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Introducing a model for optimal design of sequential objective structured clinical examinations

机译:介绍用于顺序目标结构化临床检查的最佳设计的模型

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摘要

In a sequential OSCE which has been suggested to reduce testing costs, candidates take a short screening test and who fail the test, are asked to take the full OSCE. In order to introduce an effective and accurate sequential design, we developed a model for designing and evaluating screening OSCEs. Based on two datasets from a 10-station pre-internship OSCE and considering three factors, namely, the number of stations, the criteria for selecting the stations, and the cut-off score, several hypothetical tests were proposed. To investigate their accuracy, the positive predictive value (PPV), the pass rate, and the negative predictive value (NPV) were calculated. Also, a "desirable" composite outcome was defined as PPV = 100 %, pass rate >= 50 %, and NPV >= 25 %. Univariate and multiple logistic regression analyses were conducted to estimate the effects of independent factors on the occurrence of the desirable outcome. In half of the screening tests no false positive result was detected. Most of the screening OSCEs had acceptable levels of pass rate and NPV. Considering the desirable composite outcome 20 screening OSCEs could have successfully predicted the results of the corresponding full OSCE. The multiple regression analysis indicated significant contributions for the selection criteria (p values = 0.019) and the cut-off score (p values = 0.017). In order to have efficient screening OSCEs with the lowest probability of the error rate, careful selection of stations with high values of discrimination or item total correlation, and use of a relatively stringent cut-off score should be considered.
机译:在建议减少测试成本的连续OSCE中,应试者应参加简短筛选测试,而未通过测试的应征者应参加完整的OSCE。为了引入有效和准确的顺序设计,我们开发了一种用于设计和评估筛选OSCE的模型。基于来自10个站点的实习前OSCE的两个数据集,并考虑站点数量,站点选择标准和截止分数三个因素,提出了一些假设检验。为了研究其准确性,计算了阳性预测值(PPV),通过率和阴性预测值(NPV)。同样,将“理想的”综合结果定义为PPV = 100%,合格率> = 50%,NPV> = 25%。进行了单因素和多元逻辑回归分析,以评估独立因素对预期结果发生的影响。在一半的筛选测试中,未检测到假阳性结果。大多数筛选OSCE的合格率和NPV都可以接受。考虑到理想的综合结果,筛选20个OSCE可以成功预测相应的完整OSCE的结果。多元回归分析表明,对于选择标准(p值= 0.019)和临界值(p值= 0.017)有重要贡献。为了以最低的错误率进行有效的OSCE筛查,应考虑选择具有较高辨别力或项目总体相关性的站点,并使用相对严格的截止得分。

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