RJMCMCNucleosomes
This package does nucleosome positioning using informative Multinomial-Dirichlet prior in a t-mixture with reversible jump estimation of nucleosome positions for genome-wide profiling.
Source attribution
- Bioconductor — RJMCMCNucleosomes
Related resources
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