Artificial neural networks are networks made up of thousands and sometimes millions or more nodes also referred to as neurons. Due to the sheer scale of a network, the task of training the network can become very compute-intensive. This is because all samples need to be evaluated through the network during training, and the gradients need to be updated based on each sample`s loss. Like humans, neural networks find some samples more difficult to interpret correctly than others. By feeding the network with more difficult samples while avoiding samples it has already mastered the training process can be executed more efficiently. In the medical field neural networks are among other use cases used to identify malignant cancer in tissue samples....
Deep learning has revolutionised cancer research. Deep neural networks can automatically detect feat...
During the last few years, segmentation architectures based on deep learning achieved promising resu...
The various hurdles in machine learning are beaten by deep learning techniques and then the deep lea...
Available computing resources play a large part in enabling the training of modern deep neural netwo...
Segmentation of magnetic resonance images is an important part of planning radiotherapy treat-ments ...
Deep neural network training spends most of the computation on examples that are properly handled, a...
Cancer is one of the leading causes of mortality in the world. It is estimated that about 20% of mal...
Long iterative training processes for Deep Neural Networks (DNNs) are commonly required to achieve s...
Improvements to patient care through the development of automated image analysis in pathology are re...
Advancement in technology within the last decade has led to the rapid development in the field of bi...
SignificanceConvolutional neural networks (CNNs) show the potential for automated classification of ...
Deep learning using neural networks is becoming more and more popular. It is frequently used in area...
IMPORTANCE: Application of deep learning algorithms to whole-slide pathology imagescan potentially i...
Deep learning has the capability to learn features in images and classify them in supervised tasks. ...
Using the computational capabilities of computers within the medical field has become increasingly p...
Deep learning has revolutionised cancer research. Deep neural networks can automatically detect feat...
During the last few years, segmentation architectures based on deep learning achieved promising resu...
The various hurdles in machine learning are beaten by deep learning techniques and then the deep lea...
Available computing resources play a large part in enabling the training of modern deep neural netwo...
Segmentation of magnetic resonance images is an important part of planning radiotherapy treat-ments ...
Deep neural network training spends most of the computation on examples that are properly handled, a...
Cancer is one of the leading causes of mortality in the world. It is estimated that about 20% of mal...
Long iterative training processes for Deep Neural Networks (DNNs) are commonly required to achieve s...
Improvements to patient care through the development of automated image analysis in pathology are re...
Advancement in technology within the last decade has led to the rapid development in the field of bi...
SignificanceConvolutional neural networks (CNNs) show the potential for automated classification of ...
Deep learning using neural networks is becoming more and more popular. It is frequently used in area...
IMPORTANCE: Application of deep learning algorithms to whole-slide pathology imagescan potentially i...
Deep learning has the capability to learn features in images and classify them in supervised tasks. ...
Using the computational capabilities of computers within the medical field has become increasingly p...
Deep learning has revolutionised cancer research. Deep neural networks can automatically detect feat...
During the last few years, segmentation architectures based on deep learning achieved promising resu...
The various hurdles in machine learning are beaten by deep learning techniques and then the deep lea...