Admissions to MD-PhD programs: how well do application metrics predict short- or long-term physician-scientist outcomes?

IF 6.3 1区 医学 Q1 MEDICINE, RESEARCH & EXPERIMENTAL
Lawrence F Brass, Maurizio Tomaiuolo, Aislinn Wallace, Myles H Akabas
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引用次数: 0

Abstract

MD-PhD programs prepare physicians for research-focused careers. The challenge for admissions committees is to select from among their applicants those who will achieve this goal, becoming leaders in academic medicine and biomedical research. Although holistic practices are encouraged, the temptation remains to use metrics such as grade point average, Medical College Admission Test scores, and postbaccalaureate gap length, combined with race and ethnicity, age at college graduation, and sex to select whom to interview and admit. Here, we asked whether any of these metrics predict performance in training or career paths after graduation. Data were drawn from the National MD-PhD Program Outcomes Study with information on 4,659 alumni and 593 MD-PhD graduates of the Albert Einstein College of Medicine and the University of Pennsylvania. The Penn-Einstein dataset included admissions committee summative scores, attrition, and the number and impact of PhD publications. Output metrics included time to degree, eventual employment in workplaces consistent with MD-PhD training goals, and self-reported research effort. Data were analyzed using machine learning and multivariate linear regression. The results show that none of the applicant metrics, individually or collectively, predicted in-program performance, future research effort, or eventual workplace choices even when comparisons were limited to those in the top and bottom quintiles.

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来源期刊
JCI insight
JCI insight Medicine-General Medicine
CiteScore
13.70
自引率
1.20%
发文量
543
审稿时长
6 weeks
期刊介绍: JCI Insight is a Gold Open Access journal with a 2022 Impact Factor of 8.0. It publishes high-quality studies in various biomedical specialties, such as autoimmunity, gastroenterology, immunology, metabolism, nephrology, neuroscience, oncology, pulmonology, and vascular biology. The journal focuses on clinically relevant basic and translational research that contributes to the understanding of disease biology and treatment. JCI Insight is self-published by the American Society for Clinical Investigation (ASCI), a nonprofit honor organization of physician-scientists founded in 1908, and it helps fulfill the ASCI's mission to advance medical science through the publication of clinically relevant research reports.
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