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LesionPaste: One-Shot Anomaly Detection for Medical Images
LesionPaste is a one-shot anomaly detection framework for medical images that utilizes true anomalies from a single sample and synthesizes artificial anomalous samples. -
Osteoarthritis Initiative (OAI) dataset
Knee OsteoArthritis (KOA) dataset used for early detection of KOA (KL-0 vs KL-2) using Vision Transformer (ViT) model with selective shuffled position embedding and key-patch... -
Head CT scans dataset
The head CT scans dataset is used for training and evaluation of the proposed method. -
CQ500 dataset
The CQ500 dataset is a head CT scans dataset used for training and evaluation of the proposed method. -
Evaluation framework for algorithms segmenting short axis cardiac MRI
The MICCAI 2009 LV Segmentation Challenge (LV-09) dataset contains 45 subjects with expert annotations. -
SI-170 dataset
The dataset used in this paper is a collection of T1, T2, and T2-FLAIR images acquired at a 3T SIEMENS scanner from 170 MS patients. -
GE-30 dataset
The dataset used in this paper is a collection of T1, T2, and T2-FLAIR images acquired at a 3T GE scanner from 30 MS patients. -
e_ophtha_EX
The dataset is used for simultaneous segmentation of multi-anatomical retinal structures using a multi-task deep neural network. -
GlaS dataset
The GlaS dataset contains 165 H&E-stained histopathology patches extracted from 16 WSIs. -
Breast Cancer
A neural network with single-hidden layer of 64 hidden units and ReLU activations. A prior precision of ε = 1, a minibatch size of 128 and 16 Monte-Carlo samples are used for... -
UMN dataset
The UMN dataset consists of three different crowd scenes, and the dataset has 11 videos from these scenes, with a resolution of 240 × 320. Each video sequence represents a... -
KERMANY dataset
The KERMANY dataset contains 256 OCT scans from DME patients. -
OPTIMA dataset
The OPTIMA dataset contains 30 OCT volumes divided into training and testing sets, each set containing 15 volumes. -
OPTIMA, KERMANY, and UMN datasets
Three public datasets namely OPTIMA, KERMANY, and UMN were employed to evaluate the proposed method.