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Upload README_0009_abdomenct1k.md
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0009_abdomenct1k/README_0009_abdomenct1k.md
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# AbdomenCT-1K
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## License
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**CC BY 4.0**
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[Creative Commons Attribution 4.0 International License](https://creativecommons.org/licenses/by/4.0/)
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## Citation
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Paper BibTeX:
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```bibtex
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@article{ma2021abdomenct,
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title={Abdomenct-1k: Is abdominal organ segmentation a solved problem?},
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author={Ma, Jun and Zhang, Yao and Gu, Song and Zhu, Cheng and Ge, Cheng and Zhang, Yichi and An, Xingle and Wang, Congcong and Wang, Qiyuan and Liu, Xin and others},
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journal={IEEE Transactions on Pattern Analysis and Machine Intelligence},
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volume={44},
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number={10},
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pages={6695--6714},
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year={2021},
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publisher={IEEE}
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}
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```
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## Dataset description
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AbdomenCT-1K is a large, diverse abdominal CT organ segmentation dataset with over 1,000 scans from 12 medical centers, covering multiple phases, vendors, and diseases. It serves as a benchmark to reveal and address the limited generalization of state-of-the-art methods, providing tasks for fully, semi-, weakly supervised, and continual learning research.
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**Challenge homepage**: https://abdomenct-1k-fully-supervised-learning.grand-challenge.org/
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**Number of CT volumes**: 1062
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**Contrast**: Contrast-enhanced (multi-phase: plain, arterial, portal)
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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, kidney, pancreas
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**Number of annotated CT volumes**: 1000
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**Annotator**: Initial model + manual refinement
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**Acquisition centers**: 12 medical centers
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**Pathology/Disease**: Lesions in one or more labeled organs, including benign/malignant liver lesions and cancers of the pancreas, colon, and liver
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**Original dataset download link**:
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Part 1: https://zenodo.org/records/5903099
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Part 2: https://zenodo.org/records/5903846
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Part 3: https://zenodo.org/records/5903769
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**Original dataset format**: nifti
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