探索人工智能、大型语言模型的作用:比较妇科肿瘤指南中以患者为中心的信息和临床决策支持功能。

IF 2.6 3区 医学 Q2 OBSTETRICS & GYNECOLOGY International Journal of Gynecology & Obstetrics Pub Date : 2024-08-20 DOI:10.1002/ijgo.15869
Lee Reicher, Guy Lutsker, Nadav Michaan, Dan Grisaru, Ido Laskov
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引用次数: 0

摘要

妇科癌症需要个性化护理来改善治疗效果。大语言模型(LLMs)有可能提供智能问题解答,以清晰、通俗的英语提供可靠的医疗查询信息,让医疗服务提供者和患者都能理解。我们的目的是评估两个免费提供的 LLM(ChatGPT 和 Google's Bard)在回答有关妇科癌症治疗的问题时的表现。评估 LLMs 的性能时,我们从患者的角度提出了一系列问题,这些问题涉及常见的妇科肿瘤检查结果,还从临床医生的角度提出了一些更复杂的问题,以征求建议。每个问题都呈现在 LLM 界面上,人工智能(AI)模型生成的回复被记录下来。根据是否符合美国国家综合癌症网络和欧洲妇科肿瘤学会指南,对这些回答进行了评估。这项评估旨在确定 LLM 所提供信息的准确性和适当性。我们的结果表明,对于常见的宫颈癌筛查检查和 BRCA 相关问题,这些模型提供了基本适当的回答。而对于复杂和有争议的妇科肿瘤病例,通过查阅常用指南评估,所得到的回答则不太有用。虽然 ChatGPT 和 Bard 缺乏对地区指南差异的了解,但它为患者和护理人员提供了有关下一步管理和随访的实用且多方面的建议。我们的结论是,LLM 可作为辅助信息工具发挥作用,以改善治疗效果。
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Exploring the role of artificial intelligence, large language models: Comparing patient-focused information and clinical decision support capabilities to the gynecologic oncology guidelines.

Gynecologic cancer requires personalized care to improve outcomes. Large language models (LLMs) hold the potential to provide intelligent question-answering with reliable information about medical queries in clear and plain English, which can be understood by both healthcare providers and patients. We aimed to evaluate two freely available LLMs (ChatGPT and Google's Bard) in answering questions regarding the management of gynecologic cancer. The LLMs' performances were evaluated by developing a set questions that addressed common gynecologic oncologic findings from a patient's perspective and more complex questions to elicit recommendations from a clinician's perspective. Each question was presented to the LLM interface, and the responses generated by the artificial intelligence (AI) model were recorded. The responses were assessed based on the adherence to the National Comprehensive Cancer Network and European Society of Gynecological Oncology guidelines. This evaluation aimed to determine the accuracy and appropriateness of the information provided by LLMs. We showed that the models provided largely appropriate responses to questions regarding common cervical cancer screening tests and BRCA-related questions. Less useful answers were received to complex and controversial gynecologic oncology cases, as assessed by reviewing the common guidelines. ChatGPT and Bard lacked knowledge of regional guideline variations, However, it provided practical and multifaceted advice to patients and caregivers regarding the next steps of management and follow up. We conclude that LLMs may have a role as an adjunct informational tool to improve outcomes.

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来源期刊
CiteScore
5.80
自引率
2.60%
发文量
493
审稿时长
3-6 weeks
期刊介绍: The International Journal of Gynecology & Obstetrics publishes articles on all aspects of basic and clinical research in the fields of obstetrics and gynecology and related subjects, with emphasis on matters of worldwide interest.
期刊最新文献
Routine ultrasound does not improve instrument placement at operative vaginal delivery: An updated systematic review and meta-analysis. Beyond borders: The global impact of violating reproductive human rights. Trustworthiness criteria for meta-analyses of randomized controlled studies: OBGYN Journal guidelines. Menstrual management using the etonogestrel implant in individuals with intellectual disabilities in Joinville, Brazil. Anticoagulant therapy in pregnant women with mechanical and bioprosthetic heart valves.
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