风湿病学的发展前景:驯服人工智能的新语言模型架构。

IF 3.4 2区 医学 Q2 RHEUMATOLOGY
Therapeutic Advances in Musculoskeletal Disease Pub Date : 2025-04-21 eCollection Date: 2025-01-01 DOI:10.1177/1759720X251331529
Diego Benavent, Vincenzo Venerito, Xabier Michelena
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引用次数: 0

摘要

人工智能(AI)正日益改变风湿病学,通过分析大数据集进行疾病检测、监测和结果预测的研究。生成模型和大型语言模型(llm)的出现扩展了人工智能的能力,特别是在自然语言处理(NLP)任务中,如问答和医学文献合成。虽然NLP在从电子健康记录中准确识别风湿病方面显示出了希望,但法学硕士面临着重大挑战,包括幻觉和缺乏领域特定知识,这限制了他们在风湿病学等专业医疗领域的可靠性。通过将llm与外部、特定于领域的数据库的实时访问集成在一起,检索增强生成(RAG)成为解决这些限制的一种方法。RAG通过在生成过程中检索相关信息,减少幻觉,提高AI应用的可信度,提高AI生成响应的准确性和相关性。这种体系结构允许精确的、上下文感知的输出,并且可以有效地处理非结构化数据。尽管RAG在其他行业取得了成功,但它在医学上的应用,特别是在风湿病学上的应用,仍未得到充分的探索。在风湿病学中的潜在应用包括检索最新的临床指南,从非结构化数据中总结复杂的患者病史,帮助临床试验中的患者识别,加强药物警戒工作,以及支持个性化的患者教育。RAG还通过支持本地数据处理和减少对大型通用模型的依赖,在数据隐私方面提供了优势。未来的方向包括将RAG与微调的、更小的llm集成,并探索可以处理不同数据类型的多模态模型。必须解决基础设施成本、数据隐私问题以及对专门评估指标的需求等挑战。尽管如此,RAG为改善人工智能在风湿病学中的应用提供了一个有希望的机会,提供了一种更精确、更负责任、更可持续的方法,将先进的语言模型整合到临床实践和研究中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
RAGing ahead in rheumatology: new language model architectures to tame artificial intelligence.

Artificial intelligence (AI) is increasingly transforming rheumatology with research on disease detection, monitoring, and outcome prediction through the analysis of large datasets. The advent of generative models and large language models (LLMs) has expanded AI's capabilities, particularly in natural language processing (NLP) tasks such as question-answering and medical literature synthesis. While NLP has shown promise in identifying rheumatic diseases from electronic health records with high accuracy, LLMs face significant challenges, including hallucinations and a lack of domain-specific knowledge, which limit their reliability in specialized medical fields like rheumatology. Retrieval-augmented generation (RAG) emerges as a solution to these limitations by integrating LLMs with real-time access to external, domain-specific databases. RAG enhances the accuracy and relevance of AI-generated responses by retrieving pertinent information during the generation process, reducing hallucinations, and improving the trustworthiness of AI applications. This architecture allows for precise, context-aware outputs and can handle unstructured data effectively. Despite its success in other industries, the application of RAG in medicine, and specifically in rheumatology, remains underexplored. Potential applications in rheumatology include retrieving up-to-date clinical guidelines, summarizing complex patient histories from unstructured data, aiding in patient identification for clinical trials, enhancing pharmacovigilance efforts, and supporting personalized patient education. RAG also offers advantages in data privacy by enabling local data handling and reducing reliance on large, general-purpose models. Future directions involve integrating RAG with fine-tuned, smaller LLMs and exploring multimodal models that can process diverse data types. Challenges such as infrastructure costs, data privacy concerns, and the need for specialized evaluation metrics must be addressed. Nevertheless, RAG presents a promising opportunity to improve AI applications in rheumatology, offering a more precise, accountable, and sustainable approach to integrating advanced language models into clinical practice and research.

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来源期刊
CiteScore
6.80
自引率
4.80%
发文量
132
审稿时长
18 weeks
期刊介绍: Therapeutic Advances in Musculoskeletal Disease delivers the highest quality peer-reviewed articles, reviews, and scholarly comment on pioneering efforts and innovative studies across all areas of musculoskeletal disease.
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