m6Aboost
This package can help user to run the m6Aboost model on their own miCLIP2 data. The package includes functions to assign the read counts and get the features to run the m6Aboost model. The miCLIP2 data should be stored in a GRanges object. More details can be found in the vignette.
- Repository
- github.com/zarnackgroup/m6aboost
Source attribution
- Bioconductor — m6Aboost
Related resources
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