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Impact of preadmission variables on USMLE step 1 and step 2 performance

机译:预录取变量对USMLE步骤1和步骤2性能的影响

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摘要

Purpose To examine the predictive ability of preadmission variables on United States Medical Licensing Examinations (USMLE) step 1 and step 2 performance, incorporating the use of a neural network model. Method Preadmission data were collected on matriculants from 1998 to 2004. Linear regression analysis was first used to identify predictors of performance on step 1 and step 2. A generalized regression neural network (GRNN) as well as a feed forward neural network (FFNN) was then developed in an effort to more accurately predict step 1 and step 2 scores from these preadmission data. Results Statistically significant predictors for step 1 and step 2 included science grade point average (SGPA), the biologic science (BS) section of the Medical College Admissions Test (MCAT), college selectivity, race, and age of the applicant. Neural networks were found to predict a significant portion of the variance, and the FFNN demonstrated some superiority over that obtained with linear regression models as well as the GRNN. Conclusions The results have implications that could impact the selection of applicants to medical school and the neural networks that we developed could be used in a prospective manner.
机译:目的通过结合使用神经网络模型,检查入学前变量对美国医学许可考试(USMLE)步骤1和步骤2表现的预测能力。方法收集1998年至2004年的预录取数据,首先使用线性回归分析来确定步骤1和步骤2的绩效预测指标。使用广义回归神经网络(GRNN)和前馈神经网络(FFNN)。然后努力发展,以便根据这些预录取数据更准确地预测步骤1和步骤2的分数。结果第1步和第2步的统计显着性预测指标包括科学平均成绩(SGPA),医学院入学考试(MCAT)的生物科学(BS)部分,大学的选择性,种族和申请人的年龄。发现神经网络可以预测很大一部分方差,而FFNN表现出优于线性回归模型和GRNN的优势。结论结果的影响可能会影响医学院校申请人的选择,而我们开发的神经网络可能会以预期的方式使用。

著录项

  • 来源
    《Advances in Health Sciences Education》 |2009年第1期|69-78|共10页
  • 作者单位

    Department of Medicine The University of Toledo College of Medicine Health Science Campus Mail Stop 1186 3000 Arlington Avenue Toledo OH 43614-2598 USA;

    Department of Medicine The University of Toledo College of Medicine Health Science Campus Mail Stop 1186 3000 Arlington Avenue Toledo OH 43614-2598 USA;

    Department of Medicine The University of Toledo College of Medicine Health Science Campus Mail Stop 1186 3000 Arlington Avenue Toledo OH 43614-2598 USA;

    College of Medicine The University of Toledo Toledo OH USA;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Medical school admissions; Neural network; USMLE;

    机译:医学院入学;神经网络;USMLE;

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