Purpose: This study aims to adapt and evaluate the performance of different state-of-the-art deep learning object detection methods to automatically identify Esophageal Adenocarcinoma (EAC) regions from High-Definition White Light Endoscopy (HD-WLE) images. Method: Several state-of-the-art object detection methods using Convolution Neural Networks (CNN’s) were adapted to automatically detect abnormal regions in the esophagus HD-WLE images, utilizing VGG’16 as the backbone architecture for feature extraction. Those methods are Regional-based Convolutional Neural Network (R-CNN), Fast R-CNN, Faster R-CNN and Single Shot Multi-box Detector (SSD). For the evaluation of the different methods, 100 images from 39 patients that have been manuall...
Background and Aim Recently, artificial intelligence (AI) has been used in endoscopic examination an...
Introduction: Regularly screening of the gastrointestinal tract for polyps is the an important measu...
BACKGROUND AND AIMS: We assessed the preliminary diagnostic accuracy of a recently developed compute...
Purpose This study aims to adapt and evaluate the performance of different state-of-the-art deep lea...
Esophageal Adenocarcinoma (EAC) is considered as the early stage of esophageal cancer developed main...
Early detection of esophageal abnormalities can help in preventing the progression of the disease in...
Early detection of esophageal abnormalities can help in preventing the progression of the disease in...
International audienceBackground Using deep learning techniques in image analysis is a dynamically e...
Esophageal cancer, one of the most common cancers with a poor prognosis, is the sixth leading cause ...
Esophageal cancer is categorized as a type of disease with a high mortality rate. Early detection of...
Esophageal cancer is counted as one of the deadliest cancers worldwide ranking the sixth among all t...
BACKGROUND AND AIMS: Seattle protocol biopsies for Barrett's Esophagus (BE) surveillance are labou...
Background & Aims: We aimed to develop and validate a deep-learning computer-aided detection (CA...
BACKGROUND & AIMS: We aimed to develop and validate a deep-learning computer-aided detection (CAD) s...
This project is funded by the Cancer Research UK (CRUK). Their financial support is gratefully ackno...
Background and Aim Recently, artificial intelligence (AI) has been used in endoscopic examination an...
Introduction: Regularly screening of the gastrointestinal tract for polyps is the an important measu...
BACKGROUND AND AIMS: We assessed the preliminary diagnostic accuracy of a recently developed compute...
Purpose This study aims to adapt and evaluate the performance of different state-of-the-art deep lea...
Esophageal Adenocarcinoma (EAC) is considered as the early stage of esophageal cancer developed main...
Early detection of esophageal abnormalities can help in preventing the progression of the disease in...
Early detection of esophageal abnormalities can help in preventing the progression of the disease in...
International audienceBackground Using deep learning techniques in image analysis is a dynamically e...
Esophageal cancer, one of the most common cancers with a poor prognosis, is the sixth leading cause ...
Esophageal cancer is categorized as a type of disease with a high mortality rate. Early detection of...
Esophageal cancer is counted as one of the deadliest cancers worldwide ranking the sixth among all t...
BACKGROUND AND AIMS: Seattle protocol biopsies for Barrett's Esophagus (BE) surveillance are labou...
Background & Aims: We aimed to develop and validate a deep-learning computer-aided detection (CA...
BACKGROUND & AIMS: We aimed to develop and validate a deep-learning computer-aided detection (CAD) s...
This project is funded by the Cancer Research UK (CRUK). Their financial support is gratefully ackno...
Background and Aim Recently, artificial intelligence (AI) has been used in endoscopic examination an...
Introduction: Regularly screening of the gastrointestinal tract for polyps is the an important measu...
BACKGROUND AND AIMS: We assessed the preliminary diagnostic accuracy of a recently developed compute...