数据驱动的ICU护理质量:简明综述。

IF 6 1区 医学 Q1 CRITICAL CARE MEDICINE
Giulliana M Moralez, Filipe Amado, Vincent X Liu, Sing Chee Tan, Geert Meyfroidt, Robert D Stevens, David Pilcher, Jorge I F Salluh
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引用次数: 0

摘要

人工智能(AI)和机器学习(ML)正在成为重症监护医学的变革性工具。然而,尽管发展了许多AI/ML模型,但它们与常规ICU实践的整合仍然有限。本文简要回顾了人工智能和数据科学在重症监护中的作用,重点介绍了它们对安全和质量保证、临床流程改进和ICU管理的贡献。通过综合现有证据,本综述旨在强调在重症监护环境中实施人工智能驱动解决方案相关的机遇和挑战。数据来源:在PubMed中使用与AI、ML、ICU管理、临床决策支持和预测分析相关的关键词识别英语文章。研究选择:纳入与AI/ML在ICU质量和绩效评估中的应用相关的原创研究文章、评论、信件和评论。资料提取:识别相关文献,将主要发现综合成结构化的叙述性综述。数据综合:将AI和ML集成到ICU管理中,利用大量临床数据来评估ICU绩效,测量风险因素,优化工作流程并预测不良事件。机器学习驱动的模型可以改善临床决策和ICU管理。尽管结果令人鼓舞,但现实世界的实施需要严格的验证和临床医生的采用。人工智能在ICU的成功实施面临着重大挑战。结论:人工智能和机器学习具有改变ICU管理的潜力。然而,它们的成功取决于经过验证的方法、可互操作的数据框架和临床医生可以信任的可解释模型。推进人工智能在ICU中的应用需要多学科的努力,以创建自适应、透明和临床有意义的解决方案,以加强患者护理和改善工作流程,同时确保安全性和效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data-Driven Quality of Care in the ICU: A Concise Review.

Objectives: Artificial intelligence (AI) and machine learning (ML) are emerging as transformative tools in intensive care medicine. Nevertheless, despite the development of numerous AI/ML models, their integration into routine ICU practice remains limited. This concise review examines the role of AI and data science in critical care, with a focus on their contributions to safety and quality assurance, clinical processes improvements, and ICU management. By synthesizing current evidence, this review aims to highlight the opportunities and challenges associated with implementing AI-driven solutions in critical care settings.

Data sources: English-language articles were identified in PubMed using keywords related to AI, ML, ICU management, clinical decision support, and predictive analytics.

Study selection: Original research articles, reviews, letters, and commentaries relevant to AI/ML applications in ICU quality and performance assessment were included.

Data extraction: Relevant literature was identified, key findings were synthesized into a structured narrative review.

Data synthesis: The integration of AI and ML into ICU management leverages vast clinical data to evaluate ICU performance, measure risk factors, optimize workflows, and predict adverse events. ML-driven models can improve clinical decision-making and ICU management. Despite the promising results, real-world implementation requires rigorous validation and clinician adoption. AI-driven successful implementation in ICU comes with significant challenges.

Conclusions: AI and ML have the potential to transform ICU management. However, their success depends on validated methodologies, interoperable data frameworks, and interpretable models that clinicians can trust. Advancing AI use in the ICU demands a multidisciplinary effort to create adaptive, transparent, and clinically meaningful solutions that enhance patient care and improve workflow, while ensuring safety and efficiency.

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来源期刊
Critical Care Medicine
Critical Care Medicine 医学-危重病医学
CiteScore
16.30
自引率
5.70%
发文量
728
审稿时长
2 months
期刊介绍: Critical Care Medicine is the premier peer-reviewed, scientific publication in critical care medicine. Directed to those specialists who treat patients in the ICU and CCU, including chest physicians, surgeons, pediatricians, pharmacists/pharmacologists, anesthesiologists, critical care nurses, and other healthcare professionals, Critical Care Medicine covers all aspects of acute and emergency care for the critically ill or injured patient. Each issue presents critical care practitioners with clinical breakthroughs that lead to better patient care, the latest news on promising research, and advances in equipment and techniques.
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