Assay
MethodsMethods for Assay
objects for generics defined in
other packages
# S3 method for Assay
[(x, i, j, ...)# S3 method for Assay
[[(x, i, ..., drop = FALSE)
# S3 method for Assay
dim(x)
# S3 method for Assay
dimnames(x)
# S3 method for Assay
head(x, n = 10L, ...)
# S3 method for Assay
merge(x = NULL, y = NULL, add.cell.ids = NULL, merge.data = TRUE, ...)
# S3 method for Assay
subset(x, cells = NULL, features = NULL, ...)
# S3 method for Assay
tail(x, n = 10L, ...)
# S4 method for Assay
[[(x, i, j, ...) <- value
# S4 method for Assay
colMeans(x, na.rm = FALSE, dims = 1, ..., slot = "data")
# S4 method for Assay
colSums(x, na.rm = FALSE, dims = 1, ..., slot = "data")
# S4 method for Assay
rowMeans(x, na.rm = FALSE, dims = 1, ..., slot = "data")
# S4 method for Assay
rowSums(x, na.rm = FALSE, dims = 1, ..., slot = "data")
# S4 method for Assay
show(object)
An Assay
object
For [[
: metadata names; for all other methods,
feature names or indices
Cell names or indices
Arguments passed to other methods
See drop
an integer vector of length up to dim(x)
(or 1,
for non-dimensioned objects). Values specify the indices to be
selected in the corresponding dimension (or along the length) of the
object. A positive value of n[i]
includes the first/last
n[i]
indices in that dimension, while a negative value
excludes the last/first abs(n[i])
, including all remaining
indices. NA
or non-specified values (when length(n) <
length(dim(x))
) select all indices in that dimension. Must
contain at least one non-missing value.
A vector or list of one or more objects to merge
A character vector of length(x = c(x, y))
;
appends the corresponding values to the start of each objects' cell names
Merge the data slots instead of just merging the counts (which requires renormalization); this is recommended if the same normalization approach was applied to all objects
Additional metadata to add
logical. Should missing values (including NaN
)
be omitted from the calculations?
completely ignored by the Matrix
methods.
Name of assay expression matrix to calculate column/row means/sums on
[
: The data
slot for features i
and cells
j
[[
: The feature-level metadata for i
dim
: The number of features (nrow
) and cells
(ncol
)
dimnames
: Feature (row) and cell (column) names
head
: The first n
rows of feature-level metadata
merge
: Merged object
subset
: A subsetted Assay
tail
: The last n
rows of feature-level metadata
[[<-
: x
with metadata value
added as i
colMeans
: The column (cell-wise) means of slot
colSums
: The column (cell-wise) sums of slot
rowMeans
: The row (feature-wise) means of slot
rowSums
: The row (feature-wise) sums of slot
show
: Prints summary to stdout
and
invisibly returns NULL
[.Assay
: Get expression data from an Assay
[[.Assay
: Get feature-level metadata
dim.Assay
: Number of cells and features for an Assay
dimnames.Assay
: Cell- and feature-names for an Assay
head.Assay
: Get the first rows of feature-level metadata
merge.Assay
: Merge Assay
objects
subset.Assay
: Subset an Assay
tail.Assay
: Get the last rows of feature-level metadata
[[<-,Assay-method
: Add feature-level metadata
colMeans,Assay-method
: Calculate colMeans
on an
Assay
colSums,Assay-method
: Calculate colSums
on an
Assay
rowMeans,Assay-method
: Calculate rowMeans
on an
Assay
rowSums,Assay-method
: Calculate rowSums
on an
Assay
show,Assay-method
: Overview of an Assay
object