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Background: The presence of stigmatizing language within electronic health records (EHRs) poses significant risks to patient care by perpetuating biases. While numerous studies have explored the use of supervised machine learning models to detect stigmatizing language automatically, these models require large, annotated datasets, which may not always be readily available. In-context learning (ICL) has emerged as a data-efficient alternative, allowing large language models to adapt to tasks using only instructions and examples.
Objective: We aimed to investigate the efficacy of ICL in detecting stigmatizing language within EHRs under data-scarce conditions.
Methods: We analyzed 5043 sentences from the Medical Information Mart for Intensive Care-IV dataset, which contains EHRs from patients admitted to the emergency department at the Beth Israel Deaconess Medical Center. We compared ICL with zero-shot (textual entailment), few-shot (SetFit), and supervised fine-tuning approaches. The ICL approach used 4 prompting strategies: generic, chain of thought, clue and reasoning prompting, and a newly introduced stigma detection guided prompt. Model fairness was evaluated using the equal performance criterion, measuring true positive rate, false positive rate, and F-score disparities across protected attributes, including sex, age, and race.
Results: In the zero-shot setting, the best-performing ICL model, GEMMA-2, achieved a mean F-score of 0.858 (95% CI 0.854-0.862), showing an 18.7% improvement over the best textual entailment model, DEBERTA-M (mean F-score 0.723, 95% CI 0.718-0.728; P<.001). In the few-shot setting, the top ICL model, LLAMA-3, outperformed the leading SetFit models by 21.2%, 21.4%, and 12.3% with 4, 8, and 16 annotations per class, respectively (P<.001). Using 32 labeled instances, the best ICL model achieved a mean F-score of 0.901 (95% CI 0.895-0.907), only 3.2% lower than the best supervised fine-tuning model, ROBERTA (mean F-score 0.931, 95% CI 0.924-0.938), which was trained on 3543 labeled instances. Under the conditions tested, fairness evaluation revealed that supervised fine-tuning models exhibited greater bias compared with ICL models in the zero-shot, 4-shot, 8-shot, and 16-shot settings, as measured by true positive rate, false positive rate, and F-score disparities.
Conclusions: ICL offers a robust and flexible solution for detecting stigmatizing language in EHRs, offering a more data-efficient and equitable alternative to conventional machine learning methods. These findings suggest that ICL could enhance bias detection in clinical documentation while reducing the reliance on extensive labeled datasets.
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http://dx.doi.org/10.2196/68955 | DOI Listing |
J Obstet Gynecol Neonatal Nurs
September 2025
Objective: To examine the association between patient disability status and use of stigmatizing language in clinical notes from the hospital admission for birth.
Design: Cross-sectional study of electronic health record data.
Setting: Two urban hospitals in the northeastern United States.
J Med Internet Res
September 2025
Department of Psychological and Brain Sciences, Boston University, Boston, United States.
Background: Lesbian, gay, bisexual, transgender, queer/questioning, intersex, asexual (LGBTQIA+) researchers and participants frequently encounter hostility in virtual environments, particularly on social media platforms where public commentary on research advertisements can foster stigmatization. Despite a growing body of work on researcher virtual hostility, little empirical research has examined the actual content and emotional tone of public responses to LGBTQIA+-focused research recruitment.
Objective: This study aimed to analyze the thematic patterns and sentiment of social media comments directed at LGBTQIA+ research recruitment advertisements, in order to better understand how virtual stigma is communicated and how it may impact both researchers and potential participants.
Cureus
August 2025
Obstetrics and Gynaecology, Kalinga Institute of Nursing Sciences, Kalinga Institute of Industrial Technology, Deemed to be University (KIIT-DU), Bhubaneswar, IND.
Male infertility is a major health concern worldwide. While biological causes are well understood, the psychological aspects receive less focus. This gap is evident in clinical practice and research, where emotional, social, and mental health issues linked to male infertility are often neglected or inadequately managed.
View Article and Find Full Text PDFAdv Child Dev Behav
September 2025
Department of Psychology, University of Michigan, Ann Arbor, MI, USA.
Essentialism is the intuitive belief that certain categories, such as "tiger," "boy," or "gold," have an underlying reality that goes beyond surface appearances. Childhood essentialism provides insights regarding the nature, origins, and development of human cognition. This chapter reviews the current state of the art regarding research on childhood essentialism, addressing five key issues: (1) what is essentialism and why is it important?; (2) the role of experience (including context, culture, and identity); (3) language as a uniquely powerful mode of transmission; (4) developmental origins; and (5) consequences for social issues and education.
View Article and Find Full Text PDFZ Rheumatol
September 2025
Abteilung Rheumatologie, Klinik für Innere Medizin 5, Klinikum Nürnberg, Universitätsklinik der Paracelsus Medizinischen Privatuniversität, Nürnberg, Deutschland.
Background: Comics are increasingly being discussed as an innovative means of communication in healthcare. In rheumatology there has so far been a lack of studies on the acceptance and potential use of medical comics.
Aim Of The Study: The aim of this study was to determine the acceptance of medical comics among rheumatologists and to evaluate their potential for use in clinical practice.