While a key component to the success of deep learning is the availability of massive amounts of training data, medical image datasets are often limited in diversity and size. Transfer learning has the potential to bridge the gap between related yet different domains. For medical applications, however, it remains unclear whether it is more beneficial to pre-train on natural or medical images. We aim to shed light on this problem by comparing initialization on ImageNet and RadImageNet on seven medical classification tasks. Our work includes a replication study, which yields results contrary to previously published findings. In our experiments, ResNet50 models pre-trained on ImageNet tend to outperform those trained on RadImageNet. To gain fur...
Transfer Learning is currently popular in Medical Image classification. Transfer Learning methods ar...
Recently, the healthcare industry is in a dynamic transformation accelerated by the availability of ...
Thanks to their capability to learn generalizable descriptors directly from images, deep Convolution...
One of the main challenges of employing deep learning models in the field of medicine is a lack of t...
Transfer learning (TL) has been widely utilized to address the lack of training data for deep learni...
Transfer learning is a standard technique to transfer knowledge from one domain to another. For appl...
Deep learning requires a large amount of data to perform well. However, the field of medical image a...
Transfer learning allows us to exploit knowledge gained from one task to assist in solving another b...
Deep learning has achieved a great success in natural image classification. To overcome data-scarcit...
Transfer-learning has rapidly become one of the most sophisticated and effective techniques in deali...
Transfer learning was successfully employed already at the very early rise of deep neural networks t...
Convolutional Neural Networks (CNNs) have shown their effectiveness in a variety of imaging applicat...
One of the main disadvantages of supervised transfer learning is that it necessarily requires a larg...
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 is currently popular in Medical Image classification. Transfer Learning methods ar...
Recently, the healthcare industry is in a dynamic transformation accelerated by the availability of ...
Thanks to their capability to learn generalizable descriptors directly from images, deep Convolution...
One of the main challenges of employing deep learning models in the field of medicine is a lack of t...
Transfer learning (TL) has been widely utilized to address the lack of training data for deep learni...
Transfer learning is a standard technique to transfer knowledge from one domain to another. For appl...
Deep learning requires a large amount of data to perform well. However, the field of medical image a...
Transfer learning allows us to exploit knowledge gained from one task to assist in solving another b...
Deep learning has achieved a great success in natural image classification. To overcome data-scarcit...
Transfer-learning has rapidly become one of the most sophisticated and effective techniques in deali...
Transfer learning was successfully employed already at the very early rise of deep neural networks t...
Convolutional Neural Networks (CNNs) have shown their effectiveness in a variety of imaging applicat...
One of the main disadvantages of supervised transfer learning is that it necessarily requires a larg...
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 is currently popular in Medical Image classification. Transfer Learning methods ar...
Recently, the healthcare industry is in a dynamic transformation accelerated by the availability of ...
Thanks to their capability to learn generalizable descriptors directly from images, deep Convolution...