One Sequence to Segment Them All: Efficient Data Augmentation for CT and MRI Cross-Domain 3D Spine Segmentation
arXiv cs.CV / 5/6/2026
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Key Points
- The paper addresses a key bottleneck in medical 3D spine segmentation: models trained on a single CT/MRI sequence often generalize poorly to new imaging sequences, contrasts, or modalities.
- It quantitatively studies targeted data augmentation aimed specifically at cross-modality transfer, training three single-modality/sequence models and evaluating them on seven out-of-distribution CT/MRI datasets.
- The proposed augmentation approach yields large average performance improvements on unseen domains (reported Dice gain of 155%) while essentially preserving in-domain accuracy (average Dice decrease of 0.008%).
- The authors also reduce the typical computational overhead of strong augmentation via GPU-optimized augmentations, improving training efficiency by about 10%.
- An open-source toolbox is released for integration with popular medical imaging frameworks (e.g., nnUNet and MONAI), enabling easier adoption of the method in heterogeneous clinical settings.
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