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ACDC Challenge
Deep learning techniques for automatic MRI cardiac multi-structures segmentation and diagnosis: Is the problem solved? -
Vestibular Schwannoma MRI Segmentation
The dataset used for vestibular schwannoma MRI segmentation -
MSD Spleen
The MSD Spleen dataset consists of n = 61 portal-venous phase contrast-enhanced abdominal CT scans, out of which n = 41 (67%) contained annotations for the spleen. -
Medical Segmentation Decathlon (MSD)
The Medical Segmentation Decathlon (MSD) is a collection of 10 benchmark datasets for segmentation spanning different body parts and modalities. -
BraTS 2020
Automatic segmentation of brain tumors is an essential but challenging step for extracting quantitative imaging biomarkers for accurate tumor detection, diagnosis, prognosis,... -
Liver Tumor Segmentation
Liver Tumor Segmentation dataset contains images of liver tumors from CT scans. The dataset is used for automatic segmentation of liver tumors. -
Brain Anatomy Segmentation from US images
Brain Anatomy Segmentation from US images dataset contains images of brain anatomy from ultrasound scans. The dataset is used for automatic segmentation of brain ventricles and... -
BraTS 2021
Multi-parametric MRI scans from 2000 patients were used for BraTS2021, 1251 of which were provided with segmentation labels to the participants for developing their algorithms,... -
Medical Segmentation Decathlon
The Medical Segmentation Decathlon dataset is a benchmark for medical image segmentation, containing 131 CT volumes. -
Multi-Atlas Labeling Challenge (MALC) dataset
Three challenging medical applications: whole-brain, whole-body and retinal layer segmentation. -
ISIC2017 and ISIC2018
Skin lesion segmentation dataset -
REFUGE2 dataset
The REFUGE2 dataset is a multi-annotated dataset for optic-cup segmentation. The dataset consists of 1200 fundus images, each annotated by seven radiologists. -
SkinSAM: Empowering Skin Cancer Segmentation with Segment Anything Model
Skin cancer segmentation using Segment Anything Model