Normalize the count data present in a given assay.
NormalizeData(object, ...)# S3 method for V3Matrix
NormalizeData(
object,
normalization.method = "LogNormalize",
scale.factor = 10000,
margin = 1,
block.size = NULL,
verbose = TRUE,
...
)
# S3 method for Assay
NormalizeData(
object,
normalization.method = "LogNormalize",
scale.factor = 10000,
margin = 1,
verbose = TRUE,
...
)
# S3 method for Seurat
NormalizeData(
object,
assay = NULL,
normalization.method = "LogNormalize",
scale.factor = 10000,
margin = 1,
verbose = TRUE,
...
)
Returns object after normalization
An object
Arguments passed to other methods
Method for normalization.
“LogNormalize
”: Feature counts for each cell are
divided by the total counts for that cell and multiplied by the
scale.factor
. This is then natural-log transformed using log1p
“CLR
”: Applies a centered log ratio transformation
“RC
”: Relative counts. Feature counts for each cell
are divided by the total counts for that cell and multiplied by the
scale.factor
. No log-transformation is applied. For counts per
million (CPM) set scale.factor = 1e6
Sets the scale factor for cell-level normalization
If performing CLR normalization, normalize across features (1) or cells (2)
How many cells should be run in each chunk, will try to split evenly across threads
display progress bar for normalization procedure
Name of assay to use
if (FALSE) {
data("pbmc_small")
pbmc_small
pmbc_small <- NormalizeData(object = pbmc_small)
}
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