mitology
github.com/caluralab/mitologymitology allows to study the mitochondrial activity throught high-throughput RNA-seq data. It is based on a collection of genes whose proteins localize in to the mitochondria. From these, mitology provides a reorganization of the pathways related to mitochondria activity from Reactome and Gene Ontology. Further a ready-to-use implementation of MitoCarta3.0 pathways is included.
Sourced from
- Bioconductor — mitology
- GitHub — github.com/caluralab/mitology
Related resources
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