Gilbert Stephen, Kather Jakob Nikolas, Hogan Aidan
Else Kröner Fresenius Center for Digital Health, TUD Dresden University of Technology, Dresden, Germany.
Department of Computer Science, Universidad de Chile, Santiago, Chile.
NPJ Digit Med. 2024 Apr 23;7(1):100. doi: 10.1038/s41746-024-01081-0.
Reliably processing and interlinking medical information has been recognized as a critical foundation to the digital transformation of medical workflows, and despite the development of medical ontologies, the optimization of these has been a major bottleneck to digital medicine. The advent of large language models has brought great excitement, and maybe a solution to the medicines’ ‘communication problem’ is in sight, but how can the known weaknesses of these models, such as hallucination and non-determinism, be tempered? Retrieval Augmented Generation, particularly through knowledge graphs, is an automated approach that can deliver structured reasoning and a model of truth alongside LLMs, relevant to information structuring and therefore also to decision support.
可靠地处理和链接医学信息已被视为医疗工作流程数字化转型的关键基础,尽管医学本体已经得到发展,但对其进行优化一直是数字医学的一个主要瓶颈。大语言模型的出现带来了极大的兴奋,也许医学“沟通问题”的解决方案就在眼前,但是如何缓解这些模型已知的弱点,如幻觉和不确定性呢?检索增强生成,特别是通过知识图谱,是一种自动化方法,它可以与大语言模型一起提供结构化推理和真理模型,这与信息构建相关,因此也与决策支持相关。