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Visual analytics in healthcare education: exploring novel ways to analyze and represent big data in undergraduate medical education

机译:卫生保健教育中的可视化分析:探索在本科医学教育中分析和表示大数据的新颖方法

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摘要

>Introduction. The big data present in the medical curriculum that informs undergraduate medical education is beyond human abilities to perceive and analyze. The medical curriculum is the main tool used by teachers and directors to plan, design, and deliver teaching and assessment activities and student evaluations in medical education in a continuous effort to improve it. Big data remains largely unexploited for medical education improvement purposes. The emerging research field of visual analytics has the advantage of combining data analysis and manipulation techniques, information and knowledge representation, and human cognitive strength to perceive and recognize visual patterns. Nevertheless, there is a lack of research on the use and benefits of visual analytics in medical education.>Methods. The present study is based on analyzing the data in the medical curriculum of an undergraduate medical program as it concerns teaching activities, assessment methods and learning outcomes in order to explore visual analytics as a tool for finding ways of representing big data from undergraduate medical education for improvement purposes. Cytoscape software was employed to build networks of the identified aspects and visualize them.>Results. After the analysis of the curriculum data, eleven aspects were identified. Further analysis and visualization of the identified aspects with Cytoscape resulted in building an abstract model of the examined data that presented three different approaches; (i) learning outcomes and teaching methods, (ii) examination and learning outcomes, and (iii) teaching methods, learning outcomes, examination results, and gap analysis.>Discussion. This study identified aspects of medical curriculum that play an important role in how medical education is conducted. The implementation of visual analytics revealed three novel ways of representing big data in the undergraduate medical education context. It appears to be a useful tool to explore such data with possible future implications on healthcare education. It also opens a new direction in medical education informatics research.
机译:>简介。医学课程中提供的可指导本科医学教育的大数据超出了人类的感知和分析能力。医学课程是教师和主任在医学教育中计划,设计和进行教学和评估活动以及学生评估的主要工具,以不断改进它。大数据仍未被充分利用,以改善医学教育。视觉分析的新兴研究领域具有将数据分析和操纵技术,信息和知识表示以及人类认知能力相结合以感知和识别视觉模式的优势。尽管如此,仍缺乏关于视觉分析在医学教育中的使用和好处的研究。>方法。本研究基于对本科医学课程医学课程中数据的分析,涉及到教学活动,评估方法和学习成果,以便探索可视化分析,将其作为一种手段来寻找表示来自本科医学教育的大数据的方法,以进行改进。 >结果。在对课程数据进行分析之后,我们确定了11个方面。使用Cytoscape对所识别方面进行进一步的分析和可视化,结果建立了所检查数据的抽象模型,该模型提供了三种不同的方法。 (i)学习成果和教学方法,(ii)考试和学习成果,以及(iii)教学方法,学习成果,考试结果和差距分析。>讨论。在医学教育的实施中起着重要作用。视觉分析的实施揭示了在本科医学教育背景下代表大数据的三种新颖方式。它似乎是探索此类数据的有用工具,可能会对医疗保健教育产生未来影响。这也为医学教育信息学研究开辟了新的方向。

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