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Using diffusion models to generate synthetic labeled data for medical image segmentation.

Daniel G SaragihAtsuhiro HibiPascal N Tyrrell
Published in: International journal of computer assisted radiology and surgery (2024)
The proposed pipeline produced realistic image and mask pairs which could reduce the need for manual data annotation when performing a machine learning task. We support this use case by showing that the methods proposed in this study enhanced segmentation model performance, as measured by Dice and IoU scores, when trained fully or partially on synthetic data.
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