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  3. Beyond the stereotypes: Artificial Intelligence image generation and diversity in anesthesiology.
 

Beyond the stereotypes: Artificial Intelligence image generation and diversity in anesthesiology.

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BORIS DOI
10.48620/76449
Publisher DOI
10.3389/frai.2024.1462819
PubMed ID
39444664
Description
Introduction
Artificial Intelligence (AI) is increasingly being integrated into anesthesiology to enhance patient safety, improve efficiency, and streamline various aspects of practice.
Objective
This study aims to evaluate whether AI-generated images accurately depict the demographic racial and ethnic diversity observed in the Anesthesia workforce and to identify inherent social biases in these images.Methods
This cross-sectional analysis was conducted from January to February 2024. Demographic data were collected from the American Society of Anesthesiologists (ASA) and the European Society of Anesthesiology and Intensive Care (ESAIC). Two AI text-to-image models, ChatGPT DALL-E 2 and Midjourney, generated images of anesthesiologists across various subspecialties. Three independent reviewers assessed and categorized each image based on sex, race/ethnicity, age, and emotional traits.
Results
A total of 1,200 images were analyzed. We found significant discrepancies between AI-generated images and actual demographic data. The models predominantly portrayed anesthesiologists as White, with ChatGPT DALL-E2 at 64.2% and Midjourney at 83.0%. Moreover, male gender was highly associated with White ethnicity by ChatGPT DALL-E2 (79.1%) and with non-White ethnicity by Midjourney (87%). Age distribution also varied significantly, with younger anesthesiologists underrepresented. The analysis also revealed predominant traits such as "masculine, ""attractive, "and "trustworthy" across various subspecialties.
Conclusion
AI models exhibited notable biases in gender, race/ethnicity, and age representation, failing to reflect the actual diversity within the anesthesiologist workforce. These biases highlight the need for more diverse training datasets and strategies to mitigate bias in AI-generated images to ensure accurate and inclusive representations in the medical field.
Date of Publication
2024
Publication Type
Article
Subject(s)
600 - Technology::610 - Medicine & health
Keyword(s)
Artificial Intelligence
•
anesthesiology
•
biases
•
gender equity
•
race/ethnicity
•
stereotypes
Language(s)
en
Contributor(s)
Gisselbaek, Mia
Minsart, Laurens
Köselerli, Ekin
Suppan, Mélanie
Meco, Basak Ceyda
Seidel, Laurence
Albert, Adelin
Barreto Chang, Odmara L
Saxena, Sarah
Berger-Estilita, Joana
Institut für Medizinische Lehre, Assessment und Evaluation, Forschung / Evaluation
Additional Credits
Institut für Medizinische Lehre, Assessment und Evaluation, Forschung / Evaluation
Series
Frontiers in Artificial Intelligence
Publisher
Frontiers Media
ISSN
2624-8212
Access(Rights)
open.access
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