miRcomp

Software
R
GPL-3 | file LICENSE

Based on a large miRNA dilution study, this package provides tools to read in the raw amplification data and use these data to assess the performance of methods that estimate expression from the amplification curves.

Source attribution

  • BioconductormiRcomp

Related resources

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