SummarizedExperiment (version 1.0.0)

SummarizedExperiment0-class: SummarizedExperiment0 objects

Description

The SummarizedExperiment0 class is a matrix-like container where rows represent features of interest (e.g. genes, transcripts, exons, etc...) and columns represent samples (with sample data summarized as a DataFrame). A SummarizedExperiment0 object contains one or more assays, each represented by a matrix-like object of numeric or other mode.

Note that SummarizedExperiment0 is the parent of the RangedSummarizedExperiment class which means that all the methods documented below also work on a RangedSummarizedExperiment object.

Usage

## Constructor
# See ?RangedSummarizedExperiment for the constructor function.
## Accessors
assayNames(x, ...) assayNames(x, ...) <- value assays(x, ..., withDimnames=TRUE) assays(x, ..., withDimnames=TRUE) <- value assay(x, i, ...) assay(x, i, ...) <- value colData(x, ...) colData(x, ...) <- value #dim(x) #dimnames(x) #dimnames(x) <- value
## Quick colData access
"$"(x, name) "$"(x, name) <- value "[["(x, i, j, ...) "[["(x, i, j, ...) <- value
## Subsetting
"["(x, i, j, ..., drop=TRUE) "["(x, i, j) <- value
## Combining
"cbind"(..., deparse.level=1) "rbind"(..., deparse.level=1)

Arguments

x
A SummarizedExperiment0 object.
...
For assay, ... may contain withDimnames, which is forwarded to assays.

For cbind, rbind, ... contains SummarizedExperiment0 objects to be combined.

For other accessors, ignored.

i, j
For assay, assay<-, i is an integer or numeric scalar; see ‘Details’ for additional constraints.

For [,SummarizedExperiment0, [,SummarizedExperiment0<-, i, j are subscripts that can act to subset the rows and columns of x, that is the matrix elements of assays.

For [[,SummarizedExperiment0, [[<-,SummarizedExperiment0, i is a scalar index (e.g., character(1) or integer(1)) into a column of colData.

name
A symbol representing the name of a column of colData.
withDimnames
A logical(1), indicating whether dimnames should be applied to extracted assay elements. Setting withDimnames=FALSE increases the speed and memory efficiency with which assays are extracted. withDimnames=TRUE in the getter assays<- allows efficient complex assignments (e.g., updating names of assays, names(assays(x, withDimnames=FALSE)) = ... is more efficient than names(assays(x)) = ...); it does not influence actual assignment of dimnames to assays.
drop
A logical(1), ignored by these methods.
value
An object of a class specified in the S4 method signature or as outlined in ‘Details’.
deparse.level
See ?base::cbind for a description of this argument.

Constructor

SummarizedExperiment0 instances are constructed using the SummarizedExperiment function documented in ?RangedSummarizedExperiment.

Accessors

In the following code snippets, x is a SummarizedExperiment0 object.
assays(x), assays(x) <- value:
Get or set the assays. value is a list or SimpleList, each element of which is a matrix with the same dimensions as x.
assay(x, i), assay(x, i) <- value:
A convenient alternative (to assays(x)[[i]], assays(x)[[i]] <- value) to get or set the ith (default first) assay element. value must be a matrix of the same dimension as x, and with dimension names NULL or consistent with those of x.
assayNames(x), assayNames(x) <- value:
Get or set the names of assay() elements.
colData(x), colData(x) <- value:
Get or set the column data. value is a DataFrame object. Row names of value must be NULL or consistent with the existing column names of x.
metadata(x), metadata(x) <- value:
Get or set the experiment data. value is a list with arbitrary content.
dim(x):
Get the dimensions (features of interest x samples) of the SummarizedExperiment0.
dimnames(x), dimnames(x) <- value:
Get or set the dimension names. value is usually a list of length 2, containing elements that are either NULL or vectors of appropriate length for the corresponding dimension. value can be NULL, which removes dimension names. This method implies that rownames, rownames<-, colnames, and colnames<- are all available.

Subsetting

In the code snippets below, x is a SummarizedExperiment0 object.
x[i,j], x[i,j] <- value:
Create or replace a subset of x. i, j can be numeric, logical, character, or missing. value must be a SummarizedExperiment0 object with dimensions, dimension names, and assay elements consistent with the subset x[i,j] being replaced.
Additional subsetting accessors provide convenient access to colData columns
x$name, x$name <- value
Access or replace column name in x.
x[[i, ...]], x[[i, ...]] <- value
Access or replace column i in x.

Combining

In the code snippets below, ... are SummarizedExperiment0 objects to be combined.
cbind(...):
cbind combines objects with the same features of interest but different samples (columns in assays). The colnames in colData(SummarizedExperiment0) must match or an error is thrown. Duplicate columns of mcols(SummarizedExperiment0) must contain the same data. Data in assays are combined by name matching; if all assay names are NULL matching is by position. A mixture of names and NULL throws an error. metadata from all objects are combined into a list with no name checking.
rbind(...):
rbind combines objects with the same samples but different features of interest (rows in assays). The colnames in mcols(SummarizedExperiment0) must match or an error is thrown. Duplicate columns of colData(SummarizedExperiment0) must contain the same data. Data in assays are combined by name matching; if all assay names are NULL matching is by position. A mixture of names and NULL throws an error. metadata from all objects are combined into a list with no name checking.

Implementation and Extension

This section contains advanced material meant for package developers. SummarizedExperiment0 is implemented as an S4 class, and can be extended in the usual way, using contains="SummarizedExperiment0" in the new class definition. In addition, the representation of the assays slot of SummarizedExperiment0 is as a virtual class Assays. This allows derived classes (contains="Assays") to easily implement alternative requirements for the assays, e.g., backed by file-based storage like NetCDF or the ff package, while re-using the existing SummarizedExperiment0 class without modification. See Assays for more information. The current assays slot is implemented as a reference class that has copy-on-change semantics. This means that modifying non-assay slots does not copy the (large) assay data, and at the same time the user is not surprised by reference-based semantics. Updates to non-assay slots are very fast; updating the assays slot itself can be 5x or more faster than with an S4 instance in the slot. One useful technique when working with assay or assays function is use of the withDimnames=FALSE argument, which benefits speed and memory use by not copying dimnames from the row- and colData elements to each assay.

Details

The SummarizedExperiment0 class is meant for numeric and other data types derived from a sequencing experiment. The structure is rectangular like a matrix, but with additional annotations on the rows and columns, and with the possibility to manage several assays simultaneously.

The rows of a SummarizedExperiment0 object represent features of interest. Information about these features is stored in a DataFrame object, accessible using the function mcols. The DataFrame must have as many rows as there are rows in the SummarizedExperiment0 object, with each row of the DataFrame providing information on the feature in the corresponding row of the SummarizedExperiment0 object. Columns of the DataFrame represent different attributes of the features of interest, e.g., gene or transcript IDs, etc.

Each column of a SummarizedExperiment0 object represents a sample. Information about the samples are stored in a DataFrame, accessible using the function colData, described below. The DataFrame must have as many rows as there are columns in the SummarizedExperiment0 object, with each row of the DataFrame providing information on the sample in the corresponding column of the SummarizedExperiment0 object. Columns of the DataFrame represent different sample attributes, e.g., tissue of origin, etc. Columns of the DataFrame can themselves be annotated (via the mcols function). Column names typically provide a short identifier unique to each sample.

A SummarizedExperiment0 object can also contain information about the overall experiment, for instance the lab in which it was conducted, the publications with which it is associated, etc. This information is stored as a list object, accessible using the metadata function. The form of the data associated with the experiment is left to the discretion of the user.

The SummarizedExperiment0 container is appropriate for matrix-like data. The data are accessed using the assays function, described below. This returns a SimpleList object. Each element of the list must itself be a matrix (of any mode) and must have dimensions that are the same as the dimensions of the SummarizedExperiment0 in which they are stored. Row and column names of each matrix must either be NULL or match those of the SummarizedExperiment0 during construction. It is convenient for the elements of SimpleList of assays to be named.

See Also

Examples

Run this code
nrows <- 200; ncols <- 6
counts <- matrix(runif(nrows * ncols, 1, 1e4), nrows)
colData <- DataFrame(Treatment=rep(c("ChIP", "Input"), 3),
                     row.names=LETTERS[1:6])
se0 <- SummarizedExperiment(assays=SimpleList(counts=counts),
                            colData=colData)
se0
dim(se0)
dimnames(se0)
assayNames(se0)
head(assay(se0))
assays(se0) <- endoapply(assays(se0), asinh)
head(assay(se0))

se0[, se0$Treatment == "ChIP"]

## cbind() combines objects with the same features of interest
## but different samples:
se1 <- se0
se2 <- se1[,1:3]
colnames(se2) <- letters[1:ncol(se2)] 
cmb1 <- cbind(se1, se2)
dim(cmb1)
dimnames(cmb1)

## rbind() combines objects with the same samples but different
## features of interest:
se1 <- se0
se2 <- se1[1:50,]
rownames(se2) <- letters[1:nrow(se2)] 
cmb2 <- rbind(se1, se2)
dim(cmb2)
dimnames(cmb2)

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