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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http://dx.doi.org/10.1177/01632787231158128 | DOI Listing |
Clin Teach
February 2025
Faculty of Medicine, Nursing and Health Sciences, Monash University, Clayton, Victoria, Australia.
Background: Best practice evidence for identifying and managing professional behaviour lapses in a multidisciplinary context is lacking. This study aimed to evaluate multidisciplinary educators' attitudes and perceptions of the ProFESS (Professional standards, Ethical Behaviour and Student Support) framework and its companion Fitness for Practice model, designed and implemented at a large Australian university to address this using a behaviour change approach.
Methods: A 72-item survey based on the Context, Input, Process, Product evaluation framework was completed by 92 multidisciplinary faculty educators and analysed using descriptive and inferential statistics.
Nicotine Tob Res
December 2024
Addictions and related-Research Group, Sangath, Porvorim, Goa, India.
Introduction: Tobacco consumption is a leading cause of mortality globally. Eighty percent of these deaths occur in low- and middle-income countries (LMICs). Despite this, there is a large treatment gap due to both demand and supply-side barriers.
View Article and Find Full Text PDFJBRA Assist Reprod
December 2024
Women physicians and nurses are health professionals with significant differences in their role, but they share common social and occupational stressors. This study compares the outcomes of female physicians and nurses in treatment in a highly specialized program for health professionals with substance use disorders. This was a 9-year, survival, observational, cohort study, conducted with data from medical e-records of female nurses (n = 58) and physicians (n = 50) in treatment for addictions.
View Article and Find Full Text PDFBehav Sci (Basel)
November 2024
Safety Science and Engineering College, Civil Aviation University of China, No. 2898 Jinbei Highway Dongli District, Tianjin 300300, China.
To investigate the interaction effects of prolonged working periods and different task loads on response lapses, focusing on the mechanisms of delayed responses and error lapses. Professionals such as pilots, truck drivers, and nurses often face extended work hours and fluctuating task loads. While these factors individually affect performance, their interaction and its impact on response lapses remain unclear.
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