nipalsMCIA
github.com/muunraker/nipalsmciaComputes Multiple Co-Inertia Analysis (MCIA), a dimensionality reduction (jDR) algorithm, for a multi-block dataset using a modification to the Nonlinear Iterative Partial Least Squares method (NIPALS) proposed in (Hanafi et. al, 2010). Allows multiple options for row- and table-level preprocessing, and speeds up computation of variance explained. Vignettes detail application to bulk- and single cell- multi-omics studies.
Sourced from
- GitHub — github.com/muunraker/nipalsmcia
- Bioconductor — nipalsMCIA
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