DExMA
https://bioconductor.org/packages/DExMAperforming all the steps of gene expression meta-analysis considering the possible existence of missing genes. It provides the necessary functions to be able to perform the different methods of gene expression meta-analysis. In addition, it contains functions to apply quality controls, download GEO datasets and show graphical representations of the results.
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- Bioconductor — DExMA
Related resources
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