fourSynergy
github.com/sophiewind/foursynergyfourSynergy is an ensemble algorithm leveraging synergies among the existing 4C-seq algorithms r3C-seq, peakC, r.4cker and fourSig. It uses a weighted voting approach to perform improved interaction calling. fourSynergy supports also differential interaction calling.
Sourced from
- Bioconductor — fourSynergy
- GitHub — github.com/sophiewind/foursynergy
Related resources
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