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[来自OpenAI、谷歌、Meta、X及其他公司的大语言模型:“封闭”和“开放”模型在放射学中的作用]

[Large language models from OpenAI, Google, Meta, X and Co. : The role of "closed" and "open" models in radiology].

作者信息

Nowak Sebastian, Sprinkart Alois M

机构信息

Klinik für Diagnostische und Interventionelle Radiologie, Universitätsklinikum Bonn, Venusberg-Campus 1, 53127, Bonn, Deutschland.

出版信息

Radiologie (Heidelb). 2024 Oct;64(10):779-786. doi: 10.1007/s00117-024-01327-8. Epub 2024 Jun 7.

DOI:10.1007/s00117-024-01327-8
PMID:38847898
Abstract

BACKGROUND

In 2023, the release of ChatGPT triggered an artificial intelligence (AI) boom. The underlying large language models (LLM) of the nonprofit organization "OpenAI" are not freely available under open-source licenses, which does not allow on-site implementation inside secure clinic networks. However, efforts are being made by open-source communities, start-ups and large tech companies to democratize the use of LLMs. This opens up the possibility of using LLMs in a data protection-compliant manner and even adapting them to our own data.

OBJECTIVES

This paper aims to explain the potential of privacy-compliant local LLMs for radiology and to provide insights into the "open" versus "closed" dynamics of the currently rapidly developing field of AI.

MATERIALS AND METHODS

PubMed search for radiology articles with LLMs and subjective selection of references in the sense of a narrative key topic article.

RESULTS

Various stakeholders, including large tech companies such as Meta, Google and X, but also European start-ups such as Mistral AI, contribute to the democratization of LLMs by publishing the models (open weights) or by publishing the model and source code (open source). Their performance is lower than current "closed" LLMs, such as GPT‑4 from OpenAI.

CONCLUSION

Despite differences in performance, open and thus locally implementable LLMs show great promise for improving the efficiency and quality of diagnostic reporting as well as interaction with patients and enable retrospective extraction of diagnostic information for secondary use of clinical free-text databases for research, teaching or clinical application.

摘要

背景

2023年,ChatGPT的发布引发了人工智能(AI)热潮。非营利组织“OpenAI”的底层大语言模型(LLM)并非根据开源许可免费提供,这使得其无法在安全的诊所网络内部署。然而,开源社区、初创企业和大型科技公司正在努力推动大语言模型的普及。这为以符合数据保护的方式使用大语言模型,甚至使其适应我们自己的数据开辟了可能性。

目的

本文旨在解释符合隐私要求的本地大语言模型在放射学中的潜力,并深入探讨当前快速发展领域中人工智能“开放”与“封闭”的动态关系。

材料与方法

通过PubMed搜索包含大语言模型的放射学文章,并根据叙述性关键主题文章的意义主观选择参考文献。

结果

包括Meta、谷歌和X等大型科技公司,以及Mistral AI等欧洲初创企业在内的各种利益相关者,通过发布模型(开放权重)或发布模型及源代码(开源),为大语言模型的普及做出了贡献。它们的性能低于当前“封闭”的大语言模型,如OpenAI的GPT-4。

结论

尽管性能存在差异,但开放且因此可在本地部署的大语言模型在提高诊断报告的效率和质量以及与患者的互动方面显示出巨大潜力,并能够回顾性提取诊断信息,以便将临床自由文本数据库用于研究、教学或临床应用的二次使用。

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Eur Arch Otorhinolaryngol. 2025 Mar;282(3):1593-1607. doi: 10.1007/s00405-024-09153-3. Epub 2025 Jan 10.

本文引用的文献

1
Development of image-based decision support systems utilizing information extracted from radiological free-text report databases with text-based transformers.利用基于文本的转换器从放射学自由文本报告数据库中提取的信息开发基于图像的决策支持系统。
Eur Radiol. 2024 May;34(5):2895-2904. doi: 10.1007/s00330-023-10373-0. Epub 2023 Nov 7.
2
A Context-based Chatbot Surpasses Trained Radiologists and Generic ChatGPT in Following the ACR Appropriateness Guidelines.基于语境的聊天机器人在遵循 ACR 适宜性准则方面超越了经过培训的放射科医生和通用的 ChatGPT。
Radiology. 2023 Jul;308(1):e230970. doi: 10.1148/radiol.230970.
3
Transformer-based structuring of free-text radiology report databases.
基于转换器的自由文本放射学报告数据库结构。
Eur Radiol. 2023 Jun;33(6):4228-4236. doi: 10.1007/s00330-023-09526-y. Epub 2023 Mar 11.