MSF: Modulated Sub-graph Finder.
Mariam R FarmanIvo L HofackerFabian AmmanPublished in: F1000Research (2018)
High throughput techniques such as RNA-seq or microarray analysis have proven tobe invaluable for the characterization of global transcriptional gene activity changesdue to external stimuli or diseases. Differential gene expression analysis (DGEA) is the first step in the course of data interpretation, typically producing lists of dozens to thousands of differentially expressed genes. To further guide the interpretation of these lists, different pathway analysis approaches have been developed. These tools typically rely on the classification of genes into sets of genes, such as pathways, based on the interactions between the genes and their function in a common biological process. Regardless of technical differences, these methods do not properly account for cross talk between different pathways and rely on binary separation into differentially expressed gene and unaffected genes based on an arbitrarily set p-value cut-off. To overcome this limitation, we developed a novel approach to identify concertedly modulated sub-graphs in the global cell signaling network, based on the DGEA results of all genes tested. To this end, expression patterns of genes are integrated according to the topology of their interactions and allow potentially to read the flow of information and identify the effectors. The described software, named Modulated Sub-graph Finder (MSF) is freely available at https://github.com/Modulated-Subgraph-Finder/MSF.
Keyphrases
- genome wide identification
- genome wide
- bioinformatics analysis
- transcription factor
- genome wide analysis
- rna seq
- single cell
- high throughput
- dna methylation
- copy number
- gene expression
- stem cells
- healthcare
- machine learning
- cell therapy
- deep learning
- electronic health record
- oxidative stress
- mesenchymal stem cells
- ionic liquid
- artificial intelligence
- data analysis
- neural network