学习者对主治医师评价的自然语言处理以识别专业失误。

IF 2.2 3区 医学 Q2 HEALTH CARE SCIENCES & SERVICES Evaluation & the Health Professions Pub Date : 2023-09-01 DOI:10.1177/01632787231158128
Janae K Heath, Caitlin B Clancy, William Pluta, Gary E Weissman, Ursula Anderson, Jennifer R Kogan, C Jessica Dine, Judy A Shea
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引用次数: 0

摘要

不专业的教师行为对学员的福祉产生负面影响,但很少通过既定的报告系统进行报告。对叙述性教师评价的手工审查为识别不专业的行为提供了额外的途径,但这需要耗费时间和资源,因此对于识别和纠正具有专业精神的教师来说价值有限。自然语言处理(NLP)技术可以提供一种机制来简化人工审查过程,以识别教师的专业素养。在这项回顾性队列研究中,15432名医学实习生对医学院的叙事评价,我们通过对教师评价文本的自动分析来识别专业失误。我们使用多种NLP方法来开发和验证几种分类模型,这些模型主要基于阳性预测值(PPV)进行评估,其次通过它们的校准进行评估。使用情感分析(量化文本的主观性)结合关键词(使用集成技术)的nlp模型总体上表现最佳,PPV为49% (CI 38%-59%)。这些发现强调了如何使用NLP来筛选教师的叙述性评估,以识别不专业的教师行为。将NLP整合到教师评审工作流程中,可以对评论进行更集中的手动评审,提供一种补充机制来识别教师的专业失误。
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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Natural Language Processing of Learners' Evaluations of Attendings to Identify Professionalism Lapses.

Unprofessional faculty behaviors negatively impact the well-being of trainees yet are infrequently reported through established reporting systems. Manual review of narrative faculty evaluations provides an additional avenue for identifying unprofessional behavior but is time- and resource-intensive, and therefore of limited value for identifying and remediating faculty with professionalism concerns. Natural language processing (NLP) techniques may provide a mechanism for streamlining manual review processes to identify faculty professionalism lapses. In this retrospective cohort study of 15,432 narrative evaluations of medical faculty by medical trainees, we identified professionalism lapses using automated analysis of the text of faculty evaluations. We used multiple NLP approaches to develop and validate several classification models, which were evaluated primarily based on the positive predictive value (PPV) and secondarily by their calibration. A NLP-model using sentiment analysis (quantifying subjectivity of the text) in combination with key words (using the ensemble technique) had the best performance overall with a PPV of 49% (CI 38%-59%). These findings highlight how NLP can be used to screen narrative evaluations of faculty to identify unprofessional faculty behaviors. Incorporation of NLP into faculty review workflows enables a more focused manual review of comments, providing a supplemental mechanism to identify faculty professionalism lapses.

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来源期刊
CiteScore
5.30
自引率
0.00%
发文量
31
审稿时长
>12 weeks
期刊介绍: Evaluation & the Health Professions is a peer-reviewed, quarterly journal that provides health-related professionals with state-of-the-art methodological, measurement, and statistical tools for conceptualizing the etiology of health promotion and problems, and developing, implementing, and evaluating health programs, teaching and training services, and products that pertain to a myriad of health dimensions. This journal is a member of the Committee on Publication Ethics (COPE). Average time from submission to first decision: 31 days
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