A Framework for 5G-Enabled Medical Informatization: Key Application Scenarios and Implementation Barriers

Authors

  • Xiaole Zhang School of Computer Science, Beijing University of Information Science and Technology, Beijing 102206, China

Keywords:

5G technology, Medical informatization, Telemedicine, Data security, Smart Hospital

Abstract

The rapid evolution of 5G technology has emerged as a transformative force in the realm of medical informatization, offering unprecedented opportunities for innovation in healthcare service delivery models. This article provides a comprehensive overview of the specific applications of 5G technology across four critical domains within the medical sector: remote healthcare, medical Internet of Things (IoT), big data analytics, and smart hospital construction. In remote healthcare, 5G technology enables real-time, high-quality video consultations and telemedicine services, bridging geographical gaps and improving access to specialist care. The medical IoT leverages 5G's low-latency and high-bandwidth capabilities to facilitate seamless communication between wearable devices, sensors, and healthcare systems, enhancing patient monitoring and management. Big data analytics powered by 5G allows for the efficient processing and analysis of vast amounts of medical data, enabling predictive analytics and personalized treatment plans. Smart hospital construction, meanwhile, benefits from 5G's ability to support interconnected and automated systems, optimizing operational efficiency and patient experiences. Despite these advancements, the integration of 5G technology into medical informatization is not without challenges. Key issues include weak network infrastructure in certain regions, which can hinder the seamless deployment of 5G-enabled services, data security risks due to the increased connectivity and data exchange, and a shortage of interdisciplinary talent capable of navigating the complexities of 5G and healthcare integration. To address these challenges, this article proposes targeted suggestions aimed at fostering the deep integration of 5G technology with the medical industry. These include investing in robust network infrastructure to ensure widespread coverage, implementing advanced cybersecurity measures to protect patient data, and developing educational programs to cultivate a workforce proficient in both 5G technology and healthcare applications. By addressing these challenges, the medical industry can harness the full potential of 5G technology to revolutionize healthcare delivery, improve patient outcomes, and drive innovation in the sector.

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Published

2025-10-31

How to Cite

Zhang, X. (2025). A Framework for 5G-Enabled Medical Informatization: Key Application Scenarios and Implementation Barriers. International Journal of Advance in Applied Science Research, 4(8), 44–48. Retrieved from https://h-tsp.com/index.php/ijaasr/article/view/126

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Articles