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U-Harmony: Enhancing Joint Training for Segmentation Models with Universal Harmonization

About

In clinical practice, medical segmentation datasets are often limited and heterogeneous, with variations in modalities, protocols, and anatomical targets across institutions. Existing deep learning models struggle to jointly learn from such diverse data, often sacrificing either generalization or domain-specific knowledge. To overcome these challenges, we propose a joint training method called Universal Harmonization (U-Harmony), which can be integrated into deep learning-based architectures with a domain-gated head, enabling a single segmentation model to learn from heterogeneous datasets simultaneously. By integrating U-Harmony, our approach sequentially normalizes and then denormalizes feature distributions to mitigate domain-specific variations while preserving original dataset-specific knowledge. More appealingly, our framework also supports universal modality adaptation, allowing the seamless learning of new imaging modalities and anatomical classes. Extensive experiments on cross-institutional brain lesion datasets demonstrate the effectiveness of our approach, establishing a new benchmark for robust and adaptable 3D medical image segmentation models in real-world clinical settings.

Weiwei Ma, Xiaobing Yu, Peijie Qiu, Jin Yang, Pan Xiao, Xiaoqi Zhao, Xiaofeng Liu, Tomo Miyazaki, Shinichiro Omachi, Yongsong Huang• 2026

Related benchmarks

TaskDatasetResultRank
Brain lesion segmentationUCSF-BMSR
ET83.34
14
Brain lesion segmentationBraTS-METS 2023
TC (Tumor Core)74.48
14
Brain lesion segmentationBrainMet
ET Score71.59
14
Brain Metastasis SegmentationUCSF-BMSR (test)
DSC (ET)80.13
9
Brain Metastasis SegmentationBrainMetShare (test)
DSC (ET)65.63
9
Brain Tumor and Metastasis SegmentationBraTS-METS 2023 (test)
DSC (TC)73.66
9
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