结构化数据的交互使用openEHR和大型语言模型在前列腺癌的临床决策支持。

IF 2.8 2区 医学 Q2 UROLOGY & NEPHROLOGY
Philippe Kaiser, Shan Yang, Michael Bach, Christian Breit, Kirsten Mertz, Bram Stieltjes, Jan Ebbing, Christian Wetterauer, Maurice Henkel
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引用次数: 0

摘要

背景:多学科团队(MDTs)对癌症治疗至关重要,但资源密集。mdt内的决策过程虽然至关重要,但由于需要专家时间和协调,导致医疗保健成本增加。最近出现的大型语言模型(llm)为提高临床决策过程的效率和准确性提供了潜力,潜在地降低了与传统MDT模型相关的成本。方法:对171例连续治疗的新诊断前列腺癌患者进行回顾性研究。相关结构化临床数据和欧洲泌尿外科协会(EAU)口袋指南提供给两位LLMs (chatGPT-4, Claude-3-Opus)。将LLM治疗建议与MDT会议(MDM)的实际治疗建议进行比较。结果:两种LLMs对MDT治疗建议的总体依从性为93%。在15例(9%)病例中观察到LLM和MDT建议之间的差异,主要是由于缺乏可以提供给LLM的临床信息。在5个案例中(3%),法学硕士的建议不符合欧亚联盟的指导方针,尽管他们可以获得所有相关信息。结论:我们的研究结果证明LLMs可以为新诊断的前列腺癌患者提供准确的治疗建议。llm具有简化MDT工作流程的潜力,使专家能够专注于复杂的病例和以患者为中心的讨论。在这项研究中,我们探索了被称为大语言模型(LLMs)的人工智能模型的潜力,以协助前列腺癌患者的治疗决策。我们发现,法学硕士在提供患者信息和临床指南时,可以推荐与癌症专家团队的治疗方法密切匹配的治疗方法,这表明法学硕士可以帮助简化决策过程,并有可能降低医疗成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The interaction of structured data using openEHR and large Language models for clinical decision support in prostate cancer.

Background: Multidisciplinary teams (MDTs) are essential for cancer care but are resource-intensive. Decision-making processes within MDTs, while critical, contribute to increased healthcare costs due to the need for specialist time and coordination. The recent emergence of large language models (LLMs) offers the potential to improve the efficiency and accuracy of clinical decision-making processes, potentially reducing costs associated with traditional MDT models.

Methods: We conducted a retrospective study of 171 consecutively treated patients with newly diagnosed prostate cancer. Relevant structured clinical data and the European Association of Urology (EAU) pocket guidelines were provided to two LLMs (chatGPT-4, Claude-3-Opus). LLM treatment recommendations were compared to actual treatment recommendations of the MDT meeting (MDM).

Results: Both LLMs demonstrated an overall adherence of 93% with the MDT treatment recommendations. Discrepancies between LLM and MDT recommendations were observed in 15 cases (9%), primarily due to lack of clinical information that could be provided to the LLMs. In 5 cases (3%), the LLM recommendations were not in line with EAU guidelines despite having access to all relevant information.

Conclusions: Our findings provide evidence that LLMs can provide accurate treatment recommendations for newly diagnosed prostate cancer patients. LLMs have the potential to streamline MDT workflows, enabling specialists to focus on complex cases and patient-centered discussions. In this study, we explored the potential of artificial intelligence models called large language models (LLMs) to assist in treatment decision-making for prostate cancer patients. We found that LLMs, when provided with patient information and clinical guidelines, can recommend treatments that closely match those made by a team of cancer specialists, suggesting that LLMs could help streamline the decision-making process and potentially reduce healthcare costs.

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来源期刊
World Journal of Urology
World Journal of Urology 医学-泌尿学与肾脏学
CiteScore
6.80
自引率
8.80%
发文量
317
审稿时长
4-8 weeks
期刊介绍: The WORLD JOURNAL OF UROLOGY conveys regularly the essential results of urological research and their practical and clinical relevance to a broad audience of urologists in research and clinical practice. In order to guarantee a balanced program, articles are published to reflect the developments in all fields of urology on an internationally advanced level. Each issue treats a main topic in review articles of invited international experts. Free papers are unrelated articles to the main topic.
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