深度学习在物联网医疗大数据分析中的应用及未来展望

Tasnova Tabassum Chhowa, Md. Asadur Rahman, A. Paul, Rasel Ahmmed
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引用次数: 11

摘要

将健康参数分析和基于物联网的健康监测系统与大数据处理能力相结合,成为一个极具挑战性的研究领域。本文提出了一个想法,描述了通过深度学习算法协同基于物联网的医疗大数据监测和分析健康状况的可能方法。目前该领域的研究趋势往往是采用传统的基于机器学习的算法,这些算法由于人工特征提取和精度不高而不适合基于物联网的大医疗数据。相反,本文广泛回顾了深度机器学习方法中关于大数据处理的不同研究工作,以及他们对健康监测、基于物联网系统的适用性、大数据分析的准确性和适用性的建议。最后,本文将重点研究基于深度学习的物联网健康监测工具系统,并为物联网架构领域的不同远程医生提供相关结果,以确保对危重患者有适当的了解。这是一种在平台上同步它们的方法,对于即将到来的研究人员来说,这可能是一种潜在的解决方案,可以实现具有大数据访问能力的可持续在线健康监测系统。此外,这项研究将有效地为医学专家,以确保适当的医疗设施,以广大人民群众在未来。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Narrative Analysis on Deep Learning in IoT based Medical Big Data Analysis with Future Perspectives
The analysis of health-specific parameters and IoT based health monitoring system become a very challenging research scope to merge them with big data handling capability. This paper proposes an idea describing the possible ways to monitor and analyze health conditions collaborating IoT based medical big data through deep learning algorithm. The recent research trend regarding the concerning field often utilizes the conventional machine learning based algorithms those are not suitable for IoT based big medical data because of their manual feature extraction and less accuracy. On this contrary, this paper widely reviews the different research works regarding the big data handling in deep machine learning approaches and their proposals for health monitoring, applicability on IoT based system, accuracy, and suitability regarding big data analysis. Eventually, this paper focuses on deep learning based IoT system for health monitoring tools and contributes to providing relevant results to the different remote doctors in the area of IoT architecture to ensure propzer knowledge about critical patients. It is an approach to synchronize them in a platform that could be a potential solution for the upcoming researchers to implement a sustainable online based health monitoring system with big data accessing capability. In addition, this research will be effective for medical experts to ensure appropriate healthcare facilities to the mass people in the future.
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