The prowess that makes few-shot learning desirable in medical image analysis is the efficient use of the support image data, which are labelled to classify or segment new classes, a task that otherwise requires substantially more training images and expert annotations. This work describes a fully 3D prototypical few-shot segmentation algorithm, such that the trained networks can be effectively adapted to clinically interesting structures that are absent in training, using only a few labelled images from a different institute. First, to compensate for the widely recognised spatial variability between institutions in episodic adaptation of novel classes, a novel spatial registration mechanism is integrated into prototypical learning, consisti...
Purpose: To describe the inter- and intra-operator reliability of segmentations of female pelvic fl...
One of the current challenges in applying machine learning to medical images is the difficulty in ob...
The majority of existing methods for machine learning-based medical image segmentation are supervise...
The prowess that makes few-shot learning desirable in medical image analysis is the efficient use of...
The ability to adapt medical image segmentation networks for a novel class such as an unseen anatom...
Automated segmentation of large volumes of medical images is often plagued by the limited availabili...
Recent work has shown that label-efficient few-shot learning through self-supervision can achieve p...
International audienceIn this work, we address the task of few-shot medical image segmentation (MIS)...
Source at https://ceur-ws.org/.Standard strategies for fully supervised semantic segmentation of med...
Automatic medical image segmentation is a crucial topic in the medical domain and successively a cri...
International challenges have become the de facto standard for comparative assessment of image analy...
Fully-supervised deep learning segmentation models are inflexible when encountering new unseen seman...
Using additional training data is known to improve the results, especially for medical image 3D segm...
Training segmentation models for medical images continues to be challenging due to the limited avail...
In treating gastrointestinal cancer using radiotherapy, the role of the radiation oncologist is to a...
Purpose: To describe the inter- and intra-operator reliability of segmentations of female pelvic fl...
One of the current challenges in applying machine learning to medical images is the difficulty in ob...
The majority of existing methods for machine learning-based medical image segmentation are supervise...
The prowess that makes few-shot learning desirable in medical image analysis is the efficient use of...
The ability to adapt medical image segmentation networks for a novel class such as an unseen anatom...
Automated segmentation of large volumes of medical images is often plagued by the limited availabili...
Recent work has shown that label-efficient few-shot learning through self-supervision can achieve p...
International audienceIn this work, we address the task of few-shot medical image segmentation (MIS)...
Source at https://ceur-ws.org/.Standard strategies for fully supervised semantic segmentation of med...
Automatic medical image segmentation is a crucial topic in the medical domain and successively a cri...
International challenges have become the de facto standard for comparative assessment of image analy...
Fully-supervised deep learning segmentation models are inflexible when encountering new unseen seman...
Using additional training data is known to improve the results, especially for medical image 3D segm...
Training segmentation models for medical images continues to be challenging due to the limited avail...
In treating gastrointestinal cancer using radiotherapy, the role of the radiation oncologist is to a...
Purpose: To describe the inter- and intra-operator reliability of segmentations of female pelvic fl...
One of the current challenges in applying machine learning to medical images is the difficulty in ob...
The majority of existing methods for machine learning-based medical image segmentation are supervise...