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LUMOS: Universal Semi-Supervised OCT Retinal Layer Segmentation with Hierarchical Reliable Mutual Learning

About

Optical Coherence Tomography (OCT) layer segmentation faces challenges due to annotation scarcity and heterogeneous label granularities across datasets. While semi-supervised learning helps alleviate label scarcity, existing methods typically assume a fixed granularity, failing to fully exploit cross-granularity supervision. This paper presents LUMOS, a semi-supervised universal OCT retinal layer segmentation framework based on a Dual-Decoder Network with a Hierarchical Prompting Strategy (DDN-HPS) and Reliable Progressive Multi-granularity Learning (RPML). DDN-HPS combines a dual-branch architecture with a multi-granularity prompting strategy to effectively suppress pseudo-label noise propagation. Meanwhile, RPML introduces region-level reliability weighing and a progressive training approach that guides the model from easier to more difficult tasks, ensuring the reliable selection of cross-granularity consistency targets, thereby achieving stable cross-granularity alignment. Experiments on six OCT datasets demonstrate that LUMOS largely outperforms existing methods and exhibits exceptional cross-domain and cross-granularity generalization capability.

Yizhou Fang, Jian Zhong, Li Lin, Xiaoying Tang• 2026

Related benchmarks

TaskDatasetResultRank
OCT Retinal Layer SegmentationHC-MS (Internal)
DSC90.84
7
OCT Retinal Layer SegmentationGCN (Internal)
DSC81.72
7
OCT Retinal Layer SegmentationHEG (Internal)
DSC87.81
7
OCT Retinal Layer SegmentationGoals (External)
DSC73.69
7
OCT Retinal Layer SegmentationAMD (External)
DSC84.3
7
OCT Retinal Layer SegmentationOIMHS (External)
DSC97.96
7
OCT Retinal Layer SegmentationAverage All Datasets
DSC86.05
7
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