Improving the selection of family medicine residents through development of multi-dimensional policy models

Barnett R. Parker, Bron D. Skinner
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引用次数: 5

Abstract

The annual cost of training a single family medicine resident may now exceed $50,000. This, together with the fact that normally only a small fraction of those applying for family medicine residency is selected for admission, creates a decision problem of enormous import to affected institutions. Despite these considerations, the applicant evaluation and selection process remains relatively subjective, with results often disappointing. In the current paper, a preference-based approach is proposed that first models the evaluation/selection process on the basis of well-defined cognitive and noncognitive criteria. It is suggested that validation of this model be based on future performance levels of both the accepted and rejected cohorts during and following their residencies. Discrepancies between future success levels and predicted outcomes may then be translated into appropriate control actions designed to: (1) improve the definition/measurement of selection criteria; (2) enhance the evaluation/selection policies and decisions of the admissions committee; and (3) better inform potential applicants of the department's program and selection philosophies. The approach is applied to two recent, accepted cohorts of the University of North Carolina Department of Family Medicine. Preliminary results indicate that the procedure is capable of improving the in-residency success levels of selected applicants, and that these levels can be better predicted than when no formal, i.e., analytic, process is followed.

通过多维度政策模型的开发,改善家庭医学住院医师的选择
培训一名家庭医学住院医师的年费用现在可能超过5万美元。这一点,再加上通常只有一小部分申请家庭医学住院医师的人被选中入院,对受影响的机构造成了一个极其重要的决策问题。尽管有这些考虑,申请人的评估和选择过程仍然相对主观,结果往往令人失望。本文提出了一种基于偏好的方法,该方法首先在定义明确的认知和非认知标准的基础上对评估/选择过程进行建模。建议对该模型的验证应基于住院期间和之后接受和拒绝队列的未来表现水平。未来成功水平与预测结果之间的差异可以转化为适当的控制行动,旨在:(1)改进选择标准的定义/测量;(2)加强招生委员会的评估/选拔政策和决定;(3)更好地告知潜在申请人该部门的项目和选择理念。该方法被应用于最近被接受的北卡罗来纳大学家庭医学系的两个队列。初步结果表明,该程序能够提高选定申请人的住院成功率,并且这些成功率比不采用正式程序(即分析程序)时可以更好地预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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