Datasets:
image stringclasses 10
values | mask stringclasses 10
values | label listlengths 4 4 | modality stringclasses 1
value | dataset stringclasses 1
value | official_split stringclasses 1
value | patient_id stringclasses 10
values |
|---|---|---|---|---|---|---|
data/nii/COVID-19-CT-Seg_20cases/coronacases_009.nii.gz | data/nii/COVID-19-CT-Seg_20cases/Lung_and_Infection_Mask/coronacases_009.nii.gz | [
"left lung",
"right lung",
"COVID-19 infection",
"lung"
] | CT | COVID19 | unknown | coronacases_009.nii.gz |
data/nii/COVID-19-CT-Seg_20cases/coronacases_003.nii.gz | data/nii/COVID-19-CT-Seg_20cases/Lung_and_Infection_Mask/coronacases_003.nii.gz | [
"left lung",
"right lung",
"COVID-19 infection",
"lung"
] | CT | COVID19 | unknown | coronacases_003.nii.gz |
data/nii/COVID-19-CT-Seg_20cases/coronacases_008.nii.gz | data/nii/COVID-19-CT-Seg_20cases/Lung_and_Infection_Mask/coronacases_008.nii.gz | [
"left lung",
"right lung",
"COVID-19 infection",
"lung"
] | CT | COVID19 | unknown | coronacases_008.nii.gz |
data/nii/COVID-19-CT-Seg_20cases/coronacases_006.nii.gz | data/nii/COVID-19-CT-Seg_20cases/Lung_and_Infection_Mask/coronacases_006.nii.gz | [
"left lung",
"right lung",
"COVID-19 infection",
"lung"
] | CT | COVID19 | unknown | coronacases_006.nii.gz |
data/nii/COVID-19-CT-Seg_20cases/coronacases_005.nii.gz | data/nii/COVID-19-CT-Seg_20cases/Lung_and_Infection_Mask/coronacases_005.nii.gz | [
"left lung",
"right lung",
"COVID-19 infection",
"lung"
] | CT | COVID19 | unknown | coronacases_005.nii.gz |
data/nii/COVID-19-CT-Seg_20cases/coronacases_007.nii.gz | data/nii/COVID-19-CT-Seg_20cases/Lung_and_Infection_Mask/coronacases_007.nii.gz | [
"left lung",
"right lung",
"COVID-19 infection",
"lung"
] | CT | COVID19 | unknown | coronacases_007.nii.gz |
data/nii/COVID-19-CT-Seg_20cases/coronacases_002.nii.gz | data/nii/COVID-19-CT-Seg_20cases/Lung_and_Infection_Mask/coronacases_002.nii.gz | [
"left lung",
"right lung",
"COVID-19 infection",
"lung"
] | CT | COVID19 | unknown | coronacases_002.nii.gz |
data/nii/COVID-19-CT-Seg_20cases/coronacases_001.nii.gz | data/nii/COVID-19-CT-Seg_20cases/Lung_and_Infection_Mask/coronacases_001.nii.gz | [
"left lung",
"right lung",
"COVID-19 infection",
"lung"
] | CT | COVID19 | unknown | coronacases_001.nii.gz |
data/nii/COVID-19-CT-Seg_20cases/coronacases_010.nii.gz | data/nii/COVID-19-CT-Seg_20cases/Lung_and_Infection_Mask/coronacases_010.nii.gz | [
"left lung",
"right lung",
"COVID-19 infection",
"lung"
] | CT | COVID19 | unknown | coronacases_010.nii.gz |
data/nii/COVID-19-CT-Seg_20cases/coronacases_004.nii.gz | data/nii/COVID-19-CT-Seg_20cases/Lung_and_Infection_Mask/coronacases_004.nii.gz | [
"left lung",
"right lung",
"COVID-19 infection",
"lung"
] | CT | COVID19 | unknown | coronacases_004.nii.gz |
COVID-19 CT Segmentation Dataset
Dataset Description
The COVID-19 CT Segmentation dataset for lung and COVID-19 infection segmentation from CT scans. This dataset contains CT scans with dense segmentation annotations.
Dataset Details
- Modality: CT
- Target: left lung, right lung, COVID-19 infection
- Format: NIfTI (.nii.gz)
Dataset Structure
Each sample in the JSONL file contains:
{
"image": "path/to/image.nii.gz",
"mask": "path/to/mask.nii.gz",
"label": ["organ1", "organ2", ...],
"modality": "CT",
"dataset": "COVID19",
"official_split": "train",
"patient_id": "patient_id"
}
Usage
Load Metadata
from datasets import load_dataset
# Load the dataset
ds = load_dataset("Angelou0516/covid19-ct-seg")
# Access a sample
sample = ds['train'][0]
print(f"Patient ID: {sample['patient_id']}")
print(f"Image: {sample['image']}")
print(f"Mask: {sample['mask']}")
print(f"Labels: {sample['label']}")
Load Images
from huggingface_hub import snapshot_download
import nibabel as nib
import os
# Download the full dataset
local_path = snapshot_download(
repo_id="Angelou0516/covid19-ct-seg",
repo_type="dataset"
)
# Load a sample
sample = ds['train'][0]
image = nib.load(os.path.join(local_path, sample['image']))
mask = nib.load(os.path.join(local_path, sample['mask']))
# Get numpy arrays
image_data = image.get_fdata()
mask_data = mask.get_fdata()
print(f"Image shape: {image_data.shape}")
print(f"Mask shape: {mask_data.shape}")
Citation
@article{covid19,
title={COVID-19 CT Lung and Infection Segmentation Dataset},
year={2023}
}
License
CC-BY-4.0
Dataset Homepage
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