toptable {limma} | R Documentation |
Extract a table of the top-ranked genes from a linear model fit.
topTable(fit, coef=NULL, number=10, genelist=fit$genes, adjust.method="BH", sort.by="B", resort.by=NULL, p.value=1, lfc=0) toptable(fit, coef=1, number=10, genelist=NULL, A=NULL, eb=NULL, adjust.method="BH", sort.by="B", resort.by=NULL, p.value=1, lfc=0, ...) topTableF(fit, number=10, genelist=fit$genes, adjust.method="BH", sort.by="F", p.value=1) topTreat(fit, coef=1, number=10, genelist=fit$genes, adjust.method="BH", sort.by="p", resort.by=NULL, p.value=1)
fit |
list containing a linear model fit produced by lmFit , lm.series , gls.series or mrlm .
For topTable , fit should be an object of class MArrayLM as produced by lmFit and eBayes . |
coef |
column number or column name specifying which coefficient or contrast of the linear model is of interest. For topTable , can also be a vector of column subscripts, in which case the gene ranking is by F-statistic for that set of contrasts. |
number |
maximum number of genes to list |
genelist |
data frame or character vector containing gene information.
For topTable only, this defaults to fit$genes . |
A |
matrix of A-values or vector of average A-values.
For topTable only, this defaults to fit$Amean . |
eb |
output list from ebayes(fit) .
If NULL , this will be automatically generated. |
adjust.method |
method used to adjust the p-values for multiple testing. Options, in increasing conservatism, include "none" , "BH" , "BY" and "holm" .
See p.adjust for the complete list of options. A NULL value will result in the default adjustment method, which is "BH" . |
sort.by |
character string specifying statistic to rank genes by. Possibilities for topTable and toptable are "logFC" , "AveExpr" , "t" , "P" , "p" , "B" or "none" . "M" is allowed as a synonym for "logFC" for backward compatibility. Other permitted synonyms are "A" or "Amean" for "AveExpr" , "T" for "t" and "p" for "P" . Possibilities for topTableF are "F" or "none" .
Possibilities for topTreat are as for topTable minus "B" . |
resort.by |
character string specifying statistic to sort the selected genes by in the output data.frame. Possibilities are the same as for sort.by . |
p.value |
cutoff value for adjusted p-values. Only genes with lower p-values are listed. |
lfc |
cutoff value for log2-fold-change. Only genes with larger fold changes are listed. |
... |
any other arguments are passed to ebayes if eb is NULL |
toptable
is an earlier interface and is retained only for backward compatibility.
This function summarizes a linear model fit object produced by lmFit
, lm.series
, gls.series
or mrlm
by selecting the top-ranked genes for any given contrast.
topTable
and topTableF
assume that the linear model fit has already been processed by eBayes
.
topTreat
assumes that the fit has been processed by treat
.
The p-values for the coefficient/contrast of interest are adjusted for multiple testing by a call to p.adjust
.
The "BH"
method, which controls the expected false discovery rate (FDR) below the specified value, is the default adjustment method because it is the most likely to be appropriate for microarray studies.
Note that the adjusted p-values from this method are bounds on the FDR rather than p-values in the usual sense.
Because they relate to FDRs rather than rejection probabilities, they are sometimes called q-values.
See help("p.adjust")
for more information.
Note, if there is no good evidence for differential expression in the experiment, that it is quite possible for all the adjusted p-values to be large, even for all of them to be equal to one.
It is quite possible for all the adjusted p-values to be equal to one if the smallest p-value is no smaller than 1/ngenes
where ngenes
is the number of genes with non-missing p-values.
The sort.by
argument specifies the criterion used to select the top genes.
The choices are: "logFC"
to sort by the (absolute) coefficient representing the log-fold-change; "A"
to sort by average expression level (over all arrays) in descending order; "T"
or "t"
for absolute t-statistic; "P"
or "p"
for p-values; or "B"
for the lods
or B-statistic.
Normally the genes appear in order of selection in the output table.
If a different order is wanted, then the resort.by
argument may be useful.
For example, topTable(fit, sort.by="B", resort.by="logFC")
selects the top genes according to log-odds of differential expression and then orders the selected genes by log-ratio in decreasing order.
Or topTable(fit, sort.by="logFC", resort.by="logFC")
would select the genes by absolute log-fold-change and then sort them from most positive to most negative.
topTableF
ranks genes on the basis of moderated F-statistics for one or more coefficients.
If topTable
is called with coef
has length greater than 1, then the specified columns will be extracted from fit
and topTableF
called on the result.
topTable
with coef=NULL
is the same as topTableF
, unless the fitted model fit
has only one column.
Toptable output for all probes in original (unsorted) order can be obtained by topTable(fit,sort="none",n=Inf)
.
However write.fit
or write
may be preferable if the intention is to write the results to a file.
A related method is as.data.frame(fit)
which coerces an MArrayLM
object to a data.frame.
By default number
probes are listed.
Alternatively, by specifying p.value
and number=Inf
, all genes with adjusted p-values below a specified value can be listed.
The argument lfc
gives the ability to filter genes by log-fold change.
This argument is not available for topTreat
because treat
already handles fold-change thresholding in a more sophisticated way.
A dataframe with a row for the number
top genes and the following columns:
genelist |
one or more columns of probe annotation, if genelist was included as input |
logFC |
estimate of the log2-fold-change corresponding to the effect or contrast |
AveExpr |
average log2-expression for the probe over all arrays and channels, same as Amean in the MarrayLM object |
t |
moderated t-statistic |
P.Value |
raw p-value |
adj.P.Value |
adjusted p-value or q-value |
B |
log odds that the gene is differentially expressed |
Gordon Smyth
An overview of linear model and testing functions is given in 06.LinearModels.
See also p.adjust
in the stats
package.
# See lmFit examples