BOBaFIT
github.com/andrea-poletti-unibo/bobafitThis package provides a method to refit and correct the diploid region in copy number profiles. It uses a clustering algorithm to identify pathology-specific normal (diploid) chromosomes and then use their copy number signal to refit the whole profile. The package is composed by three functions: DRrefit (the main function), ComputeNormalChromosome and PlotCluster.
Sourced from
- Bioconductor — BOBaFIT
- GitHub — github.com/andrea-poletti-unibo/bobafit
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