This function calls sctransform::vst. The sctransform package is available at https://github.com/ChristophH/sctransform. Use this function as an alternative to the NormalizeData, FindVariableFeatures, ScaleData workflow. Results are saved in a new assay (named SCT by default) with counts being (corrected) counts, data being log1p(counts), scale.data being pearson residuals; sctransform::vst intermediate results are saved in misc slot of new assay.
SCTransform(object, assay = "RNA", new.assay.name = "SCT",
do.correct.umi = TRUE, variable.features.n = 3000,
variable.features.rv.th = 1.3, vars.to.regress = NULL,
do.scale = FALSE, do.center = TRUE, clip.range = c(-sqrt(x = ncol(x
= object[[assay]])/30), sqrt(x = ncol(x = object[[assay]])/30)),
conserve.memory = FALSE, return.only.var.genes = TRUE,
seed.use = 1448145, verbose = TRUE, ...)
A seurat object
Name of assay to pull the count data from; default is 'RNA'
Name for the new assay containing the normalized data
Place corrected UMI matrix in assay counts slot; default is TRUE
Use this many features as variable features after ranking by residual variance; default is 3000
Instead of setting a fixed number of variable features,
use this residual variance cutoff; this is only used when variable.features.n
is set to NULL; default is 1.3
Variables to regress out in a second non-regularized linear regression. For example, percent.mito. Default is NULL
Whether to scale residuals to have unit variance; default is FALSE
Whether to center residuals to have mean zero; default is TRUE
Range to clip the residuals to; default is c(-sqrt(n/30), sqrt(n/30))
,
where n is the number of cells
If set to TRUE the residual matrix for all genes is never created in full; useful for large data sets, but will take longer to run; this will also set return.only.var.genes to TRUE; default is FALSE
If set to TRUE the scale.data matrices in output assay are subset to contain only the variable genes; default is FALSE
Set a random seed. By default, sets the seed to 1448145. Setting NULL will not set a seed.
Whether to print messages and progress bars
Additional parameters passed to sctransform::vst
Returns a Seurat object with a new assay (named SCT by default) with counts being (corrected) counts, data being log1p(counts), scale.data being pearson residuals; sctransform::vst intermediate results are saved in misc slot of the new assay.
# NOT RUN {
SCTransform(object = pbmc_small)
# }
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