Background: Representing the complex interplay between different types of biomolecules across different omics layers in multi-omics networks bears great potential to gain a deep mechanistic understanding of gene regulation and disease. However, multi-omics networks easily grow into giant hairball structures that hamper biological interpretation. Module detection methods can decompose these networks into smaller interpretable modules. However, these methods are not adapted to deal with multi-omics data nor consider topological features. When deriving very large modules or ignoring the broader network context, interpretability remains limited. To address these issues, we developed a SUbgraph BAsed mulTi-OMIcs Clustering framework (SUBATOMIC),...
International audienceBackground: To understand biological processes and diseases, it is crucial to ...
<div><p>One of the main challenges in modern medicine is to stratify different patient groups in ter...
BACKGROUND: The most common application of microarray technology in disease research is to identify ...
Improved methods for integrated analysis of heterogeneous large-scale omic data are direly needed. H...
Background: Genomic, proteomic and high-throughput gene expression data, when integrated, can be use...
Abstract Gene expression profiles can show significant changes when genetically diseased cells are c...
Large-scale gene expression studies are widely used to identify genes that are differentially expres...
Advancements in next-generation sequencing technologies have fueled the development of high throughp...
Computational tools for multiomics data integration have usually been designed for unsupervised dete...
Gene expression profiles can show significant changes when genetically diseased cells are compared w...
Copyright © 2015 Ru Shen et al.This is an open access article distributed under the Creative Commons...
Gene expression profiles can show significant changes when genetically diseased cells are compared w...
Understanding the cellular behavior from a systems perspective requires the identification of functi...
Background: Protein-protein interaction (PPI) networks carry vital information about proteins’ funct...
Background. The molecular profiles exhibited in different cancer types are very different; hence, di...
International audienceBackground: To understand biological processes and diseases, it is crucial to ...
<div><p>One of the main challenges in modern medicine is to stratify different patient groups in ter...
BACKGROUND: The most common application of microarray technology in disease research is to identify ...
Improved methods for integrated analysis of heterogeneous large-scale omic data are direly needed. H...
Background: Genomic, proteomic and high-throughput gene expression data, when integrated, can be use...
Abstract Gene expression profiles can show significant changes when genetically diseased cells are c...
Large-scale gene expression studies are widely used to identify genes that are differentially expres...
Advancements in next-generation sequencing technologies have fueled the development of high throughp...
Computational tools for multiomics data integration have usually been designed for unsupervised dete...
Gene expression profiles can show significant changes when genetically diseased cells are compared w...
Copyright © 2015 Ru Shen et al.This is an open access article distributed under the Creative Commons...
Gene expression profiles can show significant changes when genetically diseased cells are compared w...
Understanding the cellular behavior from a systems perspective requires the identification of functi...
Background: Protein-protein interaction (PPI) networks carry vital information about proteins’ funct...
Background. The molecular profiles exhibited in different cancer types are very different; hence, di...
International audienceBackground: To understand biological processes and diseases, it is crucial to ...
<div><p>One of the main challenges in modern medicine is to stratify different patient groups in ter...
BACKGROUND: The most common application of microarray technology in disease research is to identify ...