cageminer
github.com/almeidasilvaf/cageminerThis package aims to integrate GWAS-derived SNPs and coexpression networks to mine candidate genes associated with a particular phenotype. For that, users must define a set of guide genes, which are known genes involved in the studied phenotype. Additionally, the mined candidates can be given a score that favor candidates that are hubs and/or transcription factors. The scores can then be used to rank and select the top n most promising genes for downstream experiments.
Sourced from
- Bioconductor — cageminer
- GitHub — github.com/almeidasilvaf/cageminer
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