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A foundation model for generalizable disease detection from retinal images.Nature, 622(7981):156–163

3 Pith papers cite this work. Polarity classification is still indexing.

3 Pith papers citing it

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2026 2 2025 1

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representative citing papers

Scaling Vision Transformers for Functional MRI with Flat Maps

cs.CV · 2025-10-15 · conditional · novelty 7.0

CortexMAE adapts Vision Transformers to fMRI via cortical flat maps, shows power-law scaling on 2.1K hours of data, and outperforms priors on cognitive state decoding while failing to beat a simple functional connectivity baseline on subject-level trait prediction.

Representation learning from OCT images

cs.CV · 2026-05-04 · unverdicted · novelty 3.0

A structured survey of representation learning methods for retinal OCT image analysis, covering supervised, self-supervised, generative, multimodal, and foundation model approaches along with datasets and open problems.

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Showing 3 of 3 citing papers.

  • Pretraining Strategies and Scaling for ECG Foundation Models: A Systematic Study eess.SP · 2026-05-12 · unverdicted · none · ref 3

    Contrastive predictive coding pretraining combined with structured state space models yields the strongest ECG foundation models, with continued gains from scaling data to 11 million samples.

  • Scaling Vision Transformers for Functional MRI with Flat Maps cs.CV · 2025-10-15 · conditional · none · ref 4

    CortexMAE adapts Vision Transformers to fMRI via cortical flat maps, shows power-law scaling on 2.1K hours of data, and outperforms priors on cognitive state decoding while failing to beat a simple functional connectivity baseline on subject-level trait prediction.

  • Representation learning from OCT images cs.CV · 2026-05-04 · unverdicted · none · ref 180

    A structured survey of representation learning methods for retinal OCT image analysis, covering supervised, self-supervised, generative, multimodal, and foundation model approaches along with datasets and open problems.