cs.AI updates on arXiv.org 09月25日
基于LLM的CT扫描协议管理框架研究
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本文提出一种基于大型语言模型(LLM)的CT扫描协议管理框架,旨在提高CT扫描流程效率和减轻技术人员工作负担。通过实验验证,该框架能够有效检索协议组件、生成设备兼容的协议定义文件,并忠实执行用户请求。

arXiv:2509.20270v1 Announce Type: new Abstract: Managing scan protocols in Computed Tomography (CT), which includes adjusting acquisition parameters or configuring reconstructions, as well as selecting postprocessing tools in a patient-specific manner, is time-consuming and requires clinical as well as technical expertise. At the same time, we observe an increasing shortage of skilled workforce in radiology. To address this issue, a Large Language Model (LLM)-based agent framework is proposed to assist with the interpretation and execution of protocol configuration requests given in natural language or a structured, device-independent format, aiming to improve the workflow efficiency and reduce technologists' workload. The agent combines in-context-learning, instruction-following, and structured toolcalling abilities to identify relevant protocol elements and apply accurate modifications. In a systematic evaluation, experimental results indicate that the agent can effectively retrieve protocol components, generate device compatible protocol definition files, and faithfully implement user requests. Despite demonstrating feasibility in principle, the approach faces limitations regarding syntactic and semantic validity due to lack of a unified device API, and challenges with ambiguous or complex requests. In summary, the findings show a clear path towards LLM-based agents for supporting scan protocol management in CT imaging.

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CT扫描 协议管理 大型语言模型 工作效率 技术挑战
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