HiLDA
github.com/uscbiostats/hildaA package built under the Bayesian framework of applying hierarchical latent Dirichlet allocation. It statistically tests whether the mutational exposures of mutational signatures (Shiraishi-model signatures) are different between two groups. The package also provides inference and visualization.
Sourced from
- Bioconductor — HiLDA
- GitHub — github.com/uscbiostats/hilda
Related resources
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