Influence of prior probability information on large language model performance in radiological diagnosis.

IF 2.1 4区 医学 Japanese Journal of Radiology Pub Date : 2025-06-01 Epub Date: 2025-02-05 DOI:10.1007/s11604-025-01743-3
Takahiro Fukushima, Ryo Kurokawa, Akifumi Hagiwara, Yuki Sonoda, Yusuke Asari, Mariko Kurokawa, Jun Kanzawa, Wataru Gonoi, Osamu Abe
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Abstract

Purpose: Large language models (LLMs) show promise in radiological diagnosis, but their performance may be affected by the context of the cases presented. Our purpose is to investigate how providing information about prior probabilities influences the diagnostic performance of an LLM in radiological quiz cases.

Materials and methods: We analyzed 322 consecutive cases from Radiology's "Diagnosis Please" quiz using Claude 3.5 Sonnet under three conditions: without context (Condition 1), informed as quiz cases (Condition 2), and presented as primary care cases (Condition 3). Diagnostic accuracy was compared using McNemar's test.

Results: The overall accuracy rate significantly improved in Condition 2 compared to Condition 1 (70.2% vs. 64.9%, p = 0.029). Conversely, the accuracy rate significantly decreased in Condition 3 compared to Condition 1 (59.9% vs. 64.9%, p = 0.027).

Conclusions: Providing information that may influence prior probabilities significantly affects the diagnostic performance of the LLM in radiological cases. This suggests that LLMs may incorporate Bayesian-like principles and adjust the weighting of their diagnostic responses based on prior information, highlighting the potential for optimizing LLM's performance in clinical settings by providing relevant contextual information.

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先验概率信息对放射学诊断中大语言模型性能的影响。
目的:大型语言模型(llm)在放射学诊断中显示出希望,但它们的性能可能受到所呈现病例背景的影响。我们的目的是研究提供有关先验概率的信息如何影响LLM在放射测验病例中的诊断性能。材料和方法:我们使用克劳德3.5十四行诗分析了放射学“请诊断”测验中的322例连续病例,在三种情况下:没有背景(条件1),作为测验病例(条件2),作为初级保健病例(条件3)。使用McNemar测试比较诊断准确性。结果:条件2的总体准确率较条件1显著提高(70.2% vs. 64.9%, p = 0.029)。相反,与条件1相比,条件3的准确率显著下降(59.9% vs. 64.9%, p = 0.027)。结论:提供可能影响先验概率的信息会显著影响放射病例中LLM的诊断性能。这表明法学硕士可以结合贝叶斯原理,并根据先验信息调整其诊断反应的权重,强调通过提供相关的上下文信息来优化法学硕士在临床环境中的表现的潜力。
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来源期刊
Japanese Journal of Radiology
Japanese Journal of Radiology Medicine-Radiology, Nuclear Medicine and Imaging
自引率
4.80%
发文量
133
期刊介绍: Japanese Journal of Radiology is a peer-reviewed journal, officially published by the Japan Radiological Society. The main purpose of the journal is to provide a forum for the publication of papers documenting recent advances and new developments in the field of radiology in medicine and biology. The scope of Japanese Journal of Radiology encompasses but is not restricted to diagnostic radiology, interventional radiology, radiation oncology, nuclear medicine, radiation physics, and radiation biology. Additionally, the journal covers technical and industrial innovations. The journal welcomes original articles, technical notes, review articles, pictorial essays and letters to the editor. The journal also provides announcements from the boards and the committees of the society. Membership in the Japan Radiological Society is not a prerequisite for submission. Contributions are welcomed from all parts of the world.
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