大型语言模型能否促进临床护理过程的有效实施?

IF 3.1 2区 医学 Q1 NURSING
Yuqin Cao, Li Hu, Xu Cao, Jingjing Peng
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引用次数: 0

摘要

背景:现有研究报告的生成护理诊断和计划的质量仍然是一个有争议的话题,以前的研究主要使用ChatGPT作为唯一的大语言模式。目的:探讨跨不同大语言模型(llm)的提示框架生成的护理诊断和计划的质量,并评估llm在临床环境中的潜在适用性。方法:设计结构化护理评估模板,并结合多种提示技术迭代开发提示框架。然后,我们在两个不同的llm (ERNIE Bot 4.0和Moonshot AI)中评估了由该框架生成的护理诊断和护理计划的质量,同时也评估了它们的临床效用。结果:ERNIE Bot 4.0和Moonshot AI生成的护理诊断范围和性质与“金标准”护理诊断和护理计划相似。结构化的评估模板有效、全面地捕捉了神经外科患者的关键特征,而提示技术的策略性使用增强了llm的泛化能力。结论:我们的研究进一步证实了llm在临床护理实践中的潜力。然而,法学硕士辅助护理过程有效整合到临床环境中的重大挑战仍然存在。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Can large language models facilitate the effective implementation of nursing processes in clinical settings?

Background: The quality of generative nursing diagnoses and plans reported in existing research remains a topic of debate, and previous studies have primarily utilized ChatGPT as the sole large language mode.

Purpose: To explore the quality of nursing diagnoses and plans generated by a prompt framework across different large language models (LLMs) and assess the potential applicability of LLMs in clinical settings.

Methods: We designed a structured nursing assessment template and iteratively developed a prompt framework incorporating various prompting techniques. We then evaluated the quality of nursing diagnoses and care plans generated by this framework across two distinct LLMs(ERNIE Bot 4.0 and Moonshot AI), while also assessing their clinical utility.

Results: The scope and nature of the nursing diagnoses generated by ERNIE Bot 4.0 and Moonshot AI were similar to the "gold standard" nursing diagnoses and care plans.The structured assessment template effectively and comprehensively captures the key characteristics of neurosurgical patients, while the strategic use of prompting techniques has enhanced the generalization capabilities of the LLMs.

Conclusion: Our research further confirms the potential of LLMs in clinical nursing practice.However, significant challenges remain in the effective integration of LLM-assisted nursing processes into clinical environments.

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来源期刊
BMC Nursing
BMC Nursing Nursing-General Nursing
CiteScore
3.90
自引率
6.20%
发文量
317
审稿时长
30 weeks
期刊介绍: BMC Nursing is an open access, peer-reviewed journal that considers articles on all aspects of nursing research, training, education and practice.
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