Volume : 11, Issue : 11, November – 2024

Title:

SMART ANESTHESIA SYSTEMS: A REVIEW OF TECHNOLOGY INTEGRATION IN MODERN ANESTHESIA PRACTICE

Authors :

Mubarak Nasser Al Qahtani , Saad Mohammed Al Dossary, Ali Ahmed Alshajiri

Abstract :

Smart anesthesia systems have emerged as transformative tools within modern healthcare, integrating advanced technologies to enhance patient safety, improve clinical efficiency, and optimize anesthesia management in various surgical contexts. This review explores the latest advancements in smart anesthesia, focusing on automated delivery systems, real-time monitoring, artificial intelligence (AI)-driven decision support, and robotic assistance. By examining the clinical implications, we highlight how these technologies improve dosing precision, enable tailored anesthesia care, and support data-driven decision-making, ultimately leading to better patient outcomes. Challenges to implementation, including technical barriers, data security, and regulatory considerations, are discussed to provide a balanced view of their adoption in clinical settings. Future directions emphasize the need for broader integration with healthcare IT systems and the development of cost-effective solutions accessible to resource-limited settings. This review aims to provide clinicians, researchers, and healthcare administrators with a comprehensive overview of the evolving landscape of smart anesthesia systems and their potential to shape the future of anesthesia practice.
Keywords: Smart anesthesia systems, Automated anesthesia delivery, Anesthesia monitoring technology, Artificial intelligence in anesthesia, Robotic anesthesia systems, Patient safety in anesthesia, Technology integration in anesthesia.

Cite This Article:

Please cite this article in press Mubarak Nasser Al Qahtani et al., Smart Anesthesia Systems: A Review Of Technology Integration In Modern Anesthesia Practice..,Indo Am. J. P. Sci, 2024; 11 (11).

Number of Downloads : 10

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