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TAPE: A two-stage parameter-efficient adaptation framework for foundation models in OCT-OCTA analysis

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Automated analysis of optical coherence tomography (OCT) and OCT angiography (OCTA) images is critical for robust ophthalmic diagnosis. Existing mainstream methods trained from scratch rely heavily on massive data and model scale, thereby hindering their practical deployment in resource-constrained clinical settings. Although transfer learning based on foundation models (FMs) is promising, it still faces significant challenges: domain shift and task misalignment. To address these, we propose TAPE: A Two-stage Adaptation Framework via Parameter-Efficient Fine-tuning, which strategically decouples adaptation into domain alignment and task fitting for downstream segmentation. The domain adaptation stage notably applies parameter-efficient fine-tuning (PEFT) in the context of masked image modeling for medical image domain adaptation, a novel approach to the best of our knowledge. Applying TAPE to retinal layer segmentation on both universal (masked auto-encoder, MAE) and specialized (RETFound) FMs, it demonstrates superior parameter efficiency and achieves state-of-the-art generalization performance across diverse pathologies.

Xiaofei Su, Zengshuo Wang, Minghe Sun, Xin Zhao, Mingzhu Sun• 2026

Related benchmarks

TaskDatasetResultRank
Retinal Layer SegmentationOCTA-500 AMD
mDice90.69
14
Retinal Layer SegmentationOCTA-500 DR
Dice Score93.12
14
Retinal Layer SegmentationOCTA-500 RVO
mDice89.13
14
Retinal Layer SegmentationOCTA-500 NORMAL
mDice96
14
Retinal Layer SegmentationOCTA-500 ALL
mDice93.86
14
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