EI: Early Intervention for Multimodal Imaging based Disease Recognition
arXiv cs.CV / 3/19/2026
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Key Points
- The paper identifies two main challenges in multimodal imaging for disease recognition: fusion after unimodal embedding and scarcity plus domain shift of labeled multimodal data.
- It proposes an Early Intervention (EI) framework that treats one modality as the target and uses high-level semantic tokens from reference modalities as intervention tokens to steer the target's embedding early.
- It also introduces Mixture of Low-varied-Ranks Adaptation (MoR), a parameter-efficient fine-tuning method using low-rank adapters with varied ranks and a weight-relaxed router for adapting Vision Foundation Models.
- Extensive experiments on three public datasets (retinal disease, skin lesion, and keen anomaly classification) show EI and MoR outperform several competitive baselines.
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