[Large language models in rheumatology : New ways of knowledge transfer].

IF 1 4区 医学 Q4 RHEUMATOLOGY
Johannes Knitza, Thomas Hügle
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引用次数: 0

Abstract

Medical knowledge is growing exponentially in rheumatology, posing increasing challenges for knowledge dissemination among physicians, educators and patients. Traditional information and learning formats are reaching their limits in view of the rapid emergence of new clinical studies, guidelines and treatment concepts. Large language models (LLMs) offer the possibility to structure, synthesize and contextually adapt extensive and complex information within a short time. This opens new perspectives for clinical decision support, medical education, patient education and scientific work in rheumatology. This article systematically categorizes the use of LLMs across these fields of application and discusses the opportunities, risks and practical implications using selected examples that colleagues can immediately apply. Early data suggest a high potential for use and growing acceptance among physicians, students and patients; however, significant challenges remain. These include concerns regarding the validity and transparency of the generated content, potential biases, data protection issues and the risk of uncritical adoption of artificial intelligence (AI)-generated recommendations. The use of LLMs can make rheumatological knowledge rapidly, individually, and easily accessible but does not replace medical responsibility or clinical expertise. An evidence-based evaluation, clear regulatory framework conditions, safe integration into existing workflows and targeted training and governance concepts are essential to harness the potential of LLMs for knowledge dissemination in rheumatology in a sustainable and responsible manner.

风湿病学中的大型语言模型:知识转移的新途径。
风湿病学的医学知识呈指数级增长,对医生、教育工作者和患者之间的知识传播提出了越来越大的挑战。鉴于新的临床研究、指导方针和治疗概念的迅速出现,传统的信息和学习格式正在达到极限。大型语言模型(llm)提供了在短时间内构建,综合和上下文适应广泛而复杂的信息的可能性。这为风湿病的临床决策支持、医学教育、患者教育和科学工作开辟了新的视角。本文系统地对法学硕士在这些应用领域的使用进行了分类,并使用同事可以立即应用的选定示例讨论了机会、风险和实际含义。早期数据表明,该技术的应用潜力巨大,并在医生、学生和患者中得到越来越多的接受;然而,重大挑战依然存在。这些问题包括对生成内容的有效性和透明度、潜在偏见、数据保护问题以及不加批判地采用人工智能(AI)生成建议的风险的担忧。llm的使用可以使风湿病学知识快速、单独和容易获得,但不能取代医疗责任或临床专业知识。以证据为基础的评估、明确的监管框架条件、与现有工作流程的安全整合以及有针对性的培训和治理概念对于以可持续和负责任的方式利用法学硕士在风湿病学知识传播方面的潜力至关重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Zeitschrift fur Rheumatologie
Zeitschrift fur Rheumatologie 医学-风湿病学
CiteScore
2.20
自引率
20.00%
发文量
150
审稿时长
6-12 weeks
期刊介绍: Die Zeitschrift für Rheumatologie ist ein international angesehenes Publikationsorgan und dient der Fortbildung von niedergelassenen und in der Klinik tätigen Rheumatologen. Die Zeitschrift widmet sich allen Aspekten der klinischen Rheumatologie, der Therapie rheumatischer Erkrankungen sowie der rheumatologischen Grundlagenforschung. Umfassende Übersichtsarbeiten zu einem aktuellen Schwerpunktthema sind das Kernstück jeder Ausgabe. Im Mittelpunkt steht dabei gesichertes Wissen zu Diagnostik und Therapie mit hoher Relevanz für die tägliche Arbeit – der Leser erhält konkrete Handlungsempfehlungen. Frei eingereichte Originalien ermöglichen die Präsentation wichtiger klinischer Studien und dienen dem wissenschaftlichen Austausch.
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