Organs-at-risk contouring is time consuming and labour intensive. Automation by deep learning algorithms would decrease the workload of radiotherapists and technicians considerably. However, the variety of metrics used for the evaluation of deep learning algorithms make the results of many papers difficult to interpret and compare. In this paper, a qualitative evaluation is done on five established metrics to assess whether their values correlate with clinical usability. A total of 377 CT volumes with heart delineations were randomly selected for training and evaluation. A deep learning algorithm was used to predict the contours of the heart. A total of 101 CT slices from the validation set with the predicted contours were shown to three ex...
Purpose Methods Automated techniques for estimating the contours of organs and structures in medical...
International audienceWe recently published a deep learning study on the potential of encoder-decode...
Quantitative evaluation of the performance of segmentation algorithms on medical images is crucial b...
Organs-at-risk contouring is time consuming and labour intensive. Automation by deep learning algori...
Organs-at-risk contouring is time consuming and labour intensive. Automation by deep learning algori...
Recent advances in machine learning have made it possible to create automated systems for medical im...
Purpose: A radiomics features classifier was implemented to evaluate segmentation quality of heart s...
Although artificial intelligence algorithms are often developed and applied for narrow tasks, their ...
International audienceThe aim of this study is to develop an automated deep-learning-based whole hea...
Deep Learning can be applied to learn segmentations of abdominal organs in MRI sequences, a challeng...
In the last decade, research on artificial intelligence has seen rapid growth with deep learning mod...
Purpose or ObjectiveTo evaluate two commercial, CE labeled deep learning-based models for automatic ...
Deep learning has shown superb performance in detecting objects and classifying images, ensuring a g...
Background and purpose: Large radiotherapy (RT) planning imaging datasets with consistently contoure...
Purpose Methods Automated techniques for estimating the contours of organs and structures in medical...
International audienceWe recently published a deep learning study on the potential of encoder-decode...
Quantitative evaluation of the performance of segmentation algorithms on medical images is crucial b...
Organs-at-risk contouring is time consuming and labour intensive. Automation by deep learning algori...
Organs-at-risk contouring is time consuming and labour intensive. Automation by deep learning algori...
Recent advances in machine learning have made it possible to create automated systems for medical im...
Purpose: A radiomics features classifier was implemented to evaluate segmentation quality of heart s...
Although artificial intelligence algorithms are often developed and applied for narrow tasks, their ...
International audienceThe aim of this study is to develop an automated deep-learning-based whole hea...
Deep Learning can be applied to learn segmentations of abdominal organs in MRI sequences, a challeng...
In the last decade, research on artificial intelligence has seen rapid growth with deep learning mod...
Purpose or ObjectiveTo evaluate two commercial, CE labeled deep learning-based models for automatic ...
Deep learning has shown superb performance in detecting objects and classifying images, ensuring a g...
Background and purpose: Large radiotherapy (RT) planning imaging datasets with consistently contoure...
Purpose Methods Automated techniques for estimating the contours of organs and structures in medical...
International audienceWe recently published a deep learning study on the potential of encoder-decode...
Quantitative evaluation of the performance of segmentation algorithms on medical images is crucial b...