清晰
可读性
恩惠
违反直觉
心理学
组内相关
医学伦理学
可靠性(半导体)
医学教育
应用心理学
工程伦理学
社会心理学
医学
计算机科学
心理测量学
临床心理学
认识论
法学
政治学
生物化学
化学
哲学
功率(物理)
自治
物理
量子力学
精神科
程序设计语言
工程类
作者
Michael Balas,Jordan Joseph Wadden,P. C. Hebert,Eric Mathison,Marika Warren,Victoria Seavilleklein,Daniel Wyzynski,Alison Callahan,Sean A. Crawford,Parnian Arjmand,Edsel Ing
标识
DOI:10.1136/jme-2023-109549
摘要
Integrating large language models (LLMs) like GPT-4 into medical ethics is a novel concept, and understanding the effectiveness of these models in aiding ethicists with decision-making can have significant implications for the healthcare sector. Thus, the objective of this study was to evaluate the performance of GPT-4 in responding to complex medical ethical vignettes and to gauge its utility and limitations for aiding medical ethicists. Using a mixed-methods, cross-sectional survey approach, a panel of six ethicists assessed LLM-generated responses to eight ethical vignettes.The main outcomes measured were relevance, reasoning, depth, technical and non-technical clarity, as well as acceptability of GPT-4's responses. The readability of the responses was also assessed. Of the six metrics evaluating the effectiveness of GPT-4's responses, the overall mean score was 4.1/5. GPT-4 was rated highest in providing technical (4.7/5) and non-technical clarity (4.4/5), whereas the lowest rated metrics were depth (3.8/5) and acceptability (3.8/5). There was poor-to-moderate inter-rater reliability characterised by an intraclass coefficient of 0.54 (95% CI: 0.30 to 0.71). Based on panellist feedback, GPT-4 was able to identify and articulate key ethical issues but struggled to appreciate the nuanced aspects of ethical dilemmas and misapplied certain moral principles.This study reveals limitations in the ability of GPT-4 to appreciate the depth and nuanced acceptability of real-world ethical dilemmas, particularly those that require a thorough understanding of relational complexities and context-specific values. Ongoing evaluation of LLM capabilities within medical ethics remains paramount, and further refinement is needed before it can be used effectively in clinical settings.
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