4.5 Article

A multi-parametric machine learning approach using authentication trees for the healthcare industry

期刊

EXPERT SYSTEMS
卷 -, 期 -, 页码 -

出版社

WILEY
DOI: 10.1111/exsy.13202

关键词

data distribution; health risks; healthcare industry; internet of things; machine learning; multi-parametric analysis; security

资金

  1. Prince Sultan University

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The Internet of Health Things (IoHT) is becoming increasingly important in medical applications, and this research proposes a machine learning approach to enhance the sustainability and data accuracy and security of health applications.
The Internet of Health Things (IoHT) has grown in importance for developing medical applications with the support of wireless communication systems. IoHT is integrated with many sensors to capture the patients' records and transmits them to hospital centres for analysis and reporting. Controlling and managing health records has been addressed in several ways, however, it is noted that two key research problems for vital communication systems are reliability and reducing data loss. To enhance the sustainability of health applications and effectively use the network infrastructure when transferring sensitive data, this research provides a machine learning approach. Moreover, data collected from the IoHTs are protected and can be securely received for physical process in hospitals using authentication trees. Firstly, the undirected graphs are explored based on the multi-parametric machine learning approach to minimize the computation overheads and traffic congestion. Secondly, it evaluates the nodes' level behaviour over the heterogeneous traffic load with efficient identification of redundant links. Finally, in-depth analysis and simulation results have shown that the proposed protocol is more effective than existing approaches for data accuracy and security analysis.

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