重症监护中的大型语言模型

Laurens A. Biesheuvel , Jessica D. Workum , Merijn Reuland , Michel E. van Genderen , Patrick Thoral , Dave Dongelmans , Paul Elbers
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引用次数: 0

摘要

聊天生成预训练转换器(ChatGPT)和大型语言模型(llm)的出现彻底改变了自然语言处理(NLP)。这些模型在理解和生成类似人类的语言方面具有前所未有的能力。这一突破对非结构化数据和复杂临床信息丰富的重症监护医学具有重大意义。法学硕士在该领域的主要应用包括通过自动文档和患者图表总结提供行政支持;通过协助诊断和治疗计划来支持临床决策;个性化沟通,增进患者和家属的了解;并通过从非结构化的临床记录中提取见解来提高数据质量。尽管有这些机会,但必须解决诸如产生不准确或有偏见的信息“幻觉”的风险、伦理考虑以及临床医生对人工智能(AI)素养的需求等挑战。将法学硕士与传统机器学习模型(一种被称为混合人工智能(Hybrid AI)的方法)集成,结合了两种技术的优势,同时减轻了它们的局限性。谨慎的实施、法规遵从性和持续的验证对于确保法学硕士增强而不是阻碍患者护理至关重要。法学硕士有可能改变重症监护实践,但整合它们需要谨慎。负责任的使用和彻底的临床医生培训是充分实现其效益的关键。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Large language models in critical care
The advent of chat generative pre-trained transformer (ChatGPT) and large language models (LLMs) has revolutionized natural language processing (NLP). These models possess unprecedented capabilities in understanding and generating human-like language. This breakthrough holds significant promise for critical care medicine, where unstructured data and complex clinical information are abundant. Key applications of LLMs in this field include administrative support through automated documentation and patient chart summarization; clinical decision support by assisting in diagnostics and treatment planning; personalized communication to enhance patient and family understanding; and improving data quality by extracting insights from unstructured clinical notes. Despite these opportunities, challenges such as the risk of generating inaccurate or biased information “hallucinations”, ethical considerations, and the need for clinician artificial intelligence (AI) literacy must be addressed. Integrating LLMs with traditional machine learning models – an approach known as Hybrid AI – combines the strengths of both technologies while mitigating their limitations. Careful implementation, regulatory compliance, and ongoing validation are essential to ensure that LLMs enhance patient care rather than hinder it. LLMs have the potential to transform critical care practices, but integrating them requires caution. Responsible use and thorough clinician training are crucial to fully realize their benefits.
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来源期刊
Journal of intensive medicine
Journal of intensive medicine Critical Care and Intensive Care Medicine
CiteScore
1.90
自引率
0.00%
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0
审稿时长
58 days
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