Purpose: To evaluate the accuracy of deep-learning-based auto-segmentation of the superior constrictor, middle constrictor, inferior constrictor, and larynx in comparison with a traditional multi-atlas-based method. Methods and Materials: One hundred and five computed tomography image datasets from 83 head and neck cancer patients were retrospectively collected and the superior constrictor, middle constrictor, inferior constrictor, and larynx were analyzed for deep-learning versus multi-atlas-based segmentation. Eighty-three computed tomography images (40 diagnostic computed tomography and 43 planning computed tomography) were used for training the convolutional neural network, and for atlas-based model training. The remaining 22 computed t...
Background: In this study, a deep convolutional neural network (CNN)-based automatic segmentation te...
Modern technology allows radiation therapy dose distributions to conform closely to targets, providi...
The dramatic increase of magnetic resonance imaging (MRI) in daily treatment planning and response a...
PurposeTo investigate the performance of 4 atlas-based (multi-ABAS) and 2 deep learning (DL) solutio...
<p><b>Background:</b> Manual delineation of structures in head and neck cancers is an extremely time...
International audiencePurpose or ObjectiveTo investigate the performance of head and neck organs-at-...
Purpose: To investigate multiple deep learning methods for automated segmentation (auto-segmentation...
International audienceBackground and purpose: To investigate the performance of head-and-neck (HN) o...
Manual segmentation is the gold standard method for radiation therapy planning; however, it is time-...
Various commercial auto-contouring solutions have emerged over past few years to address labor-inten...
INTRODUCTION: Adequate head and neck (HN) organ-at-risk (OAR) delineation is crucial for HN radiothe...
Purpose: Automated delineation of structures and organs is a key step in medical imaging. However, d...
Purpose: Automated delineation of structures and organs is a key step in medical imaging. However, d...
BackgroundImpaired function of masticatory muscles will lead to trismus. Routine delineation of thes...
Background: It is time-consuming for oncologists to delineate volumes for radiotherapy treatment in ...
Background: In this study, a deep convolutional neural network (CNN)-based automatic segmentation te...
Modern technology allows radiation therapy dose distributions to conform closely to targets, providi...
The dramatic increase of magnetic resonance imaging (MRI) in daily treatment planning and response a...
PurposeTo investigate the performance of 4 atlas-based (multi-ABAS) and 2 deep learning (DL) solutio...
<p><b>Background:</b> Manual delineation of structures in head and neck cancers is an extremely time...
International audiencePurpose or ObjectiveTo investigate the performance of head and neck organs-at-...
Purpose: To investigate multiple deep learning methods for automated segmentation (auto-segmentation...
International audienceBackground and purpose: To investigate the performance of head-and-neck (HN) o...
Manual segmentation is the gold standard method for radiation therapy planning; however, it is time-...
Various commercial auto-contouring solutions have emerged over past few years to address labor-inten...
INTRODUCTION: Adequate head and neck (HN) organ-at-risk (OAR) delineation is crucial for HN radiothe...
Purpose: Automated delineation of structures and organs is a key step in medical imaging. However, d...
Purpose: Automated delineation of structures and organs is a key step in medical imaging. However, d...
BackgroundImpaired function of masticatory muscles will lead to trismus. Routine delineation of thes...
Background: It is time-consuming for oncologists to delineate volumes for radiotherapy treatment in ...
Background: In this study, a deep convolutional neural network (CNN)-based automatic segmentation te...
Modern technology allows radiation therapy dose distributions to conform closely to targets, providi...
The dramatic increase of magnetic resonance imaging (MRI) in daily treatment planning and response a...