gDNAx

github.com/functionalgenomics/gdnax
Active2updated 2 months ago
R
Artistic-2.0

Provides diagnostics for assessing genomic DNA contamination in RNA-seq data, as well as plots representing these diagnostics. Moreover, the package can be used to get an insight into the strand library protocol used and, in case of strand-specific libraries, the strandedness of the data. Furthermore, it provides functionality to filter out reads of potential gDNA origin.

Sourced from

  • GitHubgithub.com/functionalgenomics/gdnax
  • BioconductorgDNAx

Related resources

Quantify expression of transposable elements (TEs) from RNA-seq data through different methods, including ERVmap, TEtranscripts and Telescope. A common interface is provided to use each of these methods, which consists of building a parameter object, calling the quantification function with this object and getting a SummarizedExperiment object as output container of the quantified expression profiles. The implementation allows one to quantify TEs and gene transcripts in an integrated manner.

Active132 months ago
R
Artistic-2.0

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Active2473 weeks ago
R
GPL-3.0

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Idle18 months ago
R
GPL-2.0

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