peer reviewedIn this work, we investigate multi-task learning as a way of pre-training models for classification tasks in digital pathology. It is motivated by the fact that many small and medium-size datasets have been released by the community over the years whereas there is no large scale dataset similar to ImageNet in the domain. We first assemble and transform many digital pathology datasets into a pool of 22 classification tasks and almost 900k images. Then, we propose a simple architecture and training scheme for creating a transferable model and a robust evaluation and selection protocol in order to evaluate our method. Depending on the target task, we show that our models used as feature extractors either improve significantly over...
Deep learning has achieved a great success in natural image classification. To overcome data-scarcit...
Transfer learning was successfully employed already at the very early rise of deep neural networks t...
While high-resolution pathology images lend themselves well to ‘data hungry’ deep learning algorithm...
Pathology, the field of medicine and biology interested in studying and diagnosing diseases, is on t...
Thanks to their capability to learn generalizable descriptors directly from images, deep Convolution...
peer reviewedIn this paper, we study deep transfer learning as a way of overcoming object recognitio...
One of the main challenges of employing deep learning models in the field of medicine is a lack of t...
Deep learning requires a large amount of data to perform well. However, the field of medical image a...
The impressive technical advances seen for machine learning algorithms in combination with the digit...
Transfer learning allows us to exploit knowledge gained from one task to assist in solving another b...
One of the main disadvantages of supervised transfer learning is that it necessarily requires a larg...
Background: Deep learning (DL) is a representation learning approach ideally suited for image analys...
Transfer learning (TL) has been widely utilized to address the lack of training data for deep learni...
Kandel, I., & Castelli, M. (2020). How deeply to fine-tune a convolutional neural network: A case st...
Background and objectives: Transfer learning is a valuable approach to perform medical image segment...
Deep learning has achieved a great success in natural image classification. To overcome data-scarcit...
Transfer learning was successfully employed already at the very early rise of deep neural networks t...
While high-resolution pathology images lend themselves well to ‘data hungry’ deep learning algorithm...
Pathology, the field of medicine and biology interested in studying and diagnosing diseases, is on t...
Thanks to their capability to learn generalizable descriptors directly from images, deep Convolution...
peer reviewedIn this paper, we study deep transfer learning as a way of overcoming object recognitio...
One of the main challenges of employing deep learning models in the field of medicine is a lack of t...
Deep learning requires a large amount of data to perform well. However, the field of medical image a...
The impressive technical advances seen for machine learning algorithms in combination with the digit...
Transfer learning allows us to exploit knowledge gained from one task to assist in solving another b...
One of the main disadvantages of supervised transfer learning is that it necessarily requires a larg...
Background: Deep learning (DL) is a representation learning approach ideally suited for image analys...
Transfer learning (TL) has been widely utilized to address the lack of training data for deep learni...
Kandel, I., & Castelli, M. (2020). How deeply to fine-tune a convolutional neural network: A case st...
Background and objectives: Transfer learning is a valuable approach to perform medical image segment...
Deep learning has achieved a great success in natural image classification. To overcome data-scarcit...
Transfer learning was successfully employed already at the very early rise of deep neural networks t...
While high-resolution pathology images lend themselves well to ‘data hungry’ deep learning algorithm...