an IoMT network-based smart healthcare system. Considering these challenges, we prepared a comparative study for different data collection techniques that can be used to maintain the accuracy of collected data. In addition, this research work also provides a comprehensive study for maintaining the energy efficiency of an AI-based IoMT framework based on various parameters, such as the amount of energy consumed, packet delivery ratio, battery lifetime, quality of service, power drain, network throughput, delay, and transmission rate. Finally, we have provided different correlation equations for finding the accuracy and efficiency within the IoMT-based healthcare system using artificial intelligence. We have compared different data collection algorithms graphically based on their accuracy and error rate. Similarly, different energy efficiency algorithms are also graphically compared based on their energy consumption and packet loss percentage. We have analyzed our references used in this study, which are graphically represented based on their distribution of publication year and publication avenue.
物联网医疗(IoMT)是物联网(IoT)的最新发展阶段,由于其在智能医疗系统(SHS)中的广泛适用性,每天都有越来越多的研究人员关注它。由于目前的大流行情况,个人因每一个小问题去看医生都有很高的风险。因此,使用 IoMT 设备,我们可以轻松地监控我们的日常健康记录,从而可以自行采取初步预防措施。IoMT 在医疗保健行业中发挥着至关重要的作用,可提高电子设备的准确性、可靠性和生产力。本研究工作全面概述了 IoMT,重点介绍了智能医疗系统(SHS)中使用的各种使能技术,如射频识别(RFID)、人工智能(AI)和区块链。我们对几位研究人员提出的各种 IoMT 架构进行了比较分析。此外,我们还定义了 IoMT 的各种健康领域,包括不同传感器及其应用环境、优点和缺点的分析。此外,我们还确定了关键协议设计挑战,这些挑战将在基于 IoMT 网络的智能医疗系统的实施过程中加以考虑。考虑到这些挑战,我们针对不同的数据收集技术进行了比较研究,这些技术可用于维持所收集数据的准确性。此外,本研究工作还针对基于人工智能的 IoMT 框架的能量效率维护提供了全面的研究,这是基于各种参数,如消耗的能量、分组投递率、电池寿命、服务质量、功耗、网络吞吐量、延迟和传输速率等。最后,我们提供了使用人工智能在基于 IoMT 的医疗保健系统中找到准确性和效率的不同相关方程。我们根据准确性和误差率对不同的数据收集算法进行了图形比较。同样,我们还根据能量消耗和分组丢失百分比对不同的能量效率算法进行了图形比较。我们对本研究中使用的参考文献进行了分析,这些参考文献是根据其发表年份和发表途径的分布以图形表示的。