Radiogenomics is a field of investigation that attempts to examine the relationship between imaging characteris-tics of cancerous lesions and their genomic composition. This could offer a noninvasive alternative to establishing genomic characteristics of tumors and aid cancer treatment planning. While deep learning has shown its supe-riority in many detection and classification tasks, breast cancer radiogenomic data suffers from a very limited number of training examples, which renders the training of the neural network for this problem directly and with no pretraining a very difficult task. In this study, we investigated an alternative deep learning approach referred to as deep features or off-the-shelf network approach to classify breast ...
Breast cancer is a prevalent disease that can be classified into four molecular subtypes based on g...
This work was supported in part by financial support from the National Natural Science Foundation of...
Using quantitative radiomics, we demonstrate that computer-extracted magnetic resonance (MR) image-b...
Rationale and objectives: To determine whether deep learning models can distinguish between breast c...
Accurately determining the molecular subtypes of breast cancer is important for the prognosis of bre...
ObjectivesTo apply deep learning algorithms using a conventional convolutional neural network (CNN) ...
The purpose of this study was to investigate the role of features derived from breast dynamic contra...
The breast cancer survival rate has improved significantly between 1975 and 2003. The primary improve...
BackgroundMost studies of molecular subtype prediction in breast cancer were mainly based on two-dim...
Molecular subtyping of cancer is a critical step towards more individualized therapy and provides im...
BackgroundMost studies of molecular subtype prediction in breast cancer were mainly based on two-dim...
Breast Cancer comprises multiple subtypes implicated in prognosis. Existing stratification methods r...
Abstract Background Genetic information is becoming more readily available and is increasingly being...
Automated diagnosis systems aim to reduce the cost of diagnosis while maintaining the same efficienc...
Breast cancer is the most frequently found cancer in women and the one most often subjected to genet...
Breast cancer is a prevalent disease that can be classified into four molecular subtypes based on g...
This work was supported in part by financial support from the National Natural Science Foundation of...
Using quantitative radiomics, we demonstrate that computer-extracted magnetic resonance (MR) image-b...
Rationale and objectives: To determine whether deep learning models can distinguish between breast c...
Accurately determining the molecular subtypes of breast cancer is important for the prognosis of bre...
ObjectivesTo apply deep learning algorithms using a conventional convolutional neural network (CNN) ...
The purpose of this study was to investigate the role of features derived from breast dynamic contra...
The breast cancer survival rate has improved significantly between 1975 and 2003. The primary improve...
BackgroundMost studies of molecular subtype prediction in breast cancer were mainly based on two-dim...
Molecular subtyping of cancer is a critical step towards more individualized therapy and provides im...
BackgroundMost studies of molecular subtype prediction in breast cancer were mainly based on two-dim...
Breast Cancer comprises multiple subtypes implicated in prognosis. Existing stratification methods r...
Abstract Background Genetic information is becoming more readily available and is increasingly being...
Automated diagnosis systems aim to reduce the cost of diagnosis while maintaining the same efficienc...
Breast cancer is the most frequently found cancer in women and the one most often subjected to genet...
Breast cancer is a prevalent disease that can be classified into four molecular subtypes based on g...
This work was supported in part by financial support from the National Natural Science Foundation of...
Using quantitative radiomics, we demonstrate that computer-extracted magnetic resonance (MR) image-b...