-
Self-Adaptive 2D-3D Ensemble of Fully Convolutional Networks for Medical Imag...
The proposed 2D-3D FCN ensemble is constructed in two phases as shown in Fig. 1. In Phase I, the 2D FCN and 3D FCN architectures are adapted to the specific dataset using a... -
MSD Pancreas and MSD Colon
The dataset used for training and testing the Slide-SAM model, which consists of 3D medical images and their corresponding segmentation masks. -
WORD testset
The dataset used for training and testing the Slide-SAM model, which consists of 3D medical images and their corresponding segmentation masks. -
CHAOS and BTCV testsets
The dataset used for training and testing the Slide-SAM model, which consists of 3D medical images and their corresponding segmentation masks. -
nnu-net: Self-adapting framework for u-net-based medical image segmentation
nnu-net: Self-adapting framework for u-net-based medical image segmentation. -
Duke University dataset
Segmentation of retinal OCT B-scans into 7 retinal layers and accumulated fluid. -
Visceral dataset
Abdominal organ segmentation in 20 test ceCT scans of the Visceral dataset. -
Multi-Atlas Labeling Challenge (MALC) dataset
Three challenging medical applications: whole-brain, whole-body and retinal layer segmentation. -
MedGen3D: A Deep Generative Framework for Paired 3D Image and Mask Generation
Acquiring and annotating sufficient labeled data is crucial in developing accurate and robust learning-based models, but obtaining such data can be challenging in many medical... -
V-Net: Fully Convolutional Neural Networks for Volumetric Medical Image Segme...
The V-Net is a deep learning model for medical image segmentation that uses a U-Net architecture. -
3D Unet: A Deep Learning Model for Medical Image Segmentation
The 3D Unet is a deep learning model for medical image segmentation that uses a U-Net architecture. -
R2U-Net: A Deep Learning Model for Medical Image Segmentation
The R2U-Net is a deep learning model for medical image segmentation that combines U-Net, ResNet, and recurrent neural network (RCNN). -
Synapse multi-organ dataset
The Synapse multi-organ dataset is a collection of 30 abdominal CT scans with corresponding segmentation masks. -
ISIC2017 and ISIC2018
Skin lesion segmentation dataset -
Contrastive learning of global and local features for medical image segmentation
A dataset for medical image segmentation with limited annotations -
2015 MICCAI sub-challenge on automatic polyp detection dataset
Four medical image segmentation datasets, covering various imaging modalities such as colonoscopy, dermoscopy, and microscopy. -
Optic Disc/Cup Segmentation
Optic disc and cup segmentation dataset used for evaluating the efficiency of the proposed Translation Variant Convolution (TVConv) operator. -
BraTS’19 dataset
The BraTS’19 dataset is used for testing the proposed FNOSeg3D model. It contains 335 cases of gliomas, each with four modalities of T1, post-contrast T1, T2, and T2-FLAIR... -
COSMOS 553K
The COSMOS 553K dataset is a large-scale medical image segmentation dataset.