Transfer learning is a widely used strategy in medical image analysis. Instead of only training a network with a limited amount of data from the target task of interest, we can first train the network with other, potentially larger source data sets, creating a more robust model. The source data sets do not have to be related to the target task. For a classification task in lung computed tomography (CT) images, we could use both head CT images and images of cats as the source. While head CT images appear more similar to lung CT images, the number and diversity of cat images might lead to a better model overall. In this survey, we review a number of articles that have studied similar comparisons. Although the answer to which strategy is best ...
Deep learning is at the center of the current rise of computer aided diagnosis in medical imaging. T...
Transfer learning was successfully employed already at the very early rise of deep neural networks t...
Thesis (Master's)--University of Washington, 2023The medical imaging field has unique obstacles to f...
Transfer learning is a widely used strategy in medical image analysis. Instead of only training a ne...
One of the main challenges of employing deep learning models in the field of medicine is a lack of t...
Transfer learning is a standard technique to transfer knowledge from one domain to another. For appl...
Transfer learning (TL) has been widely utilized to address the lack of training data for deep learni...
Deep learning has achieved a great success in natural image classification. To overcome data-scarcit...
Background Transfer learning is a form of machine learning where a pre-trained model trained on a sp...
Transfer learning allows us to exploit knowledge gained from one task to assist in solving another b...
While a key component to the success of deep learning is the availability of massive amounts of trai...
BackgroundTransfer learning is a form of machine learning where a pre-trained model trained on a spe...
Deep learning requires a large amount of data to perform well. However, the field of medical image a...
Transfer-learning has rapidly become one of the most sophisticated and effective techniques in deali...
To identify the best transfer learning approach for the identification of the most frequent abnormal...
Deep learning is at the center of the current rise of computer aided diagnosis in medical imaging. T...
Transfer learning was successfully employed already at the very early rise of deep neural networks t...
Thesis (Master's)--University of Washington, 2023The medical imaging field has unique obstacles to f...
Transfer learning is a widely used strategy in medical image analysis. Instead of only training a ne...
One of the main challenges of employing deep learning models in the field of medicine is a lack of t...
Transfer learning is a standard technique to transfer knowledge from one domain to another. For appl...
Transfer learning (TL) has been widely utilized to address the lack of training data for deep learni...
Deep learning has achieved a great success in natural image classification. To overcome data-scarcit...
Background Transfer learning is a form of machine learning where a pre-trained model trained on a sp...
Transfer learning allows us to exploit knowledge gained from one task to assist in solving another b...
While a key component to the success of deep learning is the availability of massive amounts of trai...
BackgroundTransfer learning is a form of machine learning where a pre-trained model trained on a spe...
Deep learning requires a large amount of data to perform well. However, the field of medical image a...
Transfer-learning has rapidly become one of the most sophisticated and effective techniques in deali...
To identify the best transfer learning approach for the identification of the most frequent abnormal...
Deep learning is at the center of the current rise of computer aided diagnosis in medical imaging. T...
Transfer learning was successfully employed already at the very early rise of deep neural networks t...
Thesis (Master's)--University of Washington, 2023The medical imaging field has unique obstacles to f...