2022
DOI: 10.1177/01945998221082535
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Deep Learning for Predictive Analysis of Pediatric Otolaryngology Personal Statements: A Pilot Study

Abstract: Objective The personal statement is often an underutilized aspect of pediatric otolaryngology fellowship applications. In this pilot study, we use deep learning language models to cluster personal statements and elucidate their relationship to applicant rank position and postfellowship research output. Study Design Retrospective cohort. Setting Single pediatric tertiary care center. Methods Data and personal statements from 115 applicants to our fellowship program were retrieved from San Francisco Match. BERT … Show more

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