Sebastian Dewhirst, Warren J Cheung, Timothy Wood, Nora D Szabo, Jason R Frank
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As a worked example, the mean delta method was applied to a set of end-of-shift assessments completed in a large Canadian academic emergency department from July 1, 2017, to May 31, 2018, and used to examine the net effect of ASL on learners' assessment scores. A total of 3,908 assessments were completed by 99 assessors for 151 trainees, with a median (interquartile range) of 37 (12-39) completed assessments per trainee. Using cutoff values of 1.5 and 2 standard deviations, a total of 11 and 3 outlier assessors were identified, respectively. Moreover, ASL changed overall scores by more than the mean difference between years of training for nearly 1 in 4 learners. The mean delta method was able to quantify ASL and identify outlier lenient and stringent assessors. It was also used to quantify the net effect of ASL on individual trainees. 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引用次数: 0
摘要
摘要:评估员的严格与宽松(ASL)--评估员给低分或高分的倾向--对基于工作场所的评估有重大影响。在此范围内的异常值会产生不成比例的影响。然而,目前还没有任何方法可用于量化 ASL 或使用基于工作场所的评估数据识别出异常严格或宽松的评估员。作者提出了 "平均三角法"(mean delta method),将评估员给予学员的分数与学员的平均分数进行比较。这种新颖、简单的方法可用于量化 ASL 和识别离群评估员,而无需专门的统计知识或软件。作为一个工作实例,我们将均值三角法应用于 2017 年 7 月 1 日至 2018 年 5 月 31 日期间在加拿大一个大型学术急诊科完成的一组轮班结束评估,并用来检验 ASL 对学员评估分数的净影响。99 名评估员共为 151 名学员完成了 3908 次评估,每位学员完成评估的中位数(四分位数间距)为 37(12-39)次。以 1.5 和 2 个标准差为临界值,分别发现了 11 名和 3 名离群评估员。此外,每 4 名学员中就有近 1 人的 ASL 总分变化超过了培训年限之间的平均差异。均值三角法能够量化 ASL,并识别出异常宽松和严格的评估员。该方法还可用于量化 ASL 对学员个人的净影响。这种方法可用于进一步研究离群评估员,识别可能从有针对性的辅导和反馈中获益最多的评估员,以及测量评估员的倾向随时间或特定干预措施的变化。
The Mean Delta Method: Quantifying Assessor Stringency and Leniency and Identifying Outliers in Workplace-Based Assessments.
Abstract: Assessor stringency and leniency (ASL)-an assessor's tendency to award low or high scores-has a significant effect on workplace-based assessments. Outliers on this spectrum have a disproportionate effect. However, no method has been published for quantifying ASL or identifying outlier stringent or lenient assessors using workplace-based assessment data. The authors propose the mean delta method, which compares the scores that an assessor awards to trainees with those trainees' mean scores. This novel, simple method can be used to quantify ASL and identify outlier assessors without requiring specialized statistical knowledge or software. As a worked example, the mean delta method was applied to a set of end-of-shift assessments completed in a large Canadian academic emergency department from July 1, 2017, to May 31, 2018, and used to examine the net effect of ASL on learners' assessment scores. A total of 3,908 assessments were completed by 99 assessors for 151 trainees, with a median (interquartile range) of 37 (12-39) completed assessments per trainee. Using cutoff values of 1.5 and 2 standard deviations, a total of 11 and 3 outlier assessors were identified, respectively. Moreover, ASL changed overall scores by more than the mean difference between years of training for nearly 1 in 4 learners. The mean delta method was able to quantify ASL and identify outlier lenient and stringent assessors. It was also used to quantify the net effect of ASL on individual trainees. This method could be used to further study outlier assessors, to identify assessors who may benefit most from targeted coaching and feedback, and to measure changes in assessors' tendencies over time or with specific intervention.
期刊介绍:
Academic Medicine, the official peer-reviewed journal of the Association of American Medical Colleges, acts as an international forum for exchanging ideas, information, and strategies to address the significant challenges in academic medicine. The journal covers areas such as research, education, clinical care, community collaboration, and leadership, with a commitment to serving the public interest.