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Modeling relationships between traditional preadmission measures and clinical skills performance on a medical licensure examination

机译:在医疗许可检查中模拟传统的入院前措施与临床技能表现之间的关系

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Medical schools employ a variety of preadmission measures to select students most likely to succeed in the program. The Medical College Admission Test (MCAT) and the undergraduate college grade point average (uGPA) are two academic measures typically used to select students in medical school. The assumption that presently used preadmission measures can predict clinical skill performance on a medical licensure examination was evaluated within a validity argument framework (Kane 1992). A hierarchical generalized linear model tested relationships between the log-odds of failing a high-stakes medical licensure performance examination and matriculant academic and non-academic preadmission measures, controlling for student-and school-variables. Data includes 3,189 matriculants from 22 osteopathic medical schools tested in 2009–2010. Unconditional unit-specific model expected average log-odds of failing the examination across medical schools is −3.05 (se = 0.11) or 5%. Student-level estimated coefficients for MCAT Verbal Reasoning scores (0.03), Physical Sciences scores (0.05), Biological Sciences scores (0.04), uGPAscience (0.07), and uGPAnon-science (0.26) lacked association with the log-odds of failing the COMLEX-USA Level 2-PE, controlling for all other predictors in the model. Evidence from this study shows that present preadmission measures of academic ability are not related to later clinical skill performance. Given that clinical skill performance is an important part of medical practice, selection measures should be developed to identify students who will be successful in communication and be able to demonstrate the ability to systematically collect a medical history, perform a physical examination, and synthesize this information to diagnose and manage patient conditions.
机译:医学院采用各种预录取措施来选择最有可能在该计划中获得成功的学生。医学院入学考试(MCAT)和大学本科平均分(uGPA)是通常用于选择医学院校学生的两种学术手段。在有效性论证框架内评估了目前使用的入院前措施可以预测医疗执照考试中临床技能表现的假设(Kane 1992)。分层广义线性模型测试了高风险医疗执照成绩考试不及格的对数与严格的学术和非学术预录取措施之间的关系,从而控制了学生和学校的变量。数据包括2009年至2010年接受测试的22所骨病医学院的3189名预科生。跨医学院的无条件特定单位模型期望考试的平均对数几率为-3.05(se = 0.11)或5%。学生级别的MCAT言语推理得分(0.03),物理科学得分(0.05),生物科学得分(0.04),uGPA science (0.07)和uGPA non-science < / sub>(0.26)与COMLEX-USA Level 2-PE失败的对数奇数缺乏关联,从而控制了模型中的所有其他预测变量。这项研究的证据表明,目前的学术能力预录入措施与以后的临床技能表现无关。鉴于临床技能表现是医学实践的重要组成部分,应制定选择措施以识别能够成功沟通并能够系统地收集病史,进行身体检查并综合这些信息的学生诊断和管理患者状况。

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