Datasets:
image image | mask image | overlay image | patch_id string | subset string | structure string | specimen string | num_channels int64 | num_slices int64 | gt_label_values string | split string |
|---|---|---|---|---|---|---|---|---|---|---|
vessel_000 | VessAP_vessel | vessel | mouse | 2 | 50 | 0,95,255 | train | |||
vessel_001 | VessAP_vessel | vessel | mouse | 2 | 50 | 0,255 | train | |||
vessel_002 | VessAP_vessel | vessel | mouse | 2 | 50 | 0,255 | train | |||
vessel_003 | VessAP_vessel | vessel | mouse | 2 | 50 | 0,255 | train | |||
vessel_004 | VessAP_vessel | vessel | mouse | 2 | 50 | 0,255 | train | |||
vessel_005 | VessAP_vessel | vessel | mouse | 2 | 50 | 0,1 | train | |||
vessel_006 | VessAP_vessel | vessel | mouse | 2 | 50 | 0,1 | train | |||
vessel_007 | VessAP_vessel | vessel | mouse | 2 | 50 | 0,1 | train | |||
vessel_008 | VessAP_vessel | vessel | mouse | 2 | 50 | 0,1 | train | |||
vessel_009 | VessAP_vessel | vessel | mouse | 2 | 50 | 0,1 | train | |||
vessel_010 | VessAP_vessel | vessel | mouse | 2 | 50 | 0,1 | train | |||
vessel_011 | VessAP_vessel | vessel | mouse | 2 | 50 | 0,1 | train | |||
vessel_012 | VessAP_vessel | vessel | mouse | 2 | 50 | 0,1 | train | |||
vessel_013 | VessAP_vessel | vessel | mouse | 2 | 50 | 0,1 | train | |||
vessel_014 | VessAP_vessel | vessel | mouse | 2 | 50 | 0,1 | train | |||
vessel_015 | VessAP_vessel | vessel | mouse | 2 | 50 | 0,1 | train | |||
vessel_016 | VessAP_vessel | vessel | mouse | 2 | 50 | 0,1 | train | |||
vessel_017 | VessAP_vessel | vessel | mouse | 2 | 50 | 0,1 | train | |||
vessel_018 | VessAP_vessel | vessel | mouse | 2 | 50 | 0,1 | train | |||
vessel_019 | VessAP_vessel | vessel | mouse | 2 | 50 | 0,1 | train | |||
vessel_020 | VessAP_vessel | vessel | mouse | 2 | 50 | 0,1 | train | |||
vessel_021 | VessAP_vessel | vessel | mouse | 2 | 50 | 0,1 | train | |||
vessel_022 | VessAP_vessel | vessel | mouse | 2 | 50 | 0,1 | train | |||
vessel_023 | VessAP_vessel | vessel | mouse | 2 | 50 | 0,1 | train | |||
cfos_000 | cFos-Active_Neurons | cfos | mouse | 1 | 100 | 0,1 | train | |||
cfos_001 | cFos-Active_Neurons | cfos | mouse | 1 | 100 | 0,1 | train | |||
cfos_002 | cFos-Active_Neurons | cfos | mouse | 1 | 100 | 0,1 | train | |||
cfos_003 | cFos-Active_Neurons | cfos | mouse | 1 | 100 | 0,1 | train | |||
cfos_004 | cFos-Active_Neurons | cfos | mouse | 1 | 100 | 0,1 | train | |||
cfos_005 | cFos-Active_Neurons | cfos | mouse | 1 | 100 | 0,1 | train | |||
cfos_006 | cFos-Active_Neurons | cfos | mouse | 1 | 100 | 0,1 | train | |||
cfos_007 | cFos-Active_Neurons | cfos | mouse | 1 | 100 | 0,1 | train | |||
cfos_008 | cFos-Active_Neurons | cfos | mouse | 1 | 100 | 0,1 | train | |||
cfos_009 | cFos-Active_Neurons | cfos | mouse | 1 | 100 | 0,1 | train | |||
cfos_010 | cFos-Active_Neurons | cfos | mouse | 1 | 100 | 0,1 | train | |||
cfos_011 | cFos-Active_Neurons | cfos | mouse | 1 | 100 | 0,1 | train | |||
cfos_012 | cFos-Active_Neurons | cfos | mouse | 1 | 100 | 0,1 | train | |||
cfos_013 | cFos-Active_Neurons | cfos | mouse | 1 | 100 | 0,1 | train | |||
cfos_014 | cFos-Active_Neurons | cfos | mouse | 1 | 100 | 0,1 | train | |||
cfos_015 | cFos-Active_Neurons | cfos | mouse | 1 | 100 | 0,1 | train | |||
cfos_016 | cFos-Active_Neurons | cfos | mouse | 1 | 100 | 0,1 | train | |||
cfos_017 | cFos-Active_Neurons | cfos | mouse | 1 | 100 | 0,1 | train | |||
cfos_018 | cFos-Active_Neurons | cfos | mouse | 1 | 100 | 0,1 | train | |||
cell_nucleus_000 | shannel_cells | cell_nucleus | human | 1 | 200 | 0,1 | train | |||
cell_nucleus_001 | shannel_cells | cell_nucleus | human | 1 | 200 | 0,1 | train | |||
cell_nucleus_002 | shannel_cells | cell_nucleus | human | 1 | 200 | 0,1 | train | |||
cell_nucleus_003 | shannel_cells | cell_nucleus | human | 1 | 200 | 0,1 | train | |||
cell_nucleus_004 | shannel_cells | cell_nucleus | human | 1 | 200 | 0,1 | train | |||
cell_nucleus_005 | shannel_cells | cell_nucleus | human | 1 | 200 | 0,1 | train | |||
cell_nucleus_006 | shannel_cells | cell_nucleus | human | 1 | 200 | 0,1 | train | |||
cell_nucleus_007 | shannel_cells | cell_nucleus | human | 1 | 200 | 0,1 | train | |||
cell_nucleus_008 | shannel_cells | cell_nucleus | human | 1 | 200 | 0,1 | train | |||
cell_nucleus_009 | shannel_cells | cell_nucleus | human | 1 | 200 | 0,1 | train | |||
cell_nucleus_010 | shannel_cells | cell_nucleus | human | 1 | 200 | 0,1 | train | |||
cell_nucleus_011 | shannel_cells | cell_nucleus | human | 1 | 200 | 0,1 | train | |||
ad_plaque_000 | AD_plaques | ad_plaque | mouse | 1 | 300 | 0,1 | train | |||
ad_plaque_001 | AD_plaques | ad_plaque | mouse | 1 | 300 | 0,1 | train | |||
ad_plaque_002 | AD_plaques | ad_plaque | mouse | 1 | 300 | 0,1 | train | |||
ad_plaque_003 | AD_plaques | ad_plaque | mouse | 1 | 300 | 0,1 | train | |||
ad_plaque_004 | AD_plaques | ad_plaque | mouse | 1 | 300 | 0,1 | train | |||
ad_plaque_005 | AD_plaques | ad_plaque | mouse | 1 | 300 | 0,1 | train | |||
ad_plaque_006 | AD_plaques | ad_plaque | mouse | 1 | 300 | 0,1 | train | |||
ad_plaque_007 | AD_plaques | ad_plaque | mouse | 1 | 300 | 0,1 | train | |||
ad_plaque_008 | AD_plaques | ad_plaque | mouse | 1 | 300 | 0,1 | train | |||
ad_plaque_009 | AD_plaques | ad_plaque | mouse | 1 | 300 | 0,1 | train | |||
ad_plaque_010 | AD_plaques | ad_plaque | mouse | 1 | 300 | 0,1 | train | |||
ad_plaque_011 | AD_plaques | ad_plaque | mouse | 1 | 300 | 0,1 | train | |||
ad_plaque_012 | AD_plaques | ad_plaque | mouse | 1 | 300 | 0,1 | train | |||
ad_plaque_013 | AD_plaques | ad_plaque | mouse | 1 | 300 | 0,1 | train | |||
ad_plaque_014 | AD_plaques | ad_plaque | mouse | 1 | 300 | 0,1 | train | |||
ad_plaque_015 | AD_plaques | ad_plaque | mouse | 1 | 300 | 0,1 | train | |||
ad_plaque_016 | AD_plaques | ad_plaque | mouse | 1 | 300 | 0,1 | train | |||
ad_plaque_017 | AD_plaques | ad_plaque | mouse | 1 | 300 | 0,1 | train | |||
ad_plaque_018 | AD_plaques | ad_plaque | mouse | 1 | 300 | 0,1 | train | |||
ad_plaque_019 | AD_plaques | ad_plaque | mouse | 1 | 300 | 0,1 | train | |||
ad_plaque_020 | AD_plaques | ad_plaque | mouse | 1 | 300 | 0,1 | train | |||
ad_plaque_021 | AD_plaques | ad_plaque | mouse | 1 | 300 | 0,1 | train | |||
ad_plaque_022 | AD_plaques | ad_plaque | mouse | 1 | 300 | 0,1 | train | |||
ad_plaque_023 | AD_plaques | ad_plaque | mouse | 1 | 300 | 0,1 | train | |||
ad_plaque_024 | AD_plaques | ad_plaque | mouse | 1 | 300 | 0,1 | train | |||
ad_plaque_025 | AD_plaques | ad_plaque | mouse | 1 | 300 | 0,1 | train | |||
ad_plaque_026 | AD_plaques | ad_plaque | mouse | 1 | 300 | 0,1 | train | |||
ad_plaque_027 | AD_plaques | ad_plaque | mouse | 1 | 300 | 0,1 | train | |||
ad_plaque_028 | AD_plaques | ad_plaque | mouse | 1 | 300 | 0,1 | train | |||
ad_plaque_029 | AD_plaques | ad_plaque | mouse | 1 | 300 | 0,1 | train | |||
ad_plaque_030 | AD_plaques | ad_plaque | mouse | 1 | 300 | 0,1 | train | |||
ad_plaque_031 | AD_plaques | ad_plaque | mouse | 1 | 300 | 0,1 | train | |||
ad_plaque_032 | AD_plaques | ad_plaque | mouse | 1 | 300 | 0,1 | train | |||
ad_plaque_033 | AD_plaques | ad_plaque | mouse | 1 | 300 | 0,1 | train |
SELMA3D (annotated patches)
SELMA3D — Self-supervised Learning for 3D light-sheet Microscopy image segmentation (MICCAI 2024 challenge; Chen et al., arXiv:2501.03880). 3D light-sheet fluorescence microscopy (LSFM) of cleared brain tissue (DISCO-family clearing), covering four structures with different morphologies: blood vessels, c-Fos⁺ active neurons, cell nuclei, and amyloid-β plaques.
This mirror = the public ANNOTATED-PATCHES subset only (89 patches with expert ground-truth masks). Two parts of the full challenge are not here:
- The 3.89 TB unannotated self-supervised pretraining corpus (BioStudies S-BIAD1197) — no masks, not included (irrelevant to a supervised segmentation benchmark, and far too large).
- The 124 held-out test patches (including the unseen microglia structure used for generalization) — withheld by the organizers on Grand Challenge; not publicly downloadable.
The 89 patches reconcile exactly with the paper's Table 2 training rows (24 vessel + 19 c-Fos + 12 nucleus + 34 plaque). The paper abstract's "315" and the MedSAM list's "92" do not match the verifiable public count.
Dataset Details
| Field | Value |
|---|---|
| Modality | 3D light-sheet fluorescence microscopy (LSFM), cleared tissue |
| Body part | Brain (mouse + human donor) |
| Task | 3D semantic segmentation (binary, per structure) |
| Patches (samples) | 89 (1 mask each) |
| Format | NIfTI .nii.gz (16-bit signed / float, LPS+); nnU-Net file naming |
| Split | train only (test set held out by organizers) |
| License | CC BY-NC 4.0 (see note) |
| Source | EBI BioStudies S-BIAD1196, DOI 10.6019/S-BIAD1196 (official) |
| Challenge | https://selma3d.grand-challenge.org/ (MICCAI 2024) |
License note (a real conflict — read before commercial use)
The BioStudies deposit metadata legally attaches CC BY 4.0 to these files, but the Grand Challenge data page states the data is CC BY-NC. Both allow redistribution with attribution; they differ only on commercial use. This mirror is tagged with the more restrictive CC BY-NC 4.0 out of caution. Either way, use must cite the SELMA3D challenge and the four source-dataset papers below.
Structures / subsets
| Folder | Structure | Specimen | Patches | Image channels | Source dataset |
|---|---|---|---|---|---|
VessAP_vessel |
Blood vessels | mouse | 24 | 2 (_0000 WGA microvessels, _0001 EB major vessels) |
VesSAP (Todorov 2020) |
cFos-Active_Neurons |
c-Fos⁺ active neurons | mouse | 19 | 1 | Kaltenecker 2024 |
shannel_cells |
Cell nuclei | human | 12 | 1 | SHANEL (Zhao 2020) |
AD_plaques |
Amyloid-β plaques | mouse | 34 | 1 | DISCO-MS (Bhatia 2022) |
Ground truth
One expert-consensus mask per patch, produced by a hierarchical VR-based 3D annotation process: initial semantic segmentation by 4 LSFM-expert annotators → verified/refined by a senior expert → approved by 2 organizing-team leads. There are no competing rater/auto tiers — this single mask is the gold standard.
Loader notes (data is stored verbatim — these are read-side caveats)
- Vessel = 2 channels. Stack
patchvolume_NNN_0000.nii.gz(WGA microvessels) andpatchvolume_NNN_0001.nii.gz(EB major vessels); the other 3 structures are single-channel. - Binarize masks with
mask > 0, nevermask == 1. The vessel GT encoding is heterogeneous across patches: 19 use{0,1}, 4 use{0,255}, 1 uses{0,95,255}.mask > 0yields the correct binary vessel foreground for all; the other 3 structures are already clean{0,1}. - Squeeze + cast raw. Some vessel raw volumes are 4D
(X,Y,Z,1)and dtypes vary (int16 / float32 / big-endian int16); squeeze the trailing singleton and cast to float before intensity normalization. c-Fos/nucleus/plaque raw arefloat643D. - Patch spatial sizes differ by structure: vessel
500×500×50, c-Fos100³, nucleus200³, plaque300³.
Relationship to other datasets (lineage / leakage)
SELMA3D is assembled from the Ertürk lab's prior published LSFM datasets, which are also its mandatory citations: vessels ← VesSAP (Todorov 2020), nuclei ← SHANEL (Zhao 2020), plaques ← DISCO-MS (Bhatia 2022), c-Fos ← Kaltenecker 2024. The subset folder names preserve this provenance. There is no per-sample cross-reference ID; overlap risk exists only if you separately benchmark VesSAP/SHANEL/DISCO-MS. No relation to CT/MRI suites or to other microscopy/EM sets (NucMM, UroCell, CREMI, AxonEM, LungVis10).
Repository structure
SELMA3D_training_annotated/
VessAP_vessel/{raw,gt}/ # raw: patchvolume_NNN_{0000,0001}.nii.gz ; gt: patchvolume_NNN.nii.gz
cFos-Active_Neurons/{raw,gt}/ # raw: patchvolume_NNN_0000.nii.gz ; gt: patchvolume_NNN.nii.gz
shannel_cells/{raw,gt}/
AD_plaques/{raw,gt}/
train.jsonl # canonical per-sample index (image channels + mask + metadata)
dataset_metadata.json # dataset-level provenance & structure description
train.jsonl record schema
{"patch_id": "vessel_000", "subset": "VessAP_vessel", "structure": "vessel",
"specimen": "mouse", "split": "train",
"image": ["SELMA3D_training_annotated/VessAP_vessel/raw/patchvolume_000_0000.nii.gz",
"SELMA3D_training_annotated/VessAP_vessel/raw/patchvolume_000_0001.nii.gz"],
"mask": "SELMA3D_training_annotated/VessAP_vessel/gt/patchvolume_000.nii.gz",
"num_channels": 2, "channel_names": ["WGA_microvessels", "EB_major_vessels"],
"shape": [500, 500, 50], "gt_label_values": [0, 1]}
Source & citation
- BioStudies (annotated patches): https://www.ebi.ac.uk/biostudies/bioimages/studies/S-BIAD1196 — DOI
10.6019/S-BIAD1196 - BioStudies (unannotated pretraining, NOT mirrored here): S-BIAD1197 — DOI
10.6019/S-BIAD1197 - Challenge: https://selma3d.grand-challenge.org/ (MICCAI 2024); proposal Zenodo
10.5281/zenodo.10991463
@article{chen2025selma3d,
author = {Chen, Ying and Al-Maskari, Rami and Horvath, Izabela and Ali, Mayar and
H{"o}her, Luciano and Yang, Kaiyuan and Lin, Zengming and Zhai, Zhiwei and
Shen, Mengzhe and Xun, Daniel and Wang, Yan and Xu, Tingying and
Goubran, Maged and Wu, Yu and Mori, Kensaku and Paetzold, Johannes C. and
Ert{"u}rk, Ali},
title = {{SELMA3D} challenge: Self-supervised learning for 3D light-sheet
microscopy image segmentation},
journal = {arXiv preprint arXiv:2501.03880},
year = {2025},
doi = {10.48550/arXiv.2501.03880}
}
@article{todorov2020vessap,
author = {Todorov, Mihail Ivilinov and Paetzold, Johannes C. and Schoppe, Oliver and others},
title = {Machine learning analysis of whole mouse brain vasculature},
journal = {Nature Methods}, volume = {17}, pages = {442--449}, year = {2020},
doi = {10.1038/s41592-020-0792-1}
}
@article{zhao2020shanel,
author = {Zhao, Shan and Todorov, Mihail Ivilinov and Cai, Ruiyao and others},
title = {Cellular and Molecular Probing of Intact Human Organs},
journal = {Cell}, volume = {180}, number = {4}, pages = {796--812}, year = {2020},
doi = {10.1016/j.cell.2020.01.030}
}
@article{bhatia2022discoms,
author = {Bhatia, Harsharan Singh and Brunner, Andreas and Rong, Zhouyi and others},
title = {Spatial proteomics in three-dimensional intact specimens},
journal = {Cell}, volume = {185}, number = {26}, pages = {5040--5058}, year = {2022},
doi = {10.1016/j.cell.2022.11.021}
}
@article{kaltenecker2024cfos,
author = {Kaltenecker, Doris and Al-Maskari, Rami and Negwer, Moritz and others},
title = {Virtual reality-empowered deep-learning analysis of brain cells},
journal = {Nature Methods}, volume = {21}, pages = {1306--1315}, year = {2024},
doi = {10.1038/s41592-024-02245-2}
}
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