PLAID ultrafast gene set enrichment scoring


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Documentation for package ‘plaid’ version 0.99.19

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chunked_crossprod Chunked computation of cross product
colranks Compute columnwise ranks of matrix
cor_sparse_matrix Calculate sparse correlation matrix handling missing values
dualGSEA Reimplementation of dualGSEA (Bull et al., 2024) but defaults with replaid backend. For the preranked test we still use fgsea. Should be much faster than original using fgsea + GSVA::ssGSEA.
fc_ttest T-test statistical testing of differentially enrichment
fc_ztest Z-test statistical testing of differentially enrichment
gmt2mat Convert GMT to Binary Matrix
gset.rankcor Calculate gene set rank correlation
gset_averageCLR Compute geneset expression as the average log-ration of genes in the geneset. Requires log-expression matrix X and (sparse) geneset matrix matG.
gset_ttest Perform t-test on gene set scores
mat.rowsds Calculate row standard deviations for matrix
mat2gmt Convert Binary Matrix to GMT
matrix_metap Matrix version for combining p-values using fisher or stouffer method. Much faster than doing metap::sumlog() and metap::sumz()
matrix_onesample_ttest Perform one-sample t-test on matrix with gene sets
normalize_medians Normalize column medians of matrix
plaid Compute PLAID single-sample enrichment score
read.gmt Read GMT File
replaid.aucell Fast calculation of AUCell
replaid.gsva Fast approximation of GSVA
replaid.scse Fast calculation of scSE score
replaid.sing Fast calculation of singscore
replaid.ssgsea Fast calculation of ssGSEA
replaid.ucell Fast calculation of UCell
sparse_colranks Compute columm ranks for sparse matrix. Internally used by colranks()
write.gmt Write GMT File