Development and Validation of a Machine Learning-Based Decision Support Tool for Residency Applicant Screening and Review. (November 2021)
- Record Type:
- Journal Article
- Title:
- Development and Validation of a Machine Learning-Based Decision Support Tool for Residency Applicant Screening and Review. (November 2021)
- Main Title:
- Development and Validation of a Machine Learning-Based Decision Support Tool for Residency Applicant Screening and Review
- Authors:
- Burk-Rafel, Jesse
Reinstein, Ilan
Feng, James
Kim, Moosun Brad
Miller, Louis H.
Cocks, Patrick M.
Marin, Marina
Aphinyanaphongs, Yindalon - Abstract:
- Abstract : Purpose: Residency programs face overwhelming numbers of residency applications, limiting holistic review. Artificial intelligence techniques have been proposed to address this challenge but have not been created. Here, a multidisciplinary team sought to develop and validate a machine learning (ML)-based decision support tool (DST) for residency applicant screening and review. Method: Categorical applicant data from the 2018, 2019, and 2020 residency application cycles (n = 8, 243 applicants) at one large internal medicine residency program were downloaded from the Electronic Residency Application Service and linked to the outcome measure: interview invitation by human reviewers (n = 1, 235 invites). An ML model using gradient boosting was designed using training data (80% of applicants) with over 60 applicant features (e.g., demographics, experiences, academic metrics). Model performance was validated on held-out data (20% of applicants). Sensitivity analysis was conducted without United States Medical Licensing Examination (USMLE) scores. An interactive DST incorporating the ML model was designed and deployed that provided applicant- and cohort-level visualizations. Results: The ML model areas under the receiver operating characteristic and precision recall curves were 0.95 and 0.76, respectively; these changed to 0.94 and 0.72, respectively, with removal of USMLE scores. Applicants' medical school information was an important driver of predictions—which hadAbstract : Purpose: Residency programs face overwhelming numbers of residency applications, limiting holistic review. Artificial intelligence techniques have been proposed to address this challenge but have not been created. Here, a multidisciplinary team sought to develop and validate a machine learning (ML)-based decision support tool (DST) for residency applicant screening and review. Method: Categorical applicant data from the 2018, 2019, and 2020 residency application cycles (n = 8, 243 applicants) at one large internal medicine residency program were downloaded from the Electronic Residency Application Service and linked to the outcome measure: interview invitation by human reviewers (n = 1, 235 invites). An ML model using gradient boosting was designed using training data (80% of applicants) with over 60 applicant features (e.g., demographics, experiences, academic metrics). Model performance was validated on held-out data (20% of applicants). Sensitivity analysis was conducted without United States Medical Licensing Examination (USMLE) scores. An interactive DST incorporating the ML model was designed and deployed that provided applicant- and cohort-level visualizations. Results: The ML model areas under the receiver operating characteristic and precision recall curves were 0.95 and 0.76, respectively; these changed to 0.94 and 0.72, respectively, with removal of USMLE scores. Applicants' medical school information was an important driver of predictions—which had face validity based on the local selection process—but numerous predictors contributed. Program directors used the DST in the 2021 application cycle to select 20 applicants for interview that had been initially screened out during human review. Conclusions: The authors developed and validated an ML algorithm for predicting residency interview offers from numerous application elements with high performance—even when USMLE scores were removed. Model deployment in a DST highlighted its potential for screening candidates and helped quantify and mitigate biases existing in the selection process. Further work will incorporate unstructured textual data through natural language processing methods. Abstract : Supplemental Digital Content is available in the text. … (more)
- Is Part Of:
- Academic medicine. Volume 96(2021)Supplement 11
- Journal:
- Academic medicine
- Issue:
- Volume 96(2021)Supplement 11
- Issue Display:
- Volume 96, Issue 11 (2021)
- Year:
- 2021
- Volume:
- 96
- Issue:
- 11
- Issue Sort Value:
- 2021-0096-0011-0000
- Page Start:
- Page End:
- Publication Date:
- 2021-11
- Subjects:
- Medical education -- Periodicals
Medical policy -- Periodicals
Medical personnel -- Periodicals
Periodicals
610.711 - Journal URLs:
- http://gateway.ovid.com/ovidweb.cgi?T=JS&MODE=ovid&PAGE=toc&D=ovft&AN=00001888-000000000-00000 ↗
http://www.academicmedicine.org ↗
http://www.academicmedicine.org/contents-by-date.0.shtml ↗
http://journals.lww.com ↗ - DOI:
- 10.1097/ACM.0000000000004317 ↗
- Languages:
- English
- ISSNs:
- 1040-2446
- Deposit Type:
- Legaldeposit
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- Available online (eLD content is only available in our Reading Rooms) ↗
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