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0014_learn2reg/README_0014_learn2reg.md
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# Learn2Reg – Abdomen MR-CT (TCIA Subset)
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## License
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Because Learn2Reg sourced images from different datasets and here we only used the TCIA-relevant subset, the license is as follows:
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TCIA (TCGA-KIRC, TCGA-KIRP, TCGA-LIHC): [TCIA Data Usage Policy](https://www.cancerimagingarchive.net/data-usage-policies/) and [Creative Commons Attribution 3.0 Unported License](https://creativecommons.org/licenses/by/3.0/).
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## Citation
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Paper BibTeX:
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```bibtex
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@article{hering2022learn2reg,
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title={Learn2Reg: comprehensive multi-task medical image registration challenge, dataset and evaluation in the era of deep learning},
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author={Hering, Alessa and Hansen, Lasse and Mok, Tony CW and Chung, Albert CS and Siebert, Hanna and H{\"a}ger, Stephanie and Lange, Annkristin and Kuckertz, Sven and Heldmann, Stefan and Shao, Wei and others},
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journal={IEEE Transactions on Medical Imaging},
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volume={42},
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number={3},
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pages={697--712},
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year={2022},
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publisher={IEEE}
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}
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```
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## Dataset description
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The Learn2Reg challenge provides datasets, annotations, and open-source evaluation code for developing and benchmarking medical image registration methods. The Abdomen MR-CT task includes CT scans with organ labels to support multi-modal abdominal image registration research.
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**Challenge homepage**: https://learn2reg.grand-challenge.org/learn2reg-2025/
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**Number of CT volumes**: 16
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**Contrast**: -
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**CT body coverage**: Abdomen
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**Does the dataset include any ground truth annotations?**: Yes
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**Original GT annotation targets**: Liver, spleen, right kidney, left kidney
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**Number of annotated CT volumes**: 8
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**Annotator**: Human
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**Acquisition centers**: -
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**Pathology/Disease**: -
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**Original dataset download link**: (Task "Abdomen MR-CT") https://learn2reg.grand-challenge.org/Datasets/
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**Original dataset format**: nifti
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## Note
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This subset contains 16 TCIA images from the Abdomen MR-CT task (sources: TCGA-KIRC, TCGA-KIRP, TCGA-LIHC), corresponding to imagesTr/ and imagesTs/ cases AbdomenMRCT_0001_0001 to AbdomenMRCT_0016_0001. Our internal IDs (learn2reg_img000x_tcia) do not match the original 1–16 numbering.
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