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SenoMorph
SenoMorph is a senescence-conditioned cell morphology benchmark of single-cell DAPI crops paired with continuous, transcriptome-derived senescence scores. The dataset accompanies an anonymous NeurIPS 2026 Datasets & Benchmarks submission.
Composition
| Subset | Cells | Score-conditioned crops |
|---|---|---|
| Real (lung) | 41,702 | — |
| Real (prostate) | 28,845 | — |
| Real (skin) | 16,844 | — |
| Real total | 87,391 | — |
| Companion (lung) | 41,702 | 417,020 (×10) |
| Companion (prost.) | 28,845 | 288,450 (×10) |
| Companion (skin) | 16,844 | 168,440 (×10) |
| Companion total | 87,391 | 873,910 |
Each instance carries five attributes (paper §2 attribute card):
tissue, cell_type_name, senescence_score, nuclear_area (mask
pixel count, threshold > 10), and dapi_intensity (mean intensity
within the mask). The image is a 64×64 grayscale uint8 DAPI crop.
Splits
70 / 10 / 20 train / val / test, stratified by cell type within each tissue. The companion set inherits its split from the source real cell.
Real subset
Each real cell has a senescence score produced by DeepScence from its
matched single-cell transcriptome and min-max normalized to [0,1]
within its tissue. Cell-type labels are produced by CellTypist.
Companion subset
For each real source cell, the model generates ten score-conditioned
images at target scores evenly spaced over [0,1]. The companion subset
is intended for downstream augmentation tasks (e.g., senescent-cell
classification) and is not used as ground truth for any evaluation
metric in the accompanying paper.
Loading
Available configs:
name= |
Description |
|---|---|
real |
All three tissues, real DAPI cells |
companion |
All three tissues, generated companion cells |
real_lung / real_prostate / real_skin |
Real cells, single tissue |
companion_lung / companion_prostate / companion_skin |
Companion cells, single tissue |
Each config has train, validation, and test splits.
from datasets import load_dataset
# Full real benchmark, training split (3 tissues combined)
real_train = load_dataset('anon-neuripsdb26/SenoMorph', name='real', split='train')
# Real lung test split only
lung_test = load_dataset('anon-neuripsdb26/SenoMorph', name='real_lung', split='test')
# Companion data (873,910 generated cells), train split
comp_train = load_dataset('anon-neuripsdb26/SenoMorph', name='companion', split='train')
# Companion skin only, validation split
skin_val_comp = load_dataset('anon-neuripsdb26/SenoMorph', name='companion_skin', split='validation')
Schema
image PIL.Image (grayscale 64×64, PNG-encoded)
tissue str ('lung' | 'prostate' | 'skin')
cell_type_id int32 (raw CellTypist integer)
cell_type_name str ('Epithelial cells' | 'T cells' | 'Fibroblasts' | ...)
senescence_score float32 in [0, 1]
real: DeepScence min-max norm within tissue
companion: target conditioning score from linspace(0,1,10)
nuclear_area int32 (mask pixel count, threshold > 10)
dapi_intensity float32 (mean intensity within mask)
split str ('train' | 'val' | 'test')
cell_id int64
real: row index in source set
companion: source real cell id (10 companion rows share a cell_id)
License
Released under CC-BY-4.0. Raw Xenium outputs are publicly available from
the 10x Genomics dataset portal. The dataset contains no personally
identifiable information; 64×64 DAPI nuclear crops cannot be traced
back to individual donors.
Anonymous
This release accompanies an anonymous NeurIPS 2026 Datasets & Benchmarks submission. Author identification is intentionally suppressed during review.
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