Hafiz Naderi, Yu-Hsuen Yang, Patricia B Munroe, Steffen E Petersen, Mark Westwood, Nay Aung
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引用次数: 0
摘要
背景:数据科学技能与在医疗保健大数据时代工作的临床医生密切相关。然而,这些技能并不是常规教学内容,教育需求日益得不到满足。本教育报告介绍了为向临床医生传授数据科学知识而开设的结构化短期课程及其经验教训:方法:在伦敦的一家三甲医院开设了为期一天的入门课程。课程包括讲座,随后是使用面向对象编程语言 R 的结对编程练习。对学员的反馈意见进行了整理,并使用李克特量表对学员的回答进行了评分:共有 20 人参加了该课程。大多数学员(69%)都接受过心脏病学高等专业培训。虽然半数以上的参与者(56%)曾通过正规教学课程(如硕士学位)或在线课程接受过统计学方面的培训,但由于编程技能有限、缺乏专门的时间、培训机会和意识,他们在扩展数据科学技能方面遇到了一些障碍。短期课程结束后,学员对使用 R 进行数据分析的自信心(平均值;课程前:1.69 ± 1.0,课程后:3.2 ± 0.9,p = .0005)和对 R 功能的认识(平均值;课程前:2.1 ± 0.9,课程后:3.6 ± 0.7,p = .0001,5 点李克特量表)有了显著提高:这项概念验证研究表明,结构化短期课程可以有效地向临床医生介绍数据科学技能,并支持未来将数据科学教学纳入医学教育的教育计划。
Health data science course for clinicians: Time to bridge the skills gap?
Background: Data science skills are highly relevant for clinicians working in an era of big data in healthcare. However, these skills are not routinely taught, representing a growing unmet educational need. This education report presents a structured short course that was run to teach clinicians data science and the lessons learnt.
Methods: A 1-day introductory course was conducted within a tertiary hospital in London. It consisted of lectures followed by facilitated pair programming exercises in R, an object-oriented programming language. Feedback was collated and participant responses were graded using a Likert scale.
Results: The course was attended by 20 participants. The majority of participants (69%) were in higher speciality cardiology training. While more than half of the participants (56%) received prior training in statistics either through formal taught programmes (e.g., a Master's degree) or online courses, the participants reported several barriers to expanding their skills in data science due to limited programming skills, lack of dedicated time, training opportunities and awareness. After the short course, there was a significant increase in participants' self-rated confidence in using R for data analysis (mean response; before the course: 1.69 ± 1.0, after the course: 3.2 ± 0.9, p = .0005) and awareness of the capabilities of R (mean response; before the course: 2.1 ± 0.9, after the course: 3.6 ± 0.7, p = .0001, on a 5-point Likert scale).
Conclusion: This proof-of-concept study demonstrates that a structured short course can effectively introduce data science skills to clinicians and supports future educational initiatives to integrate data science teaching into medical education.
期刊介绍:
Perfusion is an ISI-ranked, peer-reviewed scholarly journal, which provides current information on all aspects of perfusion, oxygenation and biocompatibility and their use in modern cardiac surgery. The journal is at the forefront of international research and development and presents an appropriately multidisciplinary approach to perfusion science.