Meta-training has been empirically demonstrated to be the most effective pre-training method for few-shot learning of medical image classifiers (i.e., classifiers modeled with small training sets). However, the effectiveness of meta-training relies on the availability of a reasonable number of hand-designed classification tasks, which are costly to obtain, and consequently rarely available. In this paper, we propose a new method to unsupervisedly design a large number of classification tasks to meta-train medical image classifiers. We evaluate our method on a breast dynamically contrast enhanced magnetic resonance imaging (DCE-MRI) data set that has been used to benchmark few-shot training methods of medical image classifiers. Our results s...
Multimodal learning, here defined as learning from multiple input data types, has exciting potential...
In this work, metric-based meta-learning models are proposed to learn a generic model embedding that...
Clinical trials increasingly employ medical imaging data in conjunction with supervised classifiers,...
The training of medical image analysis systems using machine learning approaches follows a common sc...
While deep learning approaches have led to breakthroughs in many medical image analysis tasks, the a...
In the medical research domain, limited data and high annotation costs have made efficient classific...
Supervised learning is ubiquitous in medical image analysis. In this paper we consider the problem o...
Supervised learning is ubiquitous in medical image analysis. In this paper we consider the problem o...
The unavailability of large amounts of well-labeled data poses a significant challenge in many medic...
Widely used traditional supervised deep learning methods require a large number of training samples ...
Purpose: The aim of this work is to develop a neural network training framework for continual traini...
<div><p>Clinical trials increasingly employ medical imaging data in conjunction with supervised clas...
Clinical trials increasingly employ medical imaging data in conjunction with supervised classifiers,...
The aim of this work is to develop a neural network training framework for continual acquisition of ...
Meta learning approaches to few-shot classification are computationally efficient at test time requi...
Multimodal learning, here defined as learning from multiple input data types, has exciting potential...
In this work, metric-based meta-learning models are proposed to learn a generic model embedding that...
Clinical trials increasingly employ medical imaging data in conjunction with supervised classifiers,...
The training of medical image analysis systems using machine learning approaches follows a common sc...
While deep learning approaches have led to breakthroughs in many medical image analysis tasks, the a...
In the medical research domain, limited data and high annotation costs have made efficient classific...
Supervised learning is ubiquitous in medical image analysis. In this paper we consider the problem o...
Supervised learning is ubiquitous in medical image analysis. In this paper we consider the problem o...
The unavailability of large amounts of well-labeled data poses a significant challenge in many medic...
Widely used traditional supervised deep learning methods require a large number of training samples ...
Purpose: The aim of this work is to develop a neural network training framework for continual traini...
<div><p>Clinical trials increasingly employ medical imaging data in conjunction with supervised clas...
Clinical trials increasingly employ medical imaging data in conjunction with supervised classifiers,...
The aim of this work is to develop a neural network training framework for continual acquisition of ...
Meta learning approaches to few-shot classification are computationally efficient at test time requi...
Multimodal learning, here defined as learning from multiple input data types, has exciting potential...
In this work, metric-based meta-learning models are proposed to learn a generic model embedding that...
Clinical trials increasingly employ medical imaging data in conjunction with supervised classifiers,...