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  • Language
    R
  • Created over 6 years ago
  • Updated over 6 years ago

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Repository Details

Shiny application to evaluate the performance of several differential gene expression tools for RNA-seq data.

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Additional-File-2

This github repository includes R software codes used for a study on the evaluation of 14 differential gene expression methods for RNA-sequencing data (particularly for mRNA and lncRNA). The study has three main modules: (1) comparing selected normalization methods, (2) concordance analysis of 14 DGE analysis tools using 6 publicly accessible real RNA-seq data, and (3) non-parametric simulation study to evaluate tools with respect to false discovery rate and sensitivity.
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