It is challenging for endoscopists to accurately detect esophageal lesions during gastrointestinal endoscopic screening due to visual similarities among different lesions in terms of shape, size, and texture among patients. Additionally, endoscopists are busy fighting esophageal lesions every day, hence the need to develop a computer-aided diagnostic tool to classify and segment the lesions at endoscopic images to reduce their burden. Therefore, we propose a multi-task classification and segmentation (MTCS) model, including the Esophageal Lesions Classification Network (ELCNet) and Esophageal Lesions Segmentation Network (ELSNet). The ELCNet was used to classify types of esophageal lesions, and the ELSNet was used to identify lesion regions...
Patients suffering from Barrett's Esophagus (BE) are at an increased risk of developing esophageal a...
Patients suffering from Barrett's Esophagus (BE) are at an increased risk of developing esophageal a...
BACKGROUND & AIMS: We aimed to develop and validate a deep-learning computer-aided detection (CAD) s...
International audienceAutomatic and accurate esophageal lesion classification and segmentation is of...
The Endoscopy Computer Vision Challenge (EndoCV) is a crowd-sourcing initiative to address eminent p...
International audienceBackground Using deep learning techniques in image analysis is a dynamically e...
Esophageal cancer is categorized as a type of disease with a high mortality rate. Early detection of...
Endoscopy is widely applied in the examination of gastric cancer. However, extensive knowledge and e...
Accurate lesion segmentation based on endoscopy images is a fundamental task for the automated diagn...
Accurate lesion segmentation based on endoscopy images is a fundamental task for the automated diagn...
Endoscopic procedures for diagnosing gastrointestinal tract findings depend on specialist experience...
Endoscopic procedures for diagnosing gastrointestinal tract findings depend on specialist experience...
Esophageal cancer, one of the most common cancers with a poor prognosis, is the sixth leading cause ...
In medical imaging, the detection and classification of stomach diseases are challenging due to the ...
Capsule endoscopy is a leading diagnostic tool for small bowel lesions which faces certain challenge...
Patients suffering from Barrett's Esophagus (BE) are at an increased risk of developing esophageal a...
Patients suffering from Barrett's Esophagus (BE) are at an increased risk of developing esophageal a...
BACKGROUND & AIMS: We aimed to develop and validate a deep-learning computer-aided detection (CAD) s...
International audienceAutomatic and accurate esophageal lesion classification and segmentation is of...
The Endoscopy Computer Vision Challenge (EndoCV) is a crowd-sourcing initiative to address eminent p...
International audienceBackground Using deep learning techniques in image analysis is a dynamically e...
Esophageal cancer is categorized as a type of disease with a high mortality rate. Early detection of...
Endoscopy is widely applied in the examination of gastric cancer. However, extensive knowledge and e...
Accurate lesion segmentation based on endoscopy images is a fundamental task for the automated diagn...
Accurate lesion segmentation based on endoscopy images is a fundamental task for the automated diagn...
Endoscopic procedures for diagnosing gastrointestinal tract findings depend on specialist experience...
Endoscopic procedures for diagnosing gastrointestinal tract findings depend on specialist experience...
Esophageal cancer, one of the most common cancers with a poor prognosis, is the sixth leading cause ...
In medical imaging, the detection and classification of stomach diseases are challenging due to the ...
Capsule endoscopy is a leading diagnostic tool for small bowel lesions which faces certain challenge...
Patients suffering from Barrett's Esophagus (BE) are at an increased risk of developing esophageal a...
Patients suffering from Barrett's Esophagus (BE) are at an increased risk of developing esophageal a...
BACKGROUND & AIMS: We aimed to develop and validate a deep-learning computer-aided detection (CAD) s...