Abstract Background One approach to improving the personalized treatment of cancer is to understand the cellular signaling transduction pathways that cause cancer at the level of the individual patient. In this study, we used unsupervised deep learning to learn the hierarchical structure within cancer gene expression data. Deep learning is a group of machine learning algorithms that use multiple layers of hidden units to capture hierarchically related, alternative representations of the input data. We hypothesize that this hierarchical structure learned by deep learning will be related to the cellular signaling system. Results Robust deep learning model selection identified a network architecture that is biologically plausible. Our model se...
Deep learning is a subdiscipline of artificial intelligence that uses a machine learning technique c...
Advanced diagnostics are enabling cancer treatments to become increasingly tailored to the individua...
Abstract Deep learning models are increasingly being used to interpret whole‐slide images (WSIs) in ...
Background Accurate cancer classification is essential for correct treatment select...
Background: Deep learning has proven to show outstanding performance in resolving recognition and cl...
Gene expression measurements capture downstream biological responses to molecular perturbations. Thi...
Gene expression measurements capture downstream biological responses to molecular perturbations. Thi...
Simple Summary Gliomas are heterogenous types of cancer, therefore the therapy should be personalize...
Cancer tissue-of-origin specific biomarkers are needed for effective diagnosis, monitoring, and trea...
This study aims to discover genes with prognostic potential for glioblastoma (GBM) patients’ s...
The modern technology of DNA microarrays has made high-dimensional genomic data available for large-...
BACKGROUND: Accurate characterization of glioma is crucial for clinical decision making. A delineati...
Deep learning has proven advantageous in solving cancer diagnostic or classification problems. Howev...
Despite the vast increase of high-throughput molecular data, the prediction of important disease gen...
Breast cancer is the most frequently found cancer in women and the one most often subjected to genet...
Deep learning is a subdiscipline of artificial intelligence that uses a machine learning technique c...
Advanced diagnostics are enabling cancer treatments to become increasingly tailored to the individua...
Abstract Deep learning models are increasingly being used to interpret whole‐slide images (WSIs) in ...
Background Accurate cancer classification is essential for correct treatment select...
Background: Deep learning has proven to show outstanding performance in resolving recognition and cl...
Gene expression measurements capture downstream biological responses to molecular perturbations. Thi...
Gene expression measurements capture downstream biological responses to molecular perturbations. Thi...
Simple Summary Gliomas are heterogenous types of cancer, therefore the therapy should be personalize...
Cancer tissue-of-origin specific biomarkers are needed for effective diagnosis, monitoring, and trea...
This study aims to discover genes with prognostic potential for glioblastoma (GBM) patients’ s...
The modern technology of DNA microarrays has made high-dimensional genomic data available for large-...
BACKGROUND: Accurate characterization of glioma is crucial for clinical decision making. A delineati...
Deep learning has proven advantageous in solving cancer diagnostic or classification problems. Howev...
Despite the vast increase of high-throughput molecular data, the prediction of important disease gen...
Breast cancer is the most frequently found cancer in women and the one most often subjected to genet...
Deep learning is a subdiscipline of artificial intelligence that uses a machine learning technique c...
Advanced diagnostics are enabling cancer treatments to become increasingly tailored to the individua...
Abstract Deep learning models are increasingly being used to interpret whole‐slide images (WSIs) in ...