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一种减少偏差并提高住院医师面试者质量和多样性的新算法。

A novel algorithm to reduce bias and improve the quality and diversity of residency interviewees.

作者信息

Lau Chrystal O, Johnson Adam B, Nolder Abby R, King Deanne, Strub Graham M

机构信息

Department of Otolaryngology-Head and Neck Surgery University of Arkansas for Medical Sciences Little Rock Arkansas USA.

Arkansas Children's Hospital Little Rock Arkansas USA.

出版信息

Laryngoscope Investig Otolaryngol. 2022 Sep 13;7(5):1367-1375. doi: 10.1002/lio2.908. eCollection 2022 Oct.

Abstract

OBJECTIVE

Improve the quality and diversity of candidates invited for the Otolaryngology-Head and Neck Surgery residency match by reducing geographical and inter-rater bias with a novel geographic distribution algorithm.

METHODS

Interview applicants were divided into geographic regions and assigned to reviewers. Each reviewer selected by force-ranking a pre-determined number of applicants to invite for interviews based on the percentage of applications received for each region. Our novel geographic distribution algorithm was then applied to maintain the geographic representation and underrepresented minority status of invited applicants to match the applicant pool.

RESULTS

Analysis of previous interview selection methods demonstrated a statistically significant overrepresentation of local applicants invited for interviews. In 2022, 324 domestic applications were received for the otolaryngology match, which were divided into six geographic regions. There was no significant difference in USMLE scores between regions. The implementation of our distribution algorithm during applicant selection eliminated local overrepresentation in the invited pool of applicants and maintained the representation of underrepresented minority applicants. Following the match, reviewers indicated that implementation of the geographic distribution algorithm was simple and improved the quality and diversity of the group of interviewed applicants.

CONCLUSION

Traditional methods of scoring and inviting otolaryngology residency applicants can be confounded by regional and inter-rater biases. Employing a geographic distribution algorithm improves the quality and diversity of invited applicants, eliminates bias, and maintains the representation of underrepresented minority applicants.

摘要

目的

通过一种新颖的地理分布算法减少地域和评分者间的偏差,提高受邀参加耳鼻咽喉-头颈外科住院医师匹配项目的候选人的质量和多样性。

方法

将面试申请者划分为不同地理区域,并分配给评审人员。每位评审人员根据每个区域收到的申请比例,通过强制排名预先确定数量的申请者来邀请参加面试。然后应用我们新颖的地理分布算法来维持受邀申请者的地理代表性以及未被充分代表的少数群体地位,使其与申请者库相匹配。

结果

对先前面试选拔方法的分析表明,受邀参加面试的本地申请者在统计学上存在显著的过度代表性。2022年,耳鼻咽喉科匹配项目共收到324份国内申请,这些申请被划分为六个地理区域。各区域之间的美国医师执照考试(USMLE)成绩没有显著差异。在申请者选拔过程中实施我们的分布算法,消除了受邀申请者群体中的本地过度代表性,并维持了未被充分代表的少数群体申请者的代表性。匹配结束后,评审人员表示地理分布算法的实施简单易行,提高了受邀面试申请者群体的质量和多样性。

结论

传统的耳鼻咽喉科住院医师申请者评分和邀请方法可能会受到区域和评分者间偏差的干扰。采用地理分布算法可提高受邀申请者的质量和多样性,消除偏差,并维持未被充分代表的少数群体申请者的代表性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/16ab/9575099/ad13c256512f/LIO2-7-1367-g005.jpg

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