GenomicInteractionNodes
The GenomicInteractionNodes package can import interactions from bedpe file and define the interaction nodes, the genomic interaction sites with multiple interaction loops. The interaction nodes is a binding platform regulates one or multiple genes. The detected interaction nodes will be annotated for downstream validation.
Source attribution
- Bioconductor — GenomicInteractionNodes
Related resources
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