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医学教育中的教育数据挖掘:一种五级方法。

Educational data mining in medical education: A five-level approach.

作者信息

Khoshgoftar Zohreh, Babaee Maryam, Rouzbahani Arian K, Kalantarion Masomeh

机构信息

Department of Medical Education, School of Medical Education and Learning Technologies, Shahid Beheshti University of Medical Sciences, Tehran, Iran.

Department of Educational Technology, Faculty of Humanities, Tarbiat Modares University, Tehran, Iran.

出版信息

J Educ Health Promot. 2025 Jan 31;14:24. doi: 10.4103/jehp.jehp_1339_23. eCollection 2025.

Abstract

The healthcare industry in each country has one of the most important and sophisticated educational systems that produces and stores a large amount of educational data daily. Data generated by the interaction of managers, patients, instructors, students, employees, and all those who are involved with educational systems can revolutionize medical education through analysis and prediction of the hidden patterns of knowledge, skills, and attitude that have been neglected in this massive amount of data. This study aims to review data mining in medical education and provide a comprehensive picture of it in different educational dimensions. In this study, we performed a literature review from 2010 to 2022 in IEEE, SSCI, Elsevier, CIVILICA, and Science Direct. Two hundred and fifty articles were identified. In total, 34 documents were included in the study. Interned articles' methodological quality was assessed using the five-step method proposed by Carnwell and Daly. This method is used for summarizing texts, summarizing points of view, and finally providing a line of guidance for future research. A five-level taxonomy was developed in this study which includes educational policy and management, instructional designing and planning, educational technologies, learning content, and learning outcomes. To increase the efficiency of data mining techniques at each level, some useful recommendations were presented in more detail. Educational data mining (EDM) as a new methodology can lead to better policy-making, more proper planning, and more effective decisions. EDM by extracting data makes it easier to describe and predict educational trends, which can guarantee the success of medical education more than before.

摘要

每个国家的医疗行业都拥有最重要且最复杂的教育体系之一,每天都会产生和存储大量的教育数据。由管理人员、患者、教师、学生、员工以及所有参与教育系统的人员之间的互动所产生的数据,通过分析和预测在这大量数据中被忽视的知识、技能和态度的隐藏模式,能够彻底改变医学教育。本研究旨在回顾医学教育中的数据挖掘,并在不同教育维度上提供其全面图景。在本研究中,我们在IEEE、SSCI、爱思唯尔、CIVILICA和科学Direct数据库中进行了2010年至2022年的文献综述。共识别出250篇文章。总共34篇文献被纳入本研究。使用Carnwell和Daly提出的五步方法评估所纳入文章的方法学质量。该方法用于总结文本、概括观点,并最终为未来研究提供一条指导方针。本研究中开发了一个五级分类法,包括教育政策与管理、教学设计与规划、教育技术、学习内容和学习成果。为提高每个层面数据挖掘技术的效率,更详细地提出了一些有用的建议。教育数据挖掘(EDM)作为一种新方法可以带来更好的政策制定、更恰当的规划和更有效的决策。通过提取数据,EDM使得描述和预测教育趋势变得更容易,这比以往更能保证医学教育的成功。

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