📄 Abstract
Abstract: Avoiding systemic discrimination of neurodiverse individuals is an ongoing
challenge in training AI models, which often propagate negative stereotypes.
This study examined whether six text-to-image models (Janus-Pro-7B VL2 vs. VL3,
DALL-E 3 v. April 2024 vs. August 2025, Stable Diffusion v. 1.6 vs. 3.5, SDXL
v. April 2024 vs. FLUX.1 Pro, and Midjourney v. 5.1 vs. 7) perpetuate
non-rational beliefs regarding autism by comparing images generated in
2024-2025 with controls. 53 prompts aimed at neutrally visualizing concrete
objects and abstract concepts related to autism were used against 53 controls
(baseline total N=302, follow-up experimental 280 images plus 265 controls).
Expert assessment measuring the presence of common autism-related stereotypes
employed a framework of 10 deductive codes followed by statistical analysis.
Autistic individuals were depicted with striking homogeneity in skin color
(white), gender (male), and age (young), often engaged in solitary activities,
interacting with objects rather than people, and exhibiting stereotypical
emotional expressions such as sadness, anger, or emotional flatness. In
contrast, the images of neurotypical individuals were more diverse and lacked
such traits. We found significant differences between the models; however, with
a moderate effect size, and no differences between baseline and follow-up
summary values, with the ratio of stereotypical themes to the number of images
similar across all models. The control prompts showed a significantly lower
degree of stereotyping with large size effects, confirming the hidden biases of
the models. In summary, despite improvements in the technical aspects of image
generation, the level of reproduction of potentially harmful autism-related
stereotypes remained largely unaffected.
Authors (5)
Maciej Wodziński
Marcin Rządeczka
Anastazja Szuła
Kacper Dudzic
Marcin Moskalewicz
Key Contributions
Investigates whether six major text-to-image models (Janus-Pro-7B, DALL-E 3, Stable Diffusion, SDXL, FLUX.1 Pro, Midjourney) perpetuate non-rational beliefs and stereotypes about autism. The study found striking homogeneity in depictions (white, male, young) and common stereotypes, highlighting the need to address systemic discrimination against neurodiverse individuals in AI.
Business Value
Crucial for developers and users of generative AI to be aware of and mitigate biases that can lead to harmful stereotypes and discrimination, ensuring responsible AI development and deployment.