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Shifts 2022 — Part 2 (MS White-Matter Lesion Segmentation, open CC subset)
Brain MRI multiple-sclerosis (MS) white-matter lesion segmentation dataset from the Shifts 2.0 benchmark (Malinin et al., NeurIPS 2022 Datasets & Benchmarks).
⚠️ What "Part 2" means (faithful-naming note). The Shifts MS lesion dataset is split across two Zenodo archives purely by license/access, not by task — both parts are the same MS lesion segmentation task:
- Part 1 (Zenodo
7051658) = the MSSEG-1 / OFSEP cohorts (Rennes, Bordeaux, Lyon, 52 cases). It is released only under an OFSEP Data Usage Agreement and cannot be redistributed — it is NOT included here.- Part 2 (Zenodo
7051692, this repo) = the openly CC-licensed cohorts: Best (ISBI 2015) + Ljubljana (PubMRI) = 46 released cases.- The shifted evaluation cohort Lausanne (74 cases,
eval_out) is never released publicly (Grand-Challenge Docker leaderboard only) and is likewise not here.This repo is therefore the open, redistributable 46-case subset of the Shifts MS benchmark, faithful to Zenodo record 7051692.
Contents
| Cohort | Source dataset | Shifts split | Cases | Modalities |
|---|---|---|---|---|
| best | ISBI 2015 Longitudinal MS | train |
10 | FLAIR, T1, T2, PD |
| best | ISBI 2015 Longitudinal MS | dev_in |
2 | FLAIR, T1, T2, PD |
| best | ISBI 2015 Longitudinal MS | eval_in |
9 | FLAIR, T1, T2, PD |
| ljubljana | PubMRI (Lesjak 2018) | dev_out |
25 | FLAIR, T1, T2, T1ce |
| Total | 46 |
best= in-domain data (ISBI 2015);ljubljana= the distribution-shifted dev set (PubMRI).- All volumes preprocessed to 1 mm isotropic: denoised, registered to FLAIR space, skull-stripped (brain mask from T1), N4 bias-field corrected. Images linearly interpolated; masks nearest-neighbour interpolated.
Ground truth
gt/— the challenge gold-standard consensus lesion mask (binary{0,1}), one per case.- Ljubljana / PubMRI: consensus of 3 expert raters.
- Best / ISBI: the release designates annotator 2 (the more experienced rater) as GT;
both raters' individual masks are also provided under
individual_annotators/.
fg_mask/— brain/foreground mask (binary{0,1}), used to restrict error-retention curves to brain tissue.- Challenge metric is the lesion-load-decorrelated normalized Dice (nDSC).
Repository layout
(repo root)
best/{train,dev_in,eval_in}/
flair/ t1/ t2/ pd/ gt/ fg_mask/
individual_annotators/{annotator1,annotator2}/
ljubljana/dev_out/
flair/ t1/ t2/ t1ce/ gt/ fg_mask/
index/
{train,dev_in,eval_in,dev_out,all}.jsonl # per-case path index (added by this mirror)
README.txt # original author README
LICENSE.md # original author license notice
All index/*.jsonl paths are repo-root relative (e.g. best/train/flair/24_FLAIR_isovox.nii.gz).
Files are named {subject}_{MODALITY}_isovox.nii.gz (GT: {subject}_gt_isovox.nii.gz,
foreground: {subject}_isovox_fg_mask.nii.gz). Subject IDs are unique within a cohort/split
but collide across cohorts — use the case_id ({cohort}/{split}/{subject}) from the index
as the global key.
Index records (index/*.jsonl)
Each line: case_id, cohort, split, subject, source_dataset, flair, t1, t2, pd, t1ce, gt, fg_mask [, individual_annotators]. Modality fields are null where absent (PD only in best,
T1ce only in ljubljana).
⚠️ Cross-dataset overlap (leakage risk)
Part 2 physically reuses two public MS datasets. If any of these enter a benchmark suite
separately, dedup against the Shifts cohort using the source_dataset / cohort tag before
co-evaluating:
- Best cohort ≡ ISBI 2015 Longitudinal MS Lesion Segmentation Challenge (Carass et al., 2017).
- Ljubljana cohort ≡ PubMRI (Lesjak et al., Neuroinformatics 2018).
- (Part 1, not here) reuses MSSEG-1 / MICCAI 2016.
License
CC BY-NC-SA 4.0 (verified on Zenodo record 7051692 and in the paper). Non-commercial; share-alike; attribution required.
Citation
@inproceedings{malinin2022shifts2,
title = {Shifts 2.0: Extending The Dataset of Real Distributional Shifts},
author = {Malinin, Andrey and Athanasopoulos, Andreas and Barakovic, Muhamed and
Bach Cuadra, Meritxell and Gales, Mark J. F. and Granziera, Cristina and others},
booktitle = {NeurIPS Datasets and Benchmarks},
year = {2022},
note = {arXiv:2206.15407}
}
Source: Zenodo record 7051692 · Project: shifts.ai · Paper: arXiv:2206.15407
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