Independent Component Analysis is a matrix factorization method for data dimension reduction. ICA has been widely applied for the analysis of transcriptomic data for blind separation of biological, environmental, and technical factors affecting gene expression. The study aimed to analyze the publicly available esophageal cancer data using the ICA for identification and comprehensive analysis of reproducible signaling pathways and molecular signatures involved in this cancer type. In this study, four independent esophageal cancer transcriptomic datasets from GEO databases were used. A bioinformatics tool « BiODICA—Independent Component Analysis of Big Omics Data» was applied to compute independent components (ICs). Gene Set Enrichment Analys...
This PhD thesis studies dimensionality reduction using independent component analysis as a methodolo...
Independent component analysis (ICA) became a part of the standard machine learning pipeline for gen...
International audienceBACKGROUND:The amount of publicly available cancer-related "omics" data is con...
Independent Component Analysis is a matrix factorization method for data dimension reduction. ICA h...
International audienceIndependent Component Analysis is a matrix factorization method for data dimen...
Introduction: Independent Component Analysis (ICA) is a matrix factorization method for data dimensi...
The quantity of mRNA transcripts in a cell is determined by a complex interplay of cooperative and c...
The quantity of mRNA transcripts in a cell is determined by a complex interplay of cooperative and c...
Independent component analysis (ICA) is a matrix factorization approach where the signals captured b...
The quantity of mRNA transcripts in a cell is determined by a complex interplay of cooperative and c...
Independent component analysis (ICA) is a matrix factorization approach where the signals captured b...
The quantity of mRNA transcripts in a cell is determined by a complex interplay of cooperative and c...
peer reviewedBackground: The amount of publicly available cancer-related“omics”data is constantly gr...
Objective. To explore multiscale integrated analysis methods in identifying key regulators of esopha...
Philosophiae Doctor - PhDEsophageal cancer (EC) ranks among the ten most frequent cancers worldwide....
This PhD thesis studies dimensionality reduction using independent component analysis as a methodolo...
Independent component analysis (ICA) became a part of the standard machine learning pipeline for gen...
International audienceBACKGROUND:The amount of publicly available cancer-related "omics" data is con...
Independent Component Analysis is a matrix factorization method for data dimension reduction. ICA h...
International audienceIndependent Component Analysis is a matrix factorization method for data dimen...
Introduction: Independent Component Analysis (ICA) is a matrix factorization method for data dimensi...
The quantity of mRNA transcripts in a cell is determined by a complex interplay of cooperative and c...
The quantity of mRNA transcripts in a cell is determined by a complex interplay of cooperative and c...
Independent component analysis (ICA) is a matrix factorization approach where the signals captured b...
The quantity of mRNA transcripts in a cell is determined by a complex interplay of cooperative and c...
Independent component analysis (ICA) is a matrix factorization approach where the signals captured b...
The quantity of mRNA transcripts in a cell is determined by a complex interplay of cooperative and c...
peer reviewedBackground: The amount of publicly available cancer-related“omics”data is constantly gr...
Objective. To explore multiscale integrated analysis methods in identifying key regulators of esopha...
Philosophiae Doctor - PhDEsophageal cancer (EC) ranks among the ten most frequent cancers worldwide....
This PhD thesis studies dimensionality reduction using independent component analysis as a methodolo...
Independent component analysis (ICA) became a part of the standard machine learning pipeline for gen...
International audienceBACKGROUND:The amount of publicly available cancer-related "omics" data is con...