Background Machine learning, especially deep learning, is becoming more and more relevant in research and development in the medical domain. For all the supervised deep learning applications, data is the most critical factor in securing successful implementation and sustaining the progress of the machine learning model. Especially gastroenterological data, which often involves endoscopic videos, are cumbersome to annotate. Domain experts are needed to interpret and annotate the videos. To support those domain experts, we generated a framework. With this framework, instead of annotating every frame in the video sequence, experts are just performing key annotations at the beginning and the end of sequences with pathologies, e.g., visible pol...
We propose a novel pathology-sensitive deep learning model (PS-DeVCEM) for frame-level anomaly detec...
Neural networks promise to bring robust, quantitative analysis to medical fields. However, their ado...
The digitalization of clinical workflows and the increasing performance of deep learning algorithms ...
In this paper, we present a novel application for elucidating all kind of videos that require expert...
Medical data is growing at an estimated 2.5 exabytes per year~\cite{GlobalInformation14}. However, m...
Deep learning has delivered promising results for automatic polyp detection and segmentation. Howeve...
The success of deep learning in image recognition is substantially driven by large-scale, well-curat...
Deep learning enabled medical image analysis is heavily reliant on expert annotations which is costl...
International audiencePurpose - Annotation of surgical videos is a time-consuming task which require...
Medical image annotation is a major hurdle for developing precise and robust machine-learning models...
Introduction: Regularly screening of the gastrointestinal tract for polyps is the an important measu...
Background: Recent advancements in machine learning (ML) bring great possibilities for the developme...
Supervised deep neural networks need datasets for training, in which the data need to be annotated b...
Gastroenterologists are estimated to misdiagnose up to 25% of esophageal adenocarcinomas in Barrett'...
Endoscopic video streams, as rich sources of information on the operating field, show great potentia...
We propose a novel pathology-sensitive deep learning model (PS-DeVCEM) for frame-level anomaly detec...
Neural networks promise to bring robust, quantitative analysis to medical fields. However, their ado...
The digitalization of clinical workflows and the increasing performance of deep learning algorithms ...
In this paper, we present a novel application for elucidating all kind of videos that require expert...
Medical data is growing at an estimated 2.5 exabytes per year~\cite{GlobalInformation14}. However, m...
Deep learning has delivered promising results for automatic polyp detection and segmentation. Howeve...
The success of deep learning in image recognition is substantially driven by large-scale, well-curat...
Deep learning enabled medical image analysis is heavily reliant on expert annotations which is costl...
International audiencePurpose - Annotation of surgical videos is a time-consuming task which require...
Medical image annotation is a major hurdle for developing precise and robust machine-learning models...
Introduction: Regularly screening of the gastrointestinal tract for polyps is the an important measu...
Background: Recent advancements in machine learning (ML) bring great possibilities for the developme...
Supervised deep neural networks need datasets for training, in which the data need to be annotated b...
Gastroenterologists are estimated to misdiagnose up to 25% of esophageal adenocarcinomas in Barrett'...
Endoscopic video streams, as rich sources of information on the operating field, show great potentia...
We propose a novel pathology-sensitive deep learning model (PS-DeVCEM) for frame-level anomaly detec...
Neural networks promise to bring robust, quantitative analysis to medical fields. However, their ado...
The digitalization of clinical workflows and the increasing performance of deep learning algorithms ...