AEGIS: A Multi-Task Joint-Embedding Predictive Architecture for Mammography
arXiv:2607.00277v1 Announce Type: new Abstract: We present Aegis, a joint-embedding predictive architecture for breast cancer detection and density assessment in mammography. We train three Vision Transformer variants (Small/Base/Large) using self-supervised joint-embedding predictive architecture (JEPA) pre-training on 71,103 studies from 14 clinical sites, followed by supervised fine-tuning with progressive resolution scaling up to 2048x1536. On a curated 785-study test set, our largest model ...
arXiv cs.CV
·Scott Chase Waggener, Sai Karthik Navuluru, Lakshman Tamil
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