将法学硕士纳入放射学教育:一个以解释为中心的框架,在支持工作流程的同时增强学习。

Shawn K Lyo, Tessa S Cook
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引用次数: 0

摘要

放射学教育面临着临床工作量增加、实习督导时间限制和实时反馈阻碍的挑战。大型语言模型(llm)可以通过提供实时指导、反馈和教育资源来增强放射学教育,同时支持有效的临床工作流程。我们提出了一个以解释为中心的框架,将法学硕士整合到放射学教育中,并将其细分为不同的阶段,包括听写准备、主动听写支持和听写后分析。在预测阶段,法学硕士可以分析临床数据并提供每个病例的上下文感知摘要,建议相关的教育资源,并根据其教育价值对病例进行分类。在主动听写阶段,法学硕士可以通过鉴别诊断支持、完整性指导、分类模式辅助、结构化后续指导、嵌入式教育资源等流程提供实时教育支持。在听写后阶段,法学硕士可以用来分析实习生和主治医生报告之间的差异,确定需要改进的领域,提供有针对性的教育建议,跟踪实习生的表现,并分析实习生遇到的放射学实体。该框架提供了一种将法学硕士纳入放射学教育的综合方法,具有在保持临床效率的同时提高培训生学习的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Integrating LLMs into Radiology Education: An Interpretation-Centric Framework for Enhanced Learning While Supporting Workflow.

Radiology education is challenged by increasing clinical workloads, limiting trainee supervision time and hindering real-time feedback. Large language models (LLMs) can enhance radiology education by providing real-time guidance, feedback, and educational resources while supporting efficient clinical workflows. We present an interpretation-centric framework for integrating LLMs into radiology education subdivided into distinct phases spanning pre-dictation preparation, active dictation support, and post-dictation analysis. In the pre-dictation phase, LLMs can analyze clinical data and provide context-aware summaries of each case, suggest relevant educational resources, and triage cases based on their educational value. In the active dictation phase, LLMs can provide real-time educational support through processes such as differential diagnosis support, completeness guidance, classification schema assistance, structured follow-up guidance, and embedded educational resources. In the post-dictation phase, LLMs can be used to analyze discrepancies between trainee and attending reports, identify areas for improvement, provide targeted educational recommendations, track trainee performance over time, and analyze the radiologic entities that trainees encounter. This framework offers a comprehensive approach to integrating LLMs into radiology education, with the potential to enhance trainee learning while preserving clinical efficiency.

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