RNA Structure Ensemble Inference via Sequencing, Mutation Identification, and Clustering
Project description
SEISMIC-RNA
RNA Structure Ensemble Inference by Sequencing, Mutation Identification, and Clustering
About
SEISMIC-RNA analyzes data from RNA mutational profiling experiments, such as DMS-MaPseq and SHAPE-MaP. This software introduces an optimized implementation of the algorithm DREEM for detecting and quantifying RNA structure ensembles.
Installation and Usage
Documentation for installing and using SEISMIC-RNA is available on GitHub Pages.
Issues
The issue page of the GitHub repository is the official location for reporting bugs and other issues. Before opening a new issue, please check if a similar issue already exists.
Contributors
SEISMIC-RNA has been developed by the following individuals in the lab of Silvi Rouskin at Harvard Medical School:
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