自动麻醉研究进展综述

Xiuding Cai, Xueyao Wang, Yaoyao Zhu, Yu Yao, Jiao Chen
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引用次数: 0

摘要

麻醉是现代医疗实践的一个基本方面,通过有效地管理催眠和镇痛,确保手术过程中患者的安全和舒适。人工智能(AI)的快速发展促进了自动化麻醉系统的出现,显著提高了复杂手术环境下麻醉管理的精度、效率和适应性。本文综述了现有的关于自动麻醉的文献,重点介绍了三个关键领域:生理建模、自动麻醉控制和性能评估。它批判性地考察了当前方法的优势和局限性,包括传统的统计学习,机器学习和深度学习方法,同时讨论了该领域的未来发展趋势。通过综合最新的技术进步和临床应用,本工作旨在为研究人员和临床医生提供有价值的见解,促进智能和自动化麻醉实践的发展。最后,本综述强调了人工智能驱动的解决方案在提供个性化麻醉护理、优化催眠和镇痛以及提高手术效果方面的变革潜力。
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Advances in automated anesthesia: a comprehensive review

Anesthesia is a fundamental aspect of modern medical practice, ensuring patient safety and comfort during surgical procedures by effectively managing hypnosis and analgesia. The rapid advancement of artificial intelligence (AI) has facilitated the emergence of automated anesthesia systems, significantly enhancing the precision, efficiency, and adaptability of anesthesia management in complex surgical environments. This review provides a comprehensive survey of the existing literature on automated anesthesia, focusing on three key areas: physiological modeling, automatic anesthesia control, and performance evaluation. It critically examines the strengths and limitations of current methodologies, including traditional statistical learning, machine learning and deep learning approaches, while discussing future development trends in the field. By synthesizing recent technological advancements and clinical applications, this work aims to provide valuable insights for researchers and clinicians, promoting the evolution of intelligent and automated anesthesia practices. Ultimately, this review underscores the transformative potential of AI-driven solutions in delivering personalized anesthesia care, optimizing both hypnosis and analgesia, and enhancing surgical outcomes.

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