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Systematic review: The use of large language models as medical chatbots in digestive diseases

肝病学 医学 内科学 梅德林 科克伦图书馆 胃肠病学 斯科普斯 家庭医学 荟萃分析 政治学 法学
作者
Mauro Giuffrè,Simone Kresevic,Kisung You,Jean‐Paul Dupont,Jack Huebner,Alyssa Grimshaw,Dennis Shung
出处
期刊:Alimentary Pharmacology & Therapeutics [Wiley]
卷期号:60 (2): 144-166 被引量:5
标识
DOI:10.1111/apt.18058
摘要

Summary Background Interest in large language models (LLMs), such as OpenAI's ChatGPT, across multiple specialties has grown as a source of patient‐facing medical advice and provider‐facing clinical decision support. The accuracy of LLM responses for gastroenterology and hepatology‐related questions is unknown. Aims To evaluate the accuracy and potential safety implications for LLMs for the diagnosis, management and treatment of questions related to gastroenterology and hepatology. Methods We conducted a systematic literature search including Cochrane Library, Google Scholar, Ovid Embase, Ovid MEDLINE, PubMed, Scopus and the Web of Science Core Collection to identify relevant articles published from inception until January 28, 2024, using a combination of keywords and controlled vocabulary for LLMs and gastroenterology or hepatology. Accuracy was defined as the percentage of entirely correct answers. Results Among the 1671 reports screened, we identified 33 full‐text articles on using LLMs in gastroenterology and hepatology and included 18 in the final analysis. The accuracy of question‐responding varied across different model versions. For example, accuracy ranged from 6.4% to 45.5% with ChatGPT‐3.5 and was between 40% and 91.4% with ChatGPT‐4. In addition, the absence of standardised methodology and reporting metrics for studies involving LLMs places all the studies at a high risk of bias and does not allow for the generalisation of single‐study results. Conclusions Current general‐purpose LLMs have unacceptably low accuracy on clinical gastroenterology and hepatology tasks, which may lead to adverse patient safety events through incorrect information or triage recommendations, which might overburden healthcare systems or delay necessary care.
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