人分析与人工智能:质性医学生叙事分析

IF 2.4 2区 医学 Q2 INFORMATION SCIENCE & LIBRARY SCIENCE
Kinneret Misgav, Galit Neufeld-Kroszynski, Michal Palombo, Orit Karnieli-Miller
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引用次数: 0

摘要

反思性叙述包含医学生经历和环境的有意义的信息,是定性分析的丰富来源。然而,从时间和金钱的角度来看,分析叙述来了解其内容是非常昂贵的。最近开发的基于人工智能的工具可能有助于简化分析过程。本研究探讨了大型语言模型(llm)在促进叙事文本分析方面的潜力。这些叙述是由医科学生根据他们对医疗遭遇中传递坏消息的观察和思考撰写的。由于其半结构化的性质以及医学和情感内容,这些叙述对分析具有挑战性。我们比较了以前手工完成的分析过程与法学硕士跨不同类别分析这些叙述的能力,包括上下文(例如,人口统计)和主题分析。我们的结果表明,LLM有效地处理数据并遵循格式化要求。然而,法学硕士的表现在不同的类别中有所不同,在简单的类别(例如,年龄)中显示出与人类分析更接近的一致性,同时在叙事的更微妙的方面(例如,评估惊喜)中挣扎。叙事的模糊性和复杂性对法学硕士提出了重大挑战,限制了其在此类情况下所需的解释准确性。研究结果表明,llm可以补充人类分析,特别是在提取明确提到的上下文信息方面,从而提高分析过程的效率。该研究强调需要进一步调查法学硕士的能力,指出未来法学硕士和人类定性研究人员协同工作,以管理对及时和准确的叙事分析的需求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Human Analysis vs. Artificial Intelligence: Analyzing of Qualitative Medical Students' Narratives.

Reflective narratives contain meaningful information about medical students' experiences and environments and are a rich source for qualitative analysis. However, analyzing narratives to learn about their content is expensive in terms of time and money. Recently developed artificial intelligence-based tools may help ease the analysis process. This study explored the potential of large language models (LLMs) to facilitate narrative text analysis. The narratives were written by medical students on their observations and reflections on medical encounters in which bad news was delivered. These narratives are challenging for analysis due to their semi-structured nature and medical and emotional content. We compared a former analysis process done manually versus the ability of LLMs to analyze these narratives, across different categories, including contextual (e.g., demographics) and thematic analysis. Our results showed that the LLM effectively processed data and followed formatting requirements. However, the LLM's performance varied across different categories, showing closer alignment with human analysis in straightforward categories (e.g., age), while struggling with more nuanced aspects of the narratives (e.g., assessing surprise). Ambiguities and complexities in the narratives posed significant challenges for the LLM, limiting its interpretive accuracy needed in such cases. The findings suggest that LLMs could complement human analysis, particularly in extracting explicitly mentioned contextual information, thereby enhancing the efficiency of the analysis process. The research highlights the need for further investigation into the capabilities of LLMs, pointing toward a future where the LLM and human qualitative researchers work in synergy to manage the demand for a timely and accurate narrative analysis.

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来源期刊
CiteScore
6.80
自引率
6.20%
发文量
109
期刊介绍: QUALITATIVE HEALTH RESEARCH is an international, interdisciplinary, refereed journal for the enhancement of health care and to further the development and understanding of qualitative research methods in health care settings. We welcome manuscripts in the following areas: the description and analysis of the illness experience, health and health-seeking behaviors, the experiences of caregivers, the sociocultural organization of health care, health care policy, and related topics. We also seek critical reviews and commentaries addressing conceptual, theoretical, methodological, and ethical issues pertaining to qualitative enquiry.
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