Evaluating Literature Reviews Conducted by Humans Versus ChatGPT: Comparative Study.

JMIR AI Pub Date : 2024-08-19 DOI:10.2196/56537
Mehrnaz Mostafapour, Jacqueline H Fortier, Karen Pacheco, Heather Murray, Gary Garber
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Abstract

Background: With the rapid evolution of artificial intelligence (AI), particularly large language models (LLMs) such as ChatGPT-4 (OpenAI), there is an increasing interest in their potential to assist in scholarly tasks, including conducting literature reviews. However, the efficacy of AI-generated reviews compared with traditional human-led approaches remains underexplored.

Objective: This study aims to compare the quality of literature reviews conducted by the ChatGPT-4 model with those conducted by human researchers, focusing on the relational dynamics between physicians and patients.

Methods: We included 2 literature reviews in the study on the same topic, namely, exploring factors affecting relational dynamics between physicians and patients in medicolegal contexts. One review used GPT-4, last updated in September 2021, and the other was conducted by human researchers. The human review involved a comprehensive literature search using medical subject headings and keywords in Ovid MEDLINE, followed by a thematic analysis of the literature to synthesize information from selected articles. The AI-generated review used a new prompt engineering approach, using iterative and sequential prompts to generate results. Comparative analysis was based on qualitative measures such as accuracy, response time, consistency, breadth and depth of knowledge, contextual understanding, and transparency.

Results: GPT-4 produced an extensive list of relational factors rapidly. The AI model demonstrated an impressive breadth of knowledge but exhibited limitations in in-depth and contextual understanding, occasionally producing irrelevant or incorrect information. In comparison, human researchers provided a more nuanced and contextually relevant review. The comparative analysis assessed the reviews based on criteria including accuracy, response time, consistency, breadth and depth of knowledge, contextual understanding, and transparency. While GPT-4 showed advantages in response time and breadth of knowledge, human-led reviews excelled in accuracy, depth of knowledge, and contextual understanding.

Conclusions: The study suggests that GPT-4, with structured prompt engineering, can be a valuable tool for conducting preliminary literature reviews by providing a broad overview of topics quickly. However, its limitations necessitate careful expert evaluation and refinement, making it an assistant rather than a substitute for human expertise in comprehensive literature reviews. Moreover, this research highlights the potential and limitations of using AI tools like GPT-4 in academic research, particularly in the fields of health services and medical research. It underscores the necessity of combining AI's rapid information retrieval capabilities with human expertise for more accurate and contextually rich scholarly outputs.

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评估人类与 ChatGPT 进行的文献综述:比较研究
背景:随着人工智能(AI)的快速发展,尤其是大型语言模型(LLM),如 ChatGPT-4 (OpenAI),人们对其在学术任务(包括进行文献综述)中的辅助潜力越来越感兴趣。然而,人工智能生成的综述与传统的人类主导方法相比,其功效仍未得到充分探索:本研究旨在比较 ChatGPT-4 模型与人类研究人员进行的文献综述的质量,重点关注医生与患者之间的关系动态:我们在研究中纳入了两篇相同主题的文献综述,即探讨在医疗法律背景下影响医患关系动态的因素。其中一篇综述使用了 2021 年 9 月最后一次更新的 GPT-4,另一篇由人类研究人员进行。人工综述包括使用 Ovid MEDLINE 中的医学主题词和关键词进行全面的文献检索,然后对文献进行专题分析,以综合所选文章中的信息。人工智能生成的综述采用了一种新的提示工程方法,使用迭代和顺序提示来生成结果。比较分析基于定性衡量标准,如准确性、响应时间、一致性、知识的广度和深度、背景理解和透明度:结果:GPT-4 快速生成了一份广泛的关系因素清单。人工智能模型展示了令人印象深刻的知识广度,但在深度和上下文理解方面表现出局限性,偶尔会产生不相关或不正确的信息。相比之下,人类研究人员提供的评论更加细致入微,与上下文更加相关。比较分析根据准确性、响应时间、一致性、知识的广度和深度、对上下文的理解以及透明度等标准对审查进行了评估。虽然 GPT-4 在响应时间和知识广度方面表现出优势,但人类主导的审查在准确性、知识深度和语境理解方面表现出色:研究表明,GPT-4 与结构化提示工程相结合,可以快速提供广泛的主题概述,是进行初步文献综述的重要工具。但是,由于其局限性,有必要对其进行仔细的专家评估和改进,使其成为全面文献综述中的辅助工具,而不是人类专业知识的替代品。此外,本研究还强调了在学术研究中使用 GPT-4 等人工智能工具的潜力和局限性,尤其是在医疗服务和医学研究领域。它强调了将人工智能的快速信息检索能力与人类专业知识相结合的必要性,以便获得更准确、背景更丰富的学术成果。
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