AI RESEARCH
Decentralized LoRA augmented transformer with multi-scale feature learning for secured eye diagnosis
arXiv CS.CV
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ArXi:2505.06982v3 Announce Type: replace Accurate and privacy-preserving diagnosis of ophthalmic diseases remains a critical challenge in medical imaging, particularly given the limitations of existing deep learning models in handling data imbalance, data privacy concerns, spatial feature diversity, and clinical interpretability. This paper proposes a novel Data efficient Image Transformer (DeiT) based framework that integrates context aware multiscale patch embedding, Low-Rank Adaptation (LoRA), knowledge distillation, and federated learning to address these challenges in a unified manner.