Remote Cardiac Patients Monitoring System Using Internet of Medical Things (IoMT) Devices

  • Huda Ghassan Hameed Abdulmajeed Al-Bayan University, College of Pharmacy, Iraq
  • Esraa Ahmed Ghafil National University of Science and Technology, Thi-qar, Iraq
  • Mahmood Hameed Majeed Al-Bayan University, College of Health and Medical Techniques, Iraq
  • Wafaa Mohammed Attaf Mustafa Al- Attar Al-Bayan University, College of Nursing, Iraq
  • Shallal Murad Hussein Al-Bayan University, College of Health and Medical Techniques, Iraq
Keywords: Internet of Medical Things (IoMT), Patient Surveillance, Cloud Computing, Medical Instruments, Intelligent Personal Digital Assistant (IPDA)

Abstract

People nowadays are dealing with a variety of medical, physiological, and psychological issues. They don't have time to go to the specialist on a regular basis. A circumstance may arise when a patient needs immediate care. To address these problems, we need a system that gathers all data on people's illnesses in a variety of settings, from individual to city. Wireless sensor network (WSN) technology is one of the most important topics of study in computer science and the healthcare industry to improve people's lives. The goal of this study is to provide a broad overview of current research on wearable and implantable body area network systems for continuous patient monitoring, as well as future directions.. In this research, medical sensors (MedSnrs) were utilized to gather physiological data from patients and transmit it to an IPDA. The importance of body sensor networks in medicine is discussed in this article, including how they may lessen the need for caretakers and enable chronically unhealthy and elderly individuals to live more independently while still receiving high-quality care. Despite its many merits, the field of wearable and implanted BAN still has significant challenges and open research issues, which are examined and addressed in this article, as well as some prospective solutions

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Published
2022-06-06
How to Cite
Huda Ghassan Hameed Abdulmajeed, Esraa Ahmed Ghafil, Mahmood Hameed Majeed, Wafaa Mohammed Attaf Mustafa Al- Attar, & Shallal Murad Hussein. (2022). Remote Cardiac Patients Monitoring System Using Internet of Medical Things (IoMT) Devices. Central Asian Journal of Theoretical and Applied Science, 3(5), 531-536. https://doi.org/10.17605/OSF.IO/SEUYB

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