Hege Inga, Kononowicz Andrzej A, Adler Martin
Institute for Medical Education, University Hospital of LMU Munich, Muenchen, Germany.
Department of Bioinformatics and Telemedicine, Jagiellonian University Medical College, Krakow, Poland.
JMIR Med Educ. 2017 Nov 2;3(2):e21. doi: 10.2196/mededu.8100.
Clinical reasoning is a fundamental process medical students have to learn during and after medical school. Virtual patients (VP) are a technology-enhanced learning method to teach clinical reasoning. However, VP systems do not exploit their full potential concerning the clinical reasoning process; for example, most systems focus on the outcome and less on the process of clinical reasoning.
Keeping our concept grounded in a former qualitative study, we aimed to design and implement a tool to enhance VPs with activities and feedback, which specifically foster the acquisition of clinical reasoning skills.
We designed the tool by translating elements of a conceptual clinical reasoning learning framework into software requirements. The resulting clinical reasoning tool enables learners to build their patient's illness script as a concept map when they are working on a VP scenario. The student's map is compared with the experts' reasoning at each stage of the VP, which is technically enabled by using Medical Subject Headings, which is a comprehensive controlled vocabulary published by the US National Library of Medicine. The tool is implemented using Web technologies, has an open architecture that enables its integration into various systems through an open application program interface, and is available under a Massachusetts Institute of Technology license.
We conducted usability tests following a think-aloud protocol and a pilot field study with maps created by 64 medical students. The results show that learners interact with the tool but create less nodes and connections in the concept map than an expert. Further research and usability tests are required to analyze the reasons.
The presented tool is a versatile, systematically developed software component that specifically supports the clinical reasoning skills acquisition. It can be plugged into VP systems or used as stand-alone software in other teaching scenarios. The modular design allows an extension with new feedback mechanisms and learning analytics algorithms.
临床推理是医学生在医学院期间及毕业后必须学习的基本过程。虚拟患者(VP)是一种用于教授临床推理的技术增强型学习方法。然而,VP系统在临床推理过程方面尚未充分发挥其潜力;例如,大多数系统侧重于结果,而较少关注临床推理的过程。
基于之前的一项定性研究,我们旨在设计并实现一种工具,通过活动和反馈来增强虚拟患者,特别促进临床推理技能的习得。
我们通过将概念性临床推理学习框架的要素转化为软件需求来设计该工具。由此产生的临床推理工具使学习者在处理VP场景时能够将患者的病情脚本构建为概念图。在VP的每个阶段,将学生的概念图与专家的推理进行比较,这在技术上通过使用医学主题词表得以实现,医学主题词表是美国国立医学图书馆发布的一个综合受控词汇表。该工具使用网络技术实现,具有开放架构,能够通过开放应用程序接口集成到各种系统中,并根据麻省理工学院许可提供。
我们按照出声思维协议进行了可用性测试,并对64名医学生创建的概念图进行了试点实地研究。结果表明,学习者与该工具进行了交互,但在概念图中创建的节点和连接比专家少。需要进一步的研究和可用性测试来分析原因。
所展示的工具是一个通用的、系统开发的软件组件,特别支持临床推理技能的习得。它可以插入到VP系统中,或在其他教学场景中用作独立软件。模块化设计允许通过新的反馈机制和学习分析算法进行扩展。