TY - JOUR
T1 - Biases in an artificial intelligence image-generator's depictions of healthy aging and Alzheimer's
AU - Osinga, Channah
AU - Jintaganon, Natcha
AU - Steijger, Dirk
AU - De Vugt, Marjolein
AU - Neal, David
PY - 2025
Y1 - 2025
N2 - Objective This content analysis study investigates potential biases in image generation by 2 artificial intelligence (AI) tools, DALL-E 3 and Midjourney, in portraying older adults and individuals living with dementia. Despite widespread use of generative AI in various sectors, there is limited research on how these models might perpetuate stereotypes and stigmatization through their images.Materials and Methods 1056 images were generated using specified prompts categorized into 3 groups: general older adults, dementia-related, and control. Each prompt began with "photorealistic portrait" followed by specific scene descriptions. Four researchers conducted content analysis on each generated image, focusing on factors, such as portrait style, setting, posture, apparent sex of subjects, and emotional affect. The analysis was executed with blinding and randomization protocols to ensure unbiased assessment. Chi-square tests examined the relationship between prompt categories and variables.Results Results revealed significant disparities in depictions of older adults and those with dementia compared with control images. Both models more often portrayed subjects in response to dementia-related prompts with negative affect, in less favorable emotional states. However, DALL-E 3 also generated more personas displaying positive affect in response to these prompts. Variations in depiction styles between the 2 AI models were noted, with DALL-E 3 showing a broader diversity of outputs.Discussion and Conclusions The findings highlight AI's potential to reinforce stigmatizing stereotypes through biased image generation. Recommendations include selecting prompts carefully to avoid negative depictions and advocating for greater AI explainability and inclusivity by design. Future research should explore other AI models, other forms of bias, and strategies to mitigate biases.
AB - Objective This content analysis study investigates potential biases in image generation by 2 artificial intelligence (AI) tools, DALL-E 3 and Midjourney, in portraying older adults and individuals living with dementia. Despite widespread use of generative AI in various sectors, there is limited research on how these models might perpetuate stereotypes and stigmatization through their images.Materials and Methods 1056 images were generated using specified prompts categorized into 3 groups: general older adults, dementia-related, and control. Each prompt began with "photorealistic portrait" followed by specific scene descriptions. Four researchers conducted content analysis on each generated image, focusing on factors, such as portrait style, setting, posture, apparent sex of subjects, and emotional affect. The analysis was executed with blinding and randomization protocols to ensure unbiased assessment. Chi-square tests examined the relationship between prompt categories and variables.Results Results revealed significant disparities in depictions of older adults and those with dementia compared with control images. Both models more often portrayed subjects in response to dementia-related prompts with negative affect, in less favorable emotional states. However, DALL-E 3 also generated more personas displaying positive affect in response to these prompts. Variations in depiction styles between the 2 AI models were noted, with DALL-E 3 showing a broader diversity of outputs.Discussion and Conclusions The findings highlight AI's potential to reinforce stigmatizing stereotypes through biased image generation. Recommendations include selecting prompts carefully to avoid negative depictions and advocating for greater AI explainability and inclusivity by design. Future research should explore other AI models, other forms of bias, and strategies to mitigate biases.
KW - artificial intelligence
KW - ageism
KW - dementia
KW - bias
KW - ethics
KW - VALENCE
U2 - 10.1093/jamia/ocaf173
DO - 10.1093/jamia/ocaf173
M3 - Article
SN - 1067-5027
JO - Journal of the American Medical Informatics Association
JF - Journal of the American Medical Informatics Association
ER -