DermDiff: Generative Diffusion Model for Mitigating Racial Biases in Dermatology Diagnosis
By: Nusrat Munia, Abdullah-Al-Zubaer Imran
Potential Business Impact:
Makes AI better at spotting skin problems on all skin.
Skin diseases, such as skin cancer, are a significant public health issue, and early diagnosis is crucial for effective treatment. Artificial intelligence (AI) algorithms have the potential to assist in triaging benign vs malignant skin lesions and improve diagnostic accuracy. However, existing AI models for skin disease diagnosis are often developed and tested on limited and biased datasets, leading to poor performance on certain skin tones. To address this problem, we propose a novel generative model, named DermDiff, that can generate diverse and representative dermoscopic image data for skin disease diagnosis. Leveraging text prompting and multimodal image-text learning, DermDiff improves the representation of underrepresented groups (patients, diseases, etc.) in highly imbalanced datasets. Our extensive experimentation showcases the effectiveness of DermDiff in terms of high fidelity and diversity. Furthermore, downstream evaluation suggests the potential of DermDiff in mitigating racial biases for dermatology diagnosis. Our code is available at https://github.com/Munia03/DermDiff
Similar Papers
Prompting Medical Vision-Language Models to Mitigate Diagnosis Bias by Generating Realistic Dermoscopic Images
CV and Pattern Recognition
Helps AI see skin diseases on all skin colors.
Class-N-Diff: Classification-Induced Diffusion Model Can Make Fair Skin Cancer Diagnosis
CV and Pattern Recognition
Makes AI create realistic skin disease pictures.
An analysis of data variation and bias in image-based dermatological datasets for machine learning classification
CV and Pattern Recognition
Helps phones spot skin cancer like doctors.