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Worldwide Research Trends and Hotspot on IOMT Based on Bibliometric Analysis
12
Zitationen
14
Autoren
2023
Jahr
Abstract
COVID-19's control hinges on precise virus identification in healthcare. The Internet of Medical Things (IoMT) denotes the online network of medical devices and apps facilitating data exchange. IoMT's recent rapid expansion indicates a rising use of internet-linked medical tools in healthcare. However, concerns about security and timely healthcare delivery impede IoMT-based application adoption. Safeguarding patient information and averting unauthorized access to medical systems remain paramount. Digital Clinical Trials (DCTs) are gaining significance, offering participation avenues regardless of time or location constraints. For their widespread adoption, IoMT and IoHT-based medical device development is crucial. The Internet of Health Things (IoHT), interlinking medical devices and apps, simplifies health data sharing. Scopus, a comprehensive academic database, was searched for IoMT-related papers between January 2017 and December 2022. Utilizing statistical tools like R, Biblioshiny, Bibliometrix, VOSviewer, and Microsoft Excel 365, 578 pertinent publications were analyzed, offering valuable insights. Additionally, 500 relevant papers were found in the Web of Science (WoS) database, contributing to this field's understanding and advancement.
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Autoren
Institutionen
- National College of Business Administration and Economics(PK)
- Westlake University(CN)
- Maharani Laxmi Bai Medical College(IN)
- Shah Abdul Latif University(PK)
- Shenzhen University(CN)
- University of Electronic Science and Technology of China(CN)
- Government of India(IN)
- Jamia Hamdard(IN)
- Dream Laboratory (United Kingdom)(GB)
- University Town of Shenzhen(CN)
- Prince Sultan University(SA)
- South Valley University(EG)