Datasets:
dataset_info:
features:
- name: image_id
dtype: string
- name: split
dtype: string
- name: image
dtype: image
- name: mask
dtype: image
- name: instance_mask
dtype: image
- name: overlay
dtype: image
- name: num_instances
dtype: int32
- name: height
dtype: int32
- name: width
dtype: int32
- name: is_mimm_subset
dtype: bool
- name: acquisition
dtype: string
splits:
- name: train
num_bytes: 1388742104
num_examples: 298
- name: validation
num_bytes: 916782499
num_examples: 199
download_size: 2305644717
dataset_size: 2305524603
configs:
- config_name: default
data_files:
- split: train
path: data/train-*
- split: validation
path: data/validation-*
pretty_name: SegPC-2021
license: cc-by-nc-sa-4.0
size_categories:
- n<1K
tags:
- medical
- microscopy
- multiple-myeloma
- plasma-cells
- cell-segmentation
- hematology
task_categories:
- image-segmentation
SegPC-2021 — Segmentation of Multiple Myeloma Plasma Cells
Public mirror of the ISBI-2021 SegPC challenge dataset (instance segmentation of Multiple Myeloma plasma cells in microscopic images), created by SBILab, IIIT-Delhi & AIIMS New Delhi (Anubha Gupta, Ritu Gupta et al.). Mirrored for the EasyMedSeg / MedSphere segmentation benchmark.
What this is
Brightfield microscopy of bone-marrow aspirate slides from Multiple Myeloma patients, Jenner–Giemsa stained and stain-color-normalized (GCTI-SN). The task is to segment each cell of interest (cytoplasm + nucleus).
Splits (only ground-truth-bearing data is mirrored)
| split | images | notes |
|---|---|---|
train |
298 | full train set, all with GT |
validation |
199 | source has 200 images; 610.bmp ships no mask and is dropped |
The challenge test split (277 images) is excluded — its ground truth is withheld by the organizers (test was leaderboard-only).
Acquisition / image sizes
Two cameras were used: Olympus (2040×1536) and Nikon (2560×1920). The Nikon images are
flagged is_mimm_subset = true — see the overlap warning below.
Columns
image— RGB microscopy image (PNG, pixel-lossless re-encode of the source BMP).mask— semantic ground truth,{0 = background, 1 = cytoplasm, 2 = nucleus}.- whole-cell GT =
mask > 0; nucleus GT =mask == 2; cytoplasm-only =mask == 1.
- whole-cell GT =
instance_mask—{0 = background, 1..N}, a distinct id per cell of interest.overlay— half-resolution viewer aid (nucleus=red, cytoplasm=green); not ground truth.image_id,split,num_instances,height,width,is_mimm_subset,acquisition.
Mask encoding note (reformatting)
The original release ships one grayscale BMP per cell instance (y/<id>_<k>.bmp) with raw
values {0, 20, 40} (background / cytoplasm / nucleus). This mirror reformats those into the
per-image mask (semantic 0/1/2) and instance_mask (instance ids) columns above. No pixels are
otherwise altered.
⚠️ "Cells of interest" caveat
Ground truth is provided only for designated cells of interest — a microscopic field may contain additional plasma cells that are intentionally left unlabeled (treated as background). The official challenge metric evaluates cells of interest only.
⚠️ Cross-dataset overlap (evaluation leakage)
The Nikon 2560×1920 images (is_mimm_subset = true) correspond to the MiMM_SBILab dataset,
and SegPC shares the same SBILab/AIIMS Jenner-Giemsa MM pipeline as the SN-AM dataset. No
per-image cross-reference table is published; dedup by image content before co-benchmarking
SegPC-2021 against MiMM_SBILab or SN-AM(MM).
License
CC BY-NC-SA 4.0 — non-commercial, share-alike, attribution required. By using this data you agree to cite the publications below.
Citation
- A. Gupta, R. Duggal, S. Gehlot, R. Gupta, A. Mangal, L. Kumar, N. Thakkar, D. Satpathy, "GCTI-SN: Geometry-Inspired Chemical and Tissue Invariant Stain Normalization of Microscopic Medical Images," Medical Image Analysis 65, 2020. doi:10.1016/j.media.2020.101788
- S. Gehlot, A. Gupta, R. Gupta, "EDNFC-Net: Convolutional Neural Network with Nested Feature Concatenation for Nuclei-Instance Segmentation," ICASSP 2020, pp. 1389–1393.
- A. Gupta, P. Mallick, O. Sharma, R. Gupta, R. Duggal, "PCSeg: Color model driven probabilistic multiphase level set based tool for plasma cell segmentation in multiple myeloma," PLoS ONE 13(12): e0207908, 2018. doi:10.1371/journal.pone.0207908
- A. Gupta, S. Gehlot, S. Goswami, et al., "SegPC-2021: A challenge & dataset on segmentation of Multiple Myeloma plasma cells from microscopic images," Medical Image Analysis 83, 2023. doi:10.1016/j.media.2022.102677
Dataset DOI: 10.21227/7np1-2q42 (IEEE DataPort). Source: Kaggle sbilab/segpc2021dataset.