Enhancing Coronary Revascularization Decisions: The Promising Role of Large Language Models as a Decision-Support Tool for Multidisciplinary Heart Team.

IF 6.1 1区 医学 Q1 CARDIAC & CARDIOVASCULAR SYSTEMS Circulation: Cardiovascular Interventions Pub Date : 2024-11-01 Epub Date: 2024-11-06 DOI:10.1161/CIRCINTERVENTIONS.124.014201
Karin Sudri, Iris Motro-Feingold, Roni Ramon-Gonen, Noam Barda, Eyal Klang, Paul Fefer, Sergei Amunts, Zachi Itzhak Attia, Mohamad Alkhouli, Amitai Segev, Michal Cohen-Shelly, Israel Moshe Barbash
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Abstract

Background: While clinical practice guidelines advocate for multidisciplinary heart team (MDHT) discussions in coronary revascularization, variability in implementation across health care settings remains a challenge. This variability could potentially be addressed by language learning models like ChatGPT, offering decision-making support in diverse health care environments. Our study aims to critically evaluate the concordance between recommendations made by MDHT and those generated by language learning models in coronary revascularization decision-making.

Methods: From March 2023 to July 2023, consecutive coronary angiography cases (n=86) that were referred for revascularization (either percutaneous or surgical) were analyzed using both ChatGPT-3.5 and ChatGPT-4. Case presentation formats included demographics, medical background, detailed description of angiographic findings, and SYNTAX score (Synergy Between Percutaneous Coronary Intervention With Taxus and Cardiac Surgery; I and II), which were presented in 3 different formats. The recommendations of the models were compared with those of an MDHT.

Results: ChatGPT-4 showed high concordance with decisions made by the MDHT (accuracy 0.82, sensitivity 0.8, specificity 0.83, and kappa 0.59), while ChatGPT-3.5 (0.67, 0.27, 0.84, and 0.12, respectively) showed lower concordance. Entropy and Fleiss kappa of ChatGPT-4 were 0.09 and 0.9, respectively, indicating high reliability and repeatability. The best correlation between ChatGPT-4 and MDHT was achieved when clinical cases were presented in a detailed context. Specific subgroups of patients yielded high accuracy (>0.9) of ChatGPT-4, including those with left main disease, 3 vessel disease, and diabetic patients.

Conclusions: The present study demonstrates that advanced language learning models like ChatGPT-4 may be able to predict clinical recommendations for coronary artery disease revascularization with reasonable accuracy, especially in specific patient groups, underscoring their potential role as a supportive tool in clinical decision-making.

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加强冠状动脉血运重建决策:大型语言模型作为多学科心脏团队决策支持工具的前景广阔。
背景:虽然临床实践指南提倡在冠状动脉血运重建中进行多学科心脏团队(MDHT)讨论,但在不同的医疗环境中实施的差异性仍然是一项挑战。像 ChatGPT 这样的语言学习模型有可能解决这种差异,在不同的医疗环境中提供决策支持。我们的研究旨在批判性地评估 MDHT 提出的建议与语言学习模型在冠状动脉血运重建决策中生成的建议之间的一致性:方法:从 2023 年 3 月到 2023 年 7 月,我们使用 ChatGPT-3.5 和 ChatGPT-4 对转诊进行血管再通(经皮或手术)的连续冠状动脉造影病例(n=86)进行了分析。病例展示格式包括人口统计学、医学背景、血管造影结果的详细描述和 SYNTAX 评分(经皮冠状动脉介入治疗与 Taxus 和心脏手术之间的协同作用;I 和 II),以 3 种不同的格式展示。这些模型的建议与 MDHT 的建议进行了比较:结果:ChatGPT-4 与 MDHT 所做决定的一致性很高(准确性 0.82、灵敏度 0.8、特异性 0.83 和卡帕 0.59),而 ChatGPT-3.5 的一致性较低(分别为 0.67、0.27、0.84 和 0.12)。ChatGPT-4 的 Entropy 和 Fleiss kappa 分别为 0.09 和 0.9,表明具有较高的可靠性和可重复性。当详细介绍临床病例时,ChatGPT-4 和 MDHT 的相关性最好。特定亚组患者的 ChatGPT-4 准确率较高(>0.9),包括左主干疾病、三血管疾病和糖尿病患者:本研究表明,像 ChatGPT-4 这样的高级语言学习模型可以合理准确地预测冠状动脉疾病血管重建的临床建议,尤其是在特定患者群体中,强调了其作为临床决策辅助工具的潜在作用。
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来源期刊
Circulation: Cardiovascular Interventions
Circulation: Cardiovascular Interventions CARDIAC & CARDIOVASCULAR SYSTEMS-
CiteScore
10.30
自引率
1.80%
发文量
221
审稿时长
6-12 weeks
期刊介绍: Circulation: Cardiovascular Interventions, an American Heart Association journal, focuses on interventional techniques pertaining to coronary artery disease, structural heart disease, and vascular disease, with priority placed on original research and on randomized trials and large registry studies. In addition, pharmacological, diagnostic, and pathophysiological aspects of interventional cardiology are given special attention in this online-only journal.
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