基于CiteSpace可视化分析软件的住院医师规范化培训领域研究热点与前沿趋势研究
Chinese Journal of Medical Education Research(2022)
Abstract
目的:通过对2008年至2018年住院医师规范化培训领域进行可视化分析,探究该领域研究热点及前沿趋势,进而为我国住院医师规范化培训领域的研究提供方向和参考。方法:以CiteSpace可视化分析软件为研究工具,对Web of Science核心数据库检索出的1 120篇住院医师规范化培训领域文献进行统计分析。结果:住院医师规范化培训领域研究力量主要集中在美国,论文产量共有697篇,占10年来发文总量的62.23%;高产作者Gillespie C共发表8篇文献,高被引作者Aggarwal R论文被引54次;高被引期刊
Acad Med的被引频次居于首位,10年间被引次数达470次;高频关键词依次为resident、education、performance等,突变词包括system、older adult、operating room等。
结论:住院医师规范化培训领域近10年研究热点涵盖住院医师教学、住院医师临床能力评估、标准化病人等,前沿趋势集中于住院医师自我评价系统、外科手术培训、住院医师职业核心能力等方面。
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Key words
Standardized residency training,CiteSpace visual analysis software,Medical education,Research hotspots,Frontier trend
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