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

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 as...

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Veröffentlicht in:Advances in health sciences education : theory and practice 2012-08, Vol.17 (3), p.403-417
Hauptverfasser: Roberts, William L., Pugliano, Gina, Langenau, Erik, Boulet, John R.
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container_title Advances in health sciences education : theory and practice
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creator Roberts, William L.
Pugliano, Gina
Langenau, Erik
Boulet, John R.
description 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), uGPA science (0.07), and uGPA non-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.
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Student-level estimated coefficients for MCAT Verbal Reasoning scores (0.03), Physical Sciences scores (0.05), Biological Sciences scores (0.04), uGPA science (0.07), and uGPA non-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. 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subjects Academic Ability
Admission Criteria
Adult
Association
Biological Sciences
Clinical Competence - standards
Clinical Experience
College Admission
Communication Skills
Education
Evidence
Female
Generalized linear models
Grade Point Average
Humans
Licenses
Licensing examinations
Licensing Examinations (Professions)
Licensure, Medical
Male
Measures (Individuals)
Medical College Admission Test
Medical Education
Medical Evaluation
Medical Schools
Medical Students
Middle Aged
Models, Theoretical
Physical Examinations
Physical Sciences
School Admission Criteria
Schools, Medical
Sciences
Students
United States
Young Adult
title Modeling relationships between traditional preadmission measures and clinical skills performance on a medical licensure examination
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