Suppr超能文献

预测外科培训中的学业表现。

Predicting academic performance in surgical training.

作者信息

Yost Michael J, Gardner Jeffery, Bell Richard McMurtry, Fann Stephen A, Lisk John R, Cheadle William G, Goldman Mitchell H, Rawn Susan, Weigelt John A, Termuhlen Paula M, Woods Randy J, Endean Erick D, Kimbrough Joy, Hulme Michael

机构信息

Department of Surgery, Medical University of South Carolina, Charleston, South Carolina.

Department of Surgery, University of South Carolina School of Medicine, Columbia, South Carolina.

出版信息

J Surg Educ. 2015 May-Jun;72(3):491-9. doi: 10.1016/j.jsurg.2014.11.013. Epub 2015 Jan 16.

Abstract

INTRODUCTION

During surgical residency, trainees are expected to master all the 6 competencies specified by the ACGME. Surgical training programs are also evaluated, in part, by the residency review committee based on the percentage of graduates of the program who successfully complete the qualifying examination and the certification examination of the American Board of Surgery in the first attempt. Many program directors (PDs) use the American Board of Surgery In-Training Examination (ABSITE) as an indicator of future performance on the qualifying examination. Failure to meet an individual program's standard may result in remediation or a delay in promotion to the next level of training. Remediation is expensive in terms of not only dollars but also resources, faculty time, and potential program disruptions. We embarked on an exploratory study to determine if residents who might be at risk for substandard performance on the ABSITE could be identified based on the individual resident's behavior and motivational characteristics. If such were possible, then PDs would have the opportunity to be proactive in developing a curriculum tailored to an individual resident, providing a greater opportunity for success in meeting the program's standards.

METHODS

Overall, 7 surgical training programs agreed to participate in this initial study and residents were recruited to voluntarily participate. Each participant completed an online assessment that characterizes an individual's behavioral style, motivators, and Acumen Index. Residents completed the assessment using a code name assigned by each individual PD or their designee. Assessments and the residents' 2013 ABSITE scores were forwarded for analysis using only the code name, thus insuring anonymity. Residents were grouped into those who took the junior examination, senior examination, and pass/fail categories. A passing score of ≥70% correct was chosen a priori. Correlations were performed using logistic regression and data were also entered into a neural network (NN) to develop a model that would explain performance based on data obtained from the TriMetrix assessments.

RESULTS

A total of 117 residents' TriMetrix and ABSITE scores were available for analysis. They were divided into 2 groups of 64 senior residents and 53 junior residents. For each group, the pass/fail criteria for the ABSITE were set at 70 and greater as passing and 69 and lower as failing. Multiple logistic regression analysis was complete for pass/fail vs the TriMetrix assessments. For the senior data group, it was found that the parameter Theoretical correlates with pass rate (p < 0.043, B = -0.513, exp(B) = 0.599), which means increasing theoretical scores yields a decreasing likelihood of passing in the examination. For the junior data, the parameter Internal Role Awareness correlated with pass/fail rate (p < 0.004, B = 0.66, exp(B) = 1.935), which means that an increasing Internal Role Awareness score increases the likelihood of a passing score. The NN was able to be trained to predict ABSITE performance with surprising accuracy for both junior and senior residents.

CONCLUSION

Behavioral, motivational, and acumen characteristics can be useful to identify residents "at risk" for substandard performance on the ABSITE. Armed with this information, PDs have the opportunity to intervene proactively to offer these residents a greater chance for success. The NN was capable of developing a model that explained performance on the examination for both the junior and the senior examinations. Subsequent testing is needed to determine if the NN is a good predictive tool for performance on this examination.

摘要

引言

在外科住院医师培训期间,学员需要掌握美国毕业后医学教育认证委员会(ACGME)规定的所有6项能力。住院医师评审委员会也会对外科培训项目进行部分评估,评估依据是该项目毕业生首次成功通过美国外科委员会资格考试和认证考试的比例。许多项目主任(PDs)将美国外科委员会住院医师培训考试(ABSITE)作为未来资格考试表现的一个指标。未能达到个别项目的标准可能会导致补救措施或延迟晋升到下一级培训。补救措施不仅在金钱方面成本高昂,而且在资源、教师时间和潜在的项目干扰方面也是如此。我们开展了一项探索性研究,以确定是否可以根据住院医师个人的行为和动机特征,识别出在ABSITE考试中可能表现不佳的住院医师。如果可行,那么项目主任将有机会积极制定适合个别住院医师的课程,为其成功达到项目标准提供更大机会。

方法

总体而言,7个外科培训项目同意参与这项初步研究,并招募住院医师自愿参与。每位参与者完成了一项在线评估,该评估对个人的行为风格、动机和敏锐指数进行了描述。住院医师使用每个项目主任或其指定人员分配的代号完成评估。仅使用代号将评估结果和住院医师2013年的ABSITE分数转发进行分析,从而确保匿名性。住院医师被分为参加初级考试、高级考试以及通过/未通过类别的人员。事先选定≥70%正确为及格分数。使用逻辑回归进行相关性分析,并将数据输入神经网络(NN)以建立一个基于从TriMetrix评估中获得的数据来解释表现的模型。

结果

共有117名住院医师的TriMetrix和ABSITE分数可供分析。他们被分为两组,64名高级住院医师和53名初级住院医师。对于每组,ABSITE的通过/未通过标准设定为70分及以上为通过,69分及以下为未通过。完成了通过/未通过与TriMetrix评估的多重逻辑回归分析。对于高级数据组,发现参数“理论”与通过率相关(p < 0.043,B = -0.513,exp(B) = 0.599),这意味着理论分数越高,考试通过的可能性越低。对于初级数据,参数“内部角色意识”与通过/未通过率相关(p < 0.004,B = 0.66,exp(B) = 1.935),这意味着内部角色意识分数越高,获得及格分数的可能性越大。神经网络能够经过训练以惊人的准确性预测初级和高级住院医师的ABSITE表现。

结论

行为、动机和敏锐特征有助于识别在ABSITE考试中可能表现不佳的住院医师。有了这些信息,项目主任有机会积极干预,为这些住院医师提供更大的成功机会。神经网络能够建立一个解释初级和高级考试表现的模型。需要进行后续测试以确定神经网络是否是该考试表现的良好预测工具。

文献检索

告别复杂PubMed语法,用中文像聊天一样搜索,搜遍4000万医学文献。AI智能推荐,让科研检索更轻松。

立即免费搜索

文件翻译

保留排版,准确专业,支持PDF/Word/PPT等文件格式,支持 12+语言互译。

免费翻译文档

深度研究

AI帮你快速写综述,25分钟生成高质量综述,智能提取关键信息,辅助科研写作。

立即免费体验