Anatomical segmentation masks produced for the NIH Chest-XRay14 dataset using AC-RegNet and a multi-atlas segmentation model.
- segmentations.tar.gz.*: Files containing the anatomical segmentation masks.
- rca_dice_scores.csv: File containing the Dice scores estimated with Reverse Classification Accuracy (RCA) for the segmentation masks.
To extract all segmentation masks you can use the cat command to first join the tar blocks and then the tar command to extract the entire file:
cat segmentations.tar.gz.* | tar xzvf -
The following table is necessary for this dataset to be indexed by search engines such as Google Dataset Search.
name | NIH Chest-XRay14 segmentations |
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url | https://github.com/lucasmansilla/NIH_chest_xray14_segmentations |
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sameAs | https://github.com/lucasmansilla/NIH_chest_xray14_segmentations |
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description | Anatomical segmentation masks of lung and heart produced for the NIH Chest-XRay14 dataset using AC-RegNet with a multi-atlas segmentation model. If you use source code or results from this repository in your publication, please cite our paper: Mansilla, L., Milone, D. H., & Ferrante, E. (2020). Learning deformable registration of medical images with anatomical constraints. Neural Networks, 124, 269-279.
![](https://i.imgur.com/k3PbVS9.png)
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citation | Mansilla, L., Milone, D. H., & Ferrante, E. (2020). Learning deformable registration of medical images with anatomical constraints. Neural Networks, 124, 269-279. |
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datePublished | 2019-08-08 |
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license |
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- Mansilla, L., Milone, D. H., & Ferrante, E. (2020). Learning deformable registration of medical images with anatomical constraints. Neural Networks, 124, 269-279.