Enhancing diagnostic deep learning via self-supervised pretraining on large-scale, unlabeled non-medical images.
Soroosh Tayebi ArastehLeo MiseraJakob Nikolas KatherDaniel TruhnSven NebelungPublished in: European radiology experimental (2024)
Self-supervised learning highlights a paradigm shift towards the enhancement of AI-driven accuracy and efficiency in medical imaging. Given its promise, the broader application of self-supervised learning in medical imaging calls for deeper exploration, particularly in contexts where comprehensive annotated datasets are limited.