Synergistic pairing of synthetic image generation with disease classification modeling permits rapid digital classification tool development
Lao-Tzu Allan-Blitz,
Sithira Ambepitiya,
Janitha Prathapa
et al.
Abstract:Machine-learning disease classification models have the potential to support diagnosis of various diseases. Pairing classification models with synthetic image generation may overcome barriers to developing classification models and permit their use in numerous contexts. Using 10 images of penises with human papilloma virus (HPV)-related disease, we trained a denoising diffusion probabilistic model. Combined with text-to-image generation, we produced 630 synthetic images, of which 500 were deemed plausible by e… Show more
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