International audienceTraining deep ConvNets requires large labeled datasets. However, collecting pixel-level labels for medical image segmentation is very expensive and requires a high level of expertise. In addition, most existing segmentation masks provided by clinical experts focus on specific anatomical structures. In this paper, we propose a method dedicated to handle such partially labeled medical image datasets. We propose a strategy to identify pixels for which labels are correct, and to train Fully Convolutional Neural Networks with a multi-label loss adapted to this context. In addition, we introduce an iterative confidence self-training approach inspired by curriculum learning to relabel missing pixel labels, which relies on sel...
International audienceFully Convolutional neural Networks (FCNs) are the most popular models for med...
Acquiring medical images and their segmentation labels is often time-consuming and labor-intensive. ...
peer reviewedData scarcity is a common issue when training deep learning models for digital patholog...
The data-driven nature of deep learning (DL) models for semantic segmentation requires a large numbe...
Medical image segmentation is a key step for various applications, such as image-guided radiation th...
Purpose Training deep neural networks usually require a large number of human-annotated data. For o...
The surge of supervised learning methods for segmentation lately has underscored the critical role o...
Models capable of leveraging unlabelled data are crucial in overcoming large distribution gaps betwe...
Artificial intelligence, and more precisely deep learning, has shown remarkable performance in the f...
Medical imaging modalities such as computed tomography (CT) and magnetic resonance imaging (MRI) pla...
Recent advancements in medical imaging research have shown that digitized high-resolution microscopi...
Deep learning models have demonstrated remarkable success in multi-organ segmentation but typically ...
Background and Objective: Semi-supervised learning for medical image segmentation is an important ar...
In this paper, we propose a novel mutual consistency network (MC-Net+) to effectively exploit the un...
One of the fundamental challenges in supervised learning for multimodal image registration is the la...
International audienceFully Convolutional neural Networks (FCNs) are the most popular models for med...
Acquiring medical images and their segmentation labels is often time-consuming and labor-intensive. ...
peer reviewedData scarcity is a common issue when training deep learning models for digital patholog...
The data-driven nature of deep learning (DL) models for semantic segmentation requires a large numbe...
Medical image segmentation is a key step for various applications, such as image-guided radiation th...
Purpose Training deep neural networks usually require a large number of human-annotated data. For o...
The surge of supervised learning methods for segmentation lately has underscored the critical role o...
Models capable of leveraging unlabelled data are crucial in overcoming large distribution gaps betwe...
Artificial intelligence, and more precisely deep learning, has shown remarkable performance in the f...
Medical imaging modalities such as computed tomography (CT) and magnetic resonance imaging (MRI) pla...
Recent advancements in medical imaging research have shown that digitized high-resolution microscopi...
Deep learning models have demonstrated remarkable success in multi-organ segmentation but typically ...
Background and Objective: Semi-supervised learning for medical image segmentation is an important ar...
In this paper, we propose a novel mutual consistency network (MC-Net+) to effectively exploit the un...
One of the fundamental challenges in supervised learning for multimodal image registration is the la...
International audienceFully Convolutional neural Networks (FCNs) are the most popular models for med...
Acquiring medical images and their segmentation labels is often time-consuming and labor-intensive. ...
peer reviewedData scarcity is a common issue when training deep learning models for digital patholog...