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--- |
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license: cc-by-nc-sa-4.0 |
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task_categories: |
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- image-segmentation |
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tags: |
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- medical |
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- neuroimaging |
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- stroke |
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- CT |
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- MRI |
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- perfusion |
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- ISLES |
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- BIDS |
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size_categories: |
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- n<1K |
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--- |
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# ISLES'24 Stroke Training Dataset |
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Multi-center longitudinal multimodal acute ischemic stroke training dataset from the ISLES'24 Challenge. |
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## Dataset Description |
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- **Source:** [Zenodo Record 17652035](https://zenodo.org/records/17652035) (v7, November 2025) |
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- **Challenge:** [ISLES 2024](https://isles-24.grand-challenge.org/) |
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- **Paper:** [Riedel et al., arXiv:2408.11142](https://arxiv.org/abs/2408.11142) |
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- **License:** CC BY-NC-SA 4.0 |
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- **Size:** 99 GB (compressed) |
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## Overview |
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149 acute ischemic stroke training cases with: |
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- **Admission imaging (ses-01):** Non-contrast CT, CT angiography, 4D CT perfusion |
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- **Follow-up imaging (ses-02):** Post-treatment MRI (DWI, ADC) |
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- **Clinical data:** Demographics, patient history, admission NIHSS, 3-month mRS outcomes |
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- **Annotations:** Infarct masks, large vessel occlusion masks, Circle of Willis anatomy |
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> **Note:** The ISLES'24 paper describes a training set of 150 cases; the Zenodo v7 training archive contains 149 publicly released subjects. |
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## Dataset Structure |
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### Imaging Modalities |
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| Session | Modality | Description | |
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|---------|----------|-------------| |
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| ses-01 (Acute) | `ncct` | Non-contrast CT | |
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| ses-01 (Acute) | `cta` | CT Angiography | |
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| ses-01 (Acute) | `ctp` | 4D CT Perfusion time series | |
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| ses-01 (Acute) | `tmax` | Time-to-maximum perfusion map | |
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| ses-01 (Acute) | `mtt` | Mean transit time map | |
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| ses-01 (Acute) | `cbf` | Cerebral blood flow map | |
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| ses-01 (Acute) | `cbv` | Cerebral blood volume map | |
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| ses-02 (Follow-up) | `dwi` | Diffusion-weighted MRI | |
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| ses-02 (Follow-up) | `adc` | Apparent diffusion coefficient | |
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### Derivative Masks |
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| Mask | Description | |
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|------|-------------| |
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| `lesion_mask` | Binary infarct segmentation (from follow-up MRI) | |
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| `lvo_mask` | Large vessel occlusion mask (from CTA) | |
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| `cow_mask` | Circle of Willis anatomy (multi-label, auto-generated from CTA) | |
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### Clinical Variables |
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Clinical variables are extracted from per-subject XLSX files in the `phenotype/` directory: |
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| Variable | Source File | Description | |
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|----------|-------------|-------------| |
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| `age` | demographic_baseline.xlsx | Patient age at admission | |
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| `sex` | demographic_baseline.xlsx | Patient sex (M/F) | |
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| `nihss_admission` | demographic_baseline.xlsx | NIH Stroke Scale score at admission | |
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| `mrs_admission` | demographic_baseline.xlsx | Modified Rankin Scale at admission | |
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| `mrs_3month` | outcome.xlsx | Modified Rankin Scale at 3 months (primary outcome) | |
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## Usage |
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```python |
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from datasets import load_dataset |
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ds = load_dataset("hugging-science/isles24-stroke", split="train") |
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# Access a subject |
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example = ds[0] |
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print(example["subject_id"]) # "sub-stroke0001" |
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print(example["ncct"]) # Non-contrast CT array |
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print(example["dwi"]) # Diffusion-weighted MRI |
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print(example["lesion_mask"]) # Ground truth segmentation |
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print(example["nihss_admission"]) # NIH Stroke Scale at admission |
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print(example["mrs_3month"]) # Modified Rankin Scale at 3 months |
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``` |
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## Data Organization |
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The source data follows BIDS structure. This tree shows the actual Zenodo v7 layout: |
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``` |
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train/ |
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βββ clinical_data-description.xlsx |
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βββ raw_data/ |
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β βββ sub-stroke0001/ |
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β βββ ses-01/ |
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β βββ sub-stroke0001_ses-01_ncct.nii.gz |
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β βββ sub-stroke0001_ses-01_cta.nii.gz |
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β βββ sub-stroke0001_ses-01_ctp.nii.gz |
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β βββ perfusion-maps/ |
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β βββ sub-stroke0001_ses-01_tmax.nii.gz |
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β βββ sub-stroke0001_ses-01_mtt.nii.gz |
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β βββ sub-stroke0001_ses-01_cbf.nii.gz |
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β βββ sub-stroke0001_ses-01_cbv.nii.gz |
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βββ derivatives/ |
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β βββ sub-stroke0001/ |
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β βββ ses-01/ |
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β β βββ perfusion-maps/ |
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β β β βββ sub-stroke0001_ses-01_space-ncct_tmax.nii.gz |
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β β β βββ sub-stroke0001_ses-01_space-ncct_mtt.nii.gz |
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β β β βββ sub-stroke0001_ses-01_space-ncct_cbf.nii.gz |
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β β β βββ sub-stroke0001_ses-01_space-ncct_cbv.nii.gz |
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β β βββ sub-stroke0001_ses-01_space-ncct_cta.nii.gz |
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β β βββ sub-stroke0001_ses-01_space-ncct_ctp.nii.gz |
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β β βββ sub-stroke0001_ses-01_space-ncct_lvo-msk.nii.gz |
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β β βββ sub-stroke0001_ses-01_space-ncct_cow-msk.nii.gz |
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β βββ ses-02/ |
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β βββ sub-stroke0001_ses-02_space-ncct_dwi.nii.gz |
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β βββ sub-stroke0001_ses-02_space-ncct_adc.nii.gz |
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β βββ sub-stroke0001_ses-02_space-ncct_lesion-msk.nii.gz |
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βββ phenotype/ |
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βββ sub-stroke0001/ |
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βββ ses-01/ |
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βββ ses-02/ |
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``` |
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## Citation |
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When using this dataset, please cite: |
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```bibtex |
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@article{riedel2024isles, |
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title={ISLES'24 -- A Real-World Longitudinal Multimodal Stroke Dataset}, |
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author={Riedel, Evamaria Olga and de la Rosa, Ezequiel and Baran, The Anh and |
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Hernandez Petzsche, Moritz and Baazaoui, Hakim and Yang, Kaiyuan and |
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Musio, Fabio Antonio and Huang, Houjing and Robben, David and |
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Seia, Joaquin Oscar and Wiest, Roland and Reyes, Mauricio and |
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Su, Ruisheng and Zimmer, Claus and Boeckh-Behrens, Tobias and |
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Berndt, Maria and Menze, Bjoern and Rueckert, Daniel and |
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Wiestler, Benedikt and Wegener, Susanne and Kirschke, Jan Stefan}, |
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journal={arXiv preprint arXiv:2408.11142}, |
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year={2024} |
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} |
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@article{delarosa2024isles, |
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title={ISLES'24: Final Infarct Prediction with Multimodal Imaging and Clinical Data. Where Do We Stand?}, |
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author={de la Rosa, Ezequiel and Su, Ruisheng and Reyes, Mauricio and |
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Wiest, Roland and Riedel, Evamaria Olga and Kofler, Florian and |
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others and Menze, Bjoern}, |
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journal={arXiv preprint arXiv:2408.10966}, |
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year={2024} |
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} |
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``` |
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If using Circle of Willis masks, also cite: |
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```bibtex |
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@article{yang2023benchmarking, |
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title={Benchmarking the CoW with the TopCoW Challenge: Topology-Aware Anatomical |
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Segmentation of the Circle of Willis for CTA and MRA}, |
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author={Yang, Kaiyuan and Musio, Fabio and Ma, Yue and Juchler, Norman and |
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Paetzold, Johannes C and Al-Maskari, Rami and others and Menze, Bjoern}, |
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journal={arXiv preprint arXiv:2312.17670}, |
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year={2023} |
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} |
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``` |
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## Related Resources |
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- [ISLES 2024 Challenge](https://isles-24.grand-challenge.org/) |
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- [Zenodo Dataset (DOI: 10.5281/zenodo.17652035)](https://doi.org/10.5281/zenodo.17652035) |
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- [Dataset Paper (arXiv:2408.11142)](https://arxiv.org/abs/2408.11142) |
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- [Challenge Paper (arXiv:2408.10966)](https://arxiv.org/abs/2408.10966) |
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