Purpose: Deformable image registration (DIR) can benefit from additional guidance using corresponding landmarks in the images. However, the benefits thereof are largely understudied, especially due to the lack of automatic landmark detection methods for three-dimensional (3D) medical images. Approach: We present a deep convolutional neural network (DCNN), called DCNN-Match, that learns to predict landmark correspondences in 3D images in a self-supervised manner. We trained DCNN-Match on pairs of computed tomography (CT) scans containing simulated deformations. We explored five variants of DCNN-Match that use different loss functions and assessed their effect on the spatial density of predicted landmarks and the associated matching errors. W...
PurposeMissing or discrepant imaging volume is a common challenge in deformable image registration (...
Over the past decade, deep learning technologies have greatly advanced the field of medical image re...
Image registration, the process of aligning two or more images, is the core technique of many (semi-...
Anatomical landmark correspondences in medical images can provide additional guidance information fo...
One of the fundamental challenges in supervised learning for multimodal image registration is the la...
Deformable image registration (DIR) is an important component of a patient’s radiation therapy treat...
Deformable image registration can be time-consuming and often needs extensive parameterization to pe...
Deep learning-based methods for deformable image registration are attractive alternatives to convent...
In this work we propose a deep learning network for deformable image registration (DIRNet). The DIRN...
Significance: Analysis of modern large-scale, multicenter or diseased data requires deformable regis...
As a fundamental task in medical image analysis, deformable image registration (DIR) is the process ...
Deformable image registration is usually performed manually by clinicians,which is time-consuming an...
Image registration and in particular deformable registration methods are pillars of medical imaging....
Machine Learning aims at developing models able to accurately predict an output variable given the v...
PurposeMissing or discrepant imaging volume is a common challenge in deformable image registration (...
Over the past decade, deep learning technologies have greatly advanced the field of medical image re...
Image registration, the process of aligning two or more images, is the core technique of many (semi-...
Anatomical landmark correspondences in medical images can provide additional guidance information fo...
One of the fundamental challenges in supervised learning for multimodal image registration is the la...
Deformable image registration (DIR) is an important component of a patient’s radiation therapy treat...
Deformable image registration can be time-consuming and often needs extensive parameterization to pe...
Deep learning-based methods for deformable image registration are attractive alternatives to convent...
In this work we propose a deep learning network for deformable image registration (DIRNet). The DIRN...
Significance: Analysis of modern large-scale, multicenter or diseased data requires deformable regis...
As a fundamental task in medical image analysis, deformable image registration (DIR) is the process ...
Deformable image registration is usually performed manually by clinicians,which is time-consuming an...
Image registration and in particular deformable registration methods are pillars of medical imaging....
Machine Learning aims at developing models able to accurately predict an output variable given the v...
PurposeMissing or discrepant imaging volume is a common challenge in deformable image registration (...
Over the past decade, deep learning technologies have greatly advanced the field of medical image re...
Image registration, the process of aligning two or more images, is the core technique of many (semi-...