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CBS融入传统教学模式在武汉市某医院口腔住院医师规范化培训中的应用

Medicine and Society(2021)

Cited 3|Views31
Abstract
目的:探索病例导入式教学法(CBS)融入传统教学模式在口腔住院医师规范化培训中的应用效果,为提升口腔住院医师规范化培训质量提供参考.方法:将2017年7月-2019年7月武汉市某医院120名参加口腔住院医师规范化培训的学员随机分为对照组(n=60)和实验组(n=60),对照组采用传统教学模式,实验组在此基础上融入CBS教学.通过理论考试、口腔临床技能考核、期末总评成绩、主观评价的方式进行教学效果综合评估.结果:实验组学员和对照组学员的理论考试成绩分别为(85.69±2.31)分、(79.33±3.30)分,口腔临床技能考核成绩分别为(87.8±5.85)分、(75.52±6.22)分,期末总评平均成绩分别为(86.19±1.82)分、(78.20±1.14)分,实验组学员在此3个方面分数均明显高于对照组(P<0.05).带教老师对实验组学员总体评价高于对照组,实验组学员对CBS融入传统教学模式的方法和效果高度赞同和满意.结论:CBS融入传统教学模式能显著提高教学效果,激发学员学习的兴趣和主动性,有利于口腔规培学员掌握理论知识和临床技能,值得在口腔住院医师规范化培训中推广应用.
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