Deep-learning has proved in recent years to be a powerful tool for image analysis and is now widely used to segment both 2D and 3D medical images. Deep-learning segmentation frameworks rely not only on the choice of network architecture but also on the choice of loss function. When the segmentation process targets rare observations, a severe class imbalance is likely to occur between candidate labels, thus resulting in sub-optimal performance. In order to mitigate this issue, strategies such as the weighted cross-entropy function, the sensitivity function or the Dice loss function, have been proposed. In this work, we investigate the behavior of these loss functions and their sensitivity to learning rate tuning in the presence of different ...
Colorectal cancers may occur in colon region of human body because of late detection of polyps. Ther...
The clinical interest is often to measure the volume of a structure, which is typically derived from...
Loss functions are error metrics that quantify the difference between a prediction and its correspon...
Automatic segmentation methods are an important advancement in medical image analysis. Machine learn...
Automatic segmentation methods are an important advancement in medical image analysis. Machine learn...
In many medical imaging and classical computer vision tasks, the Dice score and Jaccard index are us...
The Dice score is widely used for binary segmentation due to its robustness to class imbalance. Soft...
The Dice similarity coefficient (DSC) is both a widely used metric and loss function for biomedical ...
The Dice similarity coefficient (DSC) is both a widely used metric and loss function for biomedical ...
Brain structure segmentation on magnetic resonance (MR) images is important for various clinical app...
Deep learning methods have proven their potential in semantic segmentation. However, they depend on ...
Class imbalance poses a challenge for developing unbiased, accurate predictive models. In particular...
International audienceThe most common problem among image segmentation methods is unbalanced data, w...
Image segmentation is an important step in medical image processing and has been widely studied and ...
Deep convolutional neural networks have proven to be remarkably effective in semantic segmentation t...
Colorectal cancers may occur in colon region of human body because of late detection of polyps. Ther...
The clinical interest is often to measure the volume of a structure, which is typically derived from...
Loss functions are error metrics that quantify the difference between a prediction and its correspon...
Automatic segmentation methods are an important advancement in medical image analysis. Machine learn...
Automatic segmentation methods are an important advancement in medical image analysis. Machine learn...
In many medical imaging and classical computer vision tasks, the Dice score and Jaccard index are us...
The Dice score is widely used for binary segmentation due to its robustness to class imbalance. Soft...
The Dice similarity coefficient (DSC) is both a widely used metric and loss function for biomedical ...
The Dice similarity coefficient (DSC) is both a widely used metric and loss function for biomedical ...
Brain structure segmentation on magnetic resonance (MR) images is important for various clinical app...
Deep learning methods have proven their potential in semantic segmentation. However, they depend on ...
Class imbalance poses a challenge for developing unbiased, accurate predictive models. In particular...
International audienceThe most common problem among image segmentation methods is unbalanced data, w...
Image segmentation is an important step in medical image processing and has been widely studied and ...
Deep convolutional neural networks have proven to be remarkably effective in semantic segmentation t...
Colorectal cancers may occur in colon region of human body because of late detection of polyps. Ther...
The clinical interest is often to measure the volume of a structure, which is typically derived from...
Loss functions are error metrics that quantify the difference between a prediction and its correspon...