DFP

https://bioconductor.org/packages/DFP

This package provides a supervised technique able to identify differentially expressed genes, based on the construction of \emph{Fuzzy Patterns} (FPs). The Fuzzy Patterns are built by means of applying 3 Membership Functions to discretized gene expression values.

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  • BioconductorDFP

Related resources

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