Automated diagnosis systems aim to reduce the cost of diagnosis while maintaining the same efficiency. Many methods have been used for breast cancer subtype classification. Some use single data source, while others integrate many data sources, the case that results in reduced computational performance as opposed to accuracy. Breast cancer data, especially biological data, is known for its imbalance, with lack of extensive amounts of histopathological images as biological data. Recent studies have shown that cascade Deep Forest ensemble model achieves a competitive classification accuracy compared with other alternatives, such as the general ensemble learning methods and the conventional deep neural networks (DNNs), especially for imbalanced...
Abstract Background Genetic information is becoming more readily available and is increasingly being...
Classification of cancer patients into treatment groups is essential for appropriate diagnosis to in...
Whole genome RNA expression studies permit systematic approaches to understanding the correlation be...
Abstract Background The classification of cancer subtypes is of great importance to cancer disease d...
Abstract Background Correctly classifying the subtypes of cancer is of great significance for the in...
Molecular subtyping of cancer is a critical step towards more individualized therapy and provides im...
A heterogeneous disease like cancer is activated through multiple pathways and different perturbatio...
Radiogenomics is a field of investigation that attempts to examine the relationship between imaging ...
Breast Cancer comprises multiple subtypes implicated in prognosis. Existing stratification methods r...
Breast cancer is the most frequently found cancer in women and the one most often subjected to genet...
BACKGROUND: Multi-gene lists and single sample predictor models have been currently used to reduce t...
Breast cancer being major death-leading cancer demands utmost attention. Recently, the next-generati...
In recent years researchers are intensely using machine learning and employing AI techniques in the ...
Abstract Cancer tumor classification based on morphological characteristics alone has been shown to ...
Publisher Copyright: © 2021 Elsevier LtdIn this work, the effectiveness of the deep learning model i...
Abstract Background Genetic information is becoming more readily available and is increasingly being...
Classification of cancer patients into treatment groups is essential for appropriate diagnosis to in...
Whole genome RNA expression studies permit systematic approaches to understanding the correlation be...
Abstract Background The classification of cancer subtypes is of great importance to cancer disease d...
Abstract Background Correctly classifying the subtypes of cancer is of great significance for the in...
Molecular subtyping of cancer is a critical step towards more individualized therapy and provides im...
A heterogeneous disease like cancer is activated through multiple pathways and different perturbatio...
Radiogenomics is a field of investigation that attempts to examine the relationship between imaging ...
Breast Cancer comprises multiple subtypes implicated in prognosis. Existing stratification methods r...
Breast cancer is the most frequently found cancer in women and the one most often subjected to genet...
BACKGROUND: Multi-gene lists and single sample predictor models have been currently used to reduce t...
Breast cancer being major death-leading cancer demands utmost attention. Recently, the next-generati...
In recent years researchers are intensely using machine learning and employing AI techniques in the ...
Abstract Cancer tumor classification based on morphological characteristics alone has been shown to ...
Publisher Copyright: © 2021 Elsevier LtdIn this work, the effectiveness of the deep learning model i...
Abstract Background Genetic information is becoming more readily available and is increasingly being...
Classification of cancer patients into treatment groups is essential for appropriate diagnosis to in...
Whole genome RNA expression studies permit systematic approaches to understanding the correlation be...