Innovative IoT-Driven Monitoring Systems for Neonatal Intensive Care Unit Management: Designs IoT-based monitoring systems tailored for neonatal intensive care units to enhance patient monitoring and care delivery for premature infants
Published 20-11-2023
Keywords
- IoT,
- neonatal intensive care unit,
- smart monitoring systems,
- premature infants,
- healthcare technology
This work is licensed under a Creative Commons Attribution-NonCommercial-ShareAlike 4.0 International License.
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Abstract
This research paper presents a comprehensive overview of IoT-enabled smart monitoring systems for neonatal intensive care units (NICUs). Premature infants require continuous monitoring and specialized care, making NICUs critical in providing optimal conditions for their development. Traditional monitoring methods are often labor-intensive and prone to errors, highlighting the need for advanced technology to improve patient outcomes. IoT-based systems offer a promising solution by integrating sensors, data processing capabilities, and communication networks to provide real-time monitoring and decision support. This paper reviews the current state of IoT technology in NICUs, discusses the design considerations for smart monitoring systems, and explores the potential benefits and challenges of implementing such systems. Additionally, it examines case studies and future research directions to highlight the evolving landscape of NICU care.
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