ReducedExperiment
github.com/jackgisby/reducedexperimentProvides SummarizedExperiment-like containers for storing and manipulating dimensionally-reduced assay data. The ReducedExperiment classes allow users to simultaneously manipulate their original dataset and their decomposed data, in addition to other method-specific outputs like feature loadings. Implements utilities and specialised classes for the application of stabilised independent component analysis (sICA) and weighted gene correlation network analysis (WGCNA).
Sourced from
- Bioconductor — ReducedExperiment
- GitHub — github.com/jackgisby/reducedexperiment
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