肿瘤学中的大型语言模型综述。

BMJ oncology Pub Date : 2025-05-15 eCollection Date: 2025-01-01 DOI:10.1136/bmjonc-2025-000759
David Chen, Rod Parsa, Karl Swanson, John-Jose Nunez, Andrew Critch, Danielle S Bitterman, Fei-Fei Liu, Srinivas Raman
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引用次数: 0

摘要

大型语言模型(llm)已经在自然语言处理中展示了新兴的类人能力,导致人们热衷于将它们集成到医疗保健环境中。在肿瘤学领域,综合复杂的、多模式的数据是必不可少的,法学硕士为支持临床决策、加强患者护理和加速研究提供了一条有前途的途径。这篇叙述性的回顾旨在强调医学法学硕士的现状;法学硕士在肿瘤学临床医生、患者和转化研究中的应用;以及未来的研究方向。面向临床医生的法学硕士支持临床决策,并支持从电子健康记录和文献中自动提取数据,从而为决策提供信息。面向患者的法学硕士提供了传播可获得的癌症信息和社会心理支持的潜力。然而,法学硕士在临床应用前必须解决一些限制,包括幻觉的风险、不好的泛化、伦理问题和范围整合。我们建议将法学硕士纳入复合人工智能系统,以促进肿瘤学的采用和效率。这篇叙述性综述作为临床医生理解、评估和作为活跃用户参与的非技术入门,可以为肿瘤学环境中部署的LLM技术的设计和迭代改进提供信息。虽然法学硕士并不打算取代肿瘤学家,但他们可以作为增强临床专业知识和以患者为中心的护理的有力工具,加强他们在肿瘤学不断发展的环境中作为有价值的辅助者的作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Large language models in oncology: a review.

Large language models in oncology: a review.

Large language models in oncology: a review.

Large language models in oncology: a review.

Large language models (LLMs) have demonstrated emergent human-like capabilities in natural language processing, leading to enthusiasm about their integration in healthcare environments. In oncology, where synthesising complex, multimodal data is essential, LLMs offer a promising avenue for supporting clinical decision-making, enhancing patient care, and accelerating research. This narrative review aims to highlight the current state of LLMs in medicine; applications of LLMs in oncology for clinicians, patients, and translational research; and future research directions. Clinician-facing LLMs enable clinical decision support and enable automated data extraction from electronic health records and literature to inform decision-making. Patient-facing LLMs offer the potential for disseminating accessible cancer information and psychosocial support. However, LLMs face limitations that must be addressed before clinical adoption, including risks of hallucinations, poor generalisation, ethical concerns, and scope integration. We propose the incorporation of LLMs within compound artificial intelligence systems to facilitate adoption and efficiency in oncology. This narrative review serves as a non-technical primer for clinicians to understand, evaluate, and participate as active users who can inform the design and iterative improvement of LLM technologies deployed in oncology settings. While LLMs are not intended to replace oncologists, they can serve as powerful tools to augment clinical expertise and patient-centred care, reinforcing their role as a valuable adjunct in the evolving landscape of oncology.

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