Datasets:
dataset_info:
features:
- name: organ
dtype: string
- name: image
dtype: image
- name: binary_mask
dtype: image
- name: classes_mask
dtype: image
- name: volume_id
dtype: int32
- name: slice_id
dtype: int32
splits:
- name: train
num_bytes: 8036673401.379
num_examples: 95311
download_size: 8926670093
dataset_size: 8036673401.379
configs:
- config_name: default
data_files:
- split: train
path: data/train-*
license: cc-by-4.0
task_categories:
- image-segmentation
language:
- en
tags:
- organs
- medical
- ct
- mri
pretty_name: Mini Medical Segmentation Decathlon 244
size_categories:
- 10K<n<100K
Processed and Reduced Medical Segmentation Decathlon Dataset
The miniMSD dataset is a medical image segmentation benchmark covering 10 human organs. It is derived from the Medical Segmentation Decathlon (MSD) by converting volumetric scans from NIfTI (NII) format into serialized 2D RGB images, alongside their corresponding segmentation masks. The dataset is provided in multiple resolution variants (244 and 512), enabling easier use, off-the-shelf accessibility, and flexible experimentation.
Dataset Details
The dataset covers 10 human body organs, listed below. Each organ includes up to 40 volumes, with each volume consisting of a variable number of image slices. Each dataset entry contains the following components: the organ type, the image, a binary mask, a detailed (multi-class) mask, a volume ID, and a slice ID. The image, binary mask, and detailed mask are all provided as PIL images. The binary mask contains two labels: 0 for background and 1 for the target region. The detailed mask contains multiple labels (0, 1, 2, 3, …), where each label corresponds to a specific anatomical structure. The mapping of label indices to structures is provided below.
| Organ | Number of Volumes | Total Slices | Avg. Slices per Volume | % of Total Slices |
|---|---|---|---|---|
| Prostate | 32 | 1204 | 37.625 | 1.26% |
| Heart | 20 | 2271 | 113.550 | 2.38% |
| Hippocampus | 40 | 2754 | 68.850 | 2.89% |
| HepaticVessel | 40 | 5796 | 144.900 | 6.08% |
| BrainTumour | 40 | 6200 | 155.000 | 6.51% |
| Spleen | 40 | 6964 | 174.100 | 7.31% |
| Pancreas | 40 | 7068 | 176.700 | 7.42% |
| Colon | 40 | 7344 | 183.600 | 7.71% |
| Lung | 40 | 22510 | 562.750 | 23.62% |
| Liver | 40 | 33200 | 830.000 | 34.83% |
Labels Mapping
BrainTumour
- 0: background
- 1: necrotic / non-enhancing tumor
- 2: edema
- 3: enhancing tumor
Heart
- 0: background
- 1: left atrium
Liver
- 0: background
- 1: liver
- 2: tumor
Hippocampus
- 0: background
- 1: anterior
- 2: posterior
Prostate
- 0: background
- 1: peripheral zone
- 2: transition zone
Lung
- 0: background
- 1: nodule
Pancreas
- 0: background
- 1: pancreas
- 2: tumor
HepaticVessel
- 0: background
- 1: vessel
- 2: tumor
Spleen
- 0: background
- 1: spleen
Colon
- 0: background
- 1: colon
Uses
from datasets import load_dataset
miniMSD244 = load_dataset("chehablaborg/miniMSD244", split="train")
sample_id = 312
organ = miniMSD244[sample_id]["organ"]
image = miniMSD244[sample_id]["image"]
binary_mask = miniMSD244[sample_id]["binary_mask"]
classes_mask = miniMSD244[sample_id]["classes_mask"]
plt.imshow(image, cmap="grey")
plt.show()
Authors
Citation
@dataset{minimsd2026,
title = {MiniMSD},
author = {Toumieh, Charbel and Mustapha, Ahmad and Chehab, Ali},
year = {2026},
publisher = {Hugging Face},
howpublished = {\url{https://huggingface.co/datasets/chehablaborg/miniMSD244}},
}
Acknowledgment
Chehab lab @ 2026