The larynx, a common site for head and neck cancers, is often overlooked in automated contouring due to its small size and anatomically complex nature. More than 75% of laryngeal tumors originate in the glottis. This paper proposes a method to automatically delineate the glottic tumors present contrast computed tomography (CT) images of the head and neck. A novel dataset of 340 images with glottic tumors was acquired and pre-processed, and a senior radiologist created a detailed, manual slice-by-slice tumor annotation. An efficient deep-learning architecture, the U-Net, was modified and trained on our novel dataset to segment the glottic tumor automatically. The tumor was then visualized with the corresponding ground truth. Using a combined...
Abstract Purpose Identification and delineation of the gross tumour and malignan...
Cancer is one of the leading causes of death worldwide, and head and neck (H&N) cancer is amongst th...
The availability of automated, accurate, and robust gross tumor volume (GTV) segmentation algorithms...
Accurate delineation of the gross tumor volume (GTV) is critical for treatment planning in radiation...
Objectives/Hypothesis: To develop a deep-learning–based computer-aided diagnosis system for distingu...
Objective: To achieve instance segmentation of upper aerodigestive tract (UADT) neoplasms using a de...
This repository is associated with the manuscript "Fully automatic segmentation of glottis and vocal...
Purpose: Segmentation of involved lymph nodes on head and neck computed tomography (HN-CT) scans is ...
We propose an automatic detection of the oropharyngeal area in PET-CT images. This detection can be ...
Laryngeal cancer is the most common type of head and neck cancer which affects the soft tissues of t...
Purpose. In this study, we proposed an automated deep learning (DL) method for head and neck cancer ...
Delineation of Gross Tumor Volume (GTV) is essential for the treatment of cancer with radiotherapy. ...
Purpose: To investigate multiple deep learning methods for automated segmentation (auto-segmentation...
Purpose: To evaluate the accuracy of deep-learning-based auto-segmentation of the superior constrict...
Detection of larynx cancer from medical imaging is important for the quantification and for the defi...
Abstract Purpose Identification and delineation of the gross tumour and malignan...
Cancer is one of the leading causes of death worldwide, and head and neck (H&N) cancer is amongst th...
The availability of automated, accurate, and robust gross tumor volume (GTV) segmentation algorithms...
Accurate delineation of the gross tumor volume (GTV) is critical for treatment planning in radiation...
Objectives/Hypothesis: To develop a deep-learning–based computer-aided diagnosis system for distingu...
Objective: To achieve instance segmentation of upper aerodigestive tract (UADT) neoplasms using a de...
This repository is associated with the manuscript "Fully automatic segmentation of glottis and vocal...
Purpose: Segmentation of involved lymph nodes on head and neck computed tomography (HN-CT) scans is ...
We propose an automatic detection of the oropharyngeal area in PET-CT images. This detection can be ...
Laryngeal cancer is the most common type of head and neck cancer which affects the soft tissues of t...
Purpose. In this study, we proposed an automated deep learning (DL) method for head and neck cancer ...
Delineation of Gross Tumor Volume (GTV) is essential for the treatment of cancer with radiotherapy. ...
Purpose: To investigate multiple deep learning methods for automated segmentation (auto-segmentation...
Purpose: To evaluate the accuracy of deep-learning-based auto-segmentation of the superior constrict...
Detection of larynx cancer from medical imaging is important for the quantification and for the defi...
Abstract Purpose Identification and delineation of the gross tumour and malignan...
Cancer is one of the leading causes of death worldwide, and head and neck (H&N) cancer is amongst th...
The availability of automated, accurate, and robust gross tumor volume (GTV) segmentation algorithms...