An Objective Structured Practical Examination (OSPE) is an effective and robust, but resource-intensive, means of evaluating anatomical knowledge. Since most OSPEs employ short answer or fill-in-the-blank style questions, the format requires many people familiar with the content to mark the exams. However, the increasing prevalence of online delivery for anatomy and physiology courses could result in students losing the OSPE practice that they would receive in face-to-face learning sessions. The purpose of this study was to test the accuracy of Decision Trees (DTs) in marking OSPE questions as a potential first step to creating an intelligent, online OSPE tutoring system. The study used the results of the winter 2020 semester final OSPE from McMaster University's anatomy and physiology course in the Faculty of Health Sciences (HTHSCI 2FF3/2LL3/1D06) as the data set. Ninety percent of the data set was used in a 10-fold validation algorithm to train a DT for each of the 54 questions. Each DT was comprised of unique words that appeared in correct, student-written answers. The remaining 10% of the data set was marked by the generated DTs. When the answers marked by the DT were compared to the answers marked by staff and faculty, the DT achieved an average accuracy of 94.49% across all 54 questions. This suggests that machine learning algorithms such as DTs are a highly effective option for OSPE grading and are suitable for the development of an intelligent, online OSPE tutoring system.
翻译:客观、结构化实用考试(OSPE)是评估解剖知识的有效和稳健但资源密集的手段。由于大多数OSPE采用简短的回答或填充空白式风格问题,格式要求许多人熟悉考试内容。然而,在线提供解剖和生理课程的日益普及可能导致学生失去在面对面学习课程中将接受的OSPE做法。这项研究的目的是测试OSPE问题标识决定树(DTs)的准确性,作为创建智能、在线OSPE辅导系统的第一步。这项研究使用了麦克马斯特大学2020年冬季学期最后一学期解剖和生理课程的结果,在卫生科学系(HTHSCI 2FF3//2LLLL3/1D06)中,这可能导致学生失去在面对面学习课程中将接受的OSPE做法。90%的数据集用于对54个问题中的每个问题进行DT的校验算。每个DT都包含一个独特的词句子,在正确的、学生-DTPPE的正确解答中显示54个阶段的最后解算结果。由高级DTF解析的系统标有10个标志,这是整个DTF解析的系统中的平均解答。通过一个标记的系统,显示的平均解析的10个。