Description Usage Arguments Value Examples
View source: R/differential_expression.R
Given a merged object with multiple SCT models, this function uses minimum of the median UMI (calculated using the raw UMI counts) of individual objects to reverse the individual SCT regression model using minimum of median UMI as the sequencing depth covariate. The counts slot of the SCT assay is replaced with recorrected counts and the data slot is replaced with log1p of recorrected counts.
1 | PrepSCTFindMarkers(object, assay = "SCT", verbose = TRUE)
|
object |
Seurat object with SCT assays |
assay |
Assay name where for SCT objects are stored; Default is 'SCT' |
verbose |
Print messages and progress |
Returns a Seurat object with recorrected counts and data in the SCT assay.
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 | data("pbmc_small")
pbmc_small1 <- SCTransform(object = pbmc_small, variable.features.n = 20)
pbmc_small2 <- SCTransform(object = pbmc_small, variable.features.n = 20)
pbmc_merged <- merge(x = pbmc_small1, y = pbmc_small2)
pbmc_merged <- PrepSCTFindMarkers(object = pbmc_merged)
markers <- FindMarkers(
object = pbmc_merged,
ident.1 = "0",
ident.2 = "1",
assay = "SCT"
)
pbmc_subset <- subset(pbmc_merged, idents = c("0", "1"))
markers_subset <- FindMarkers(
object = pbmc_subset,
ident.1 = "0",
ident.2 = "1",
assay = "SCT",
recorrect_umi = FALSE
)
|
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