Usage
adjacency(datExpr, selectCols = NULL,
type = "unsigned", power = if (type=="distance") 1 else 6,
corFnc = "cor", corOptions = "use = 'p'",
distFnc = "dist", distOptions = "method = 'euclidean'")
adjacency.fromSimilarity(similarity, type = "unsigned", power = if (type=="distance") 1 else 6)
Arguments
datExpr
data frame containing expression data. Columns correspond to genes and rows to
samples.
similarity
a (signed) similarity matrix: square, symmetric matrix with entries between -1 and 1.
selectCols
for correlation networks only (see below);
can be used to select genes whose adjacencies will be calculated. Should be either a
numeric vector giving the indices of the genes to be used, or a boolean vector indicating which genes are
to be used.
type
network type. Allowed values are (unique abbreviations of) "unsigned"
,
"signed"
, "signed hybrid"
, "distance"
.
power
soft thresholding power.
corFnc
character string specifying the function to be used to calculate co-expression
similarity for correlation networks.
Defaults to Pearson correlation. Any function returning values between -1 and 1 can be used.
corOptions
character string specifying additional arguments to be passed to the function given
by corFnc
. Use "use = 'p', method = 'spearman'"
to obtain Spearman correlation.
distFnc
character string specifying the function to be used to calculate co-expression
similarity for distance networks. Defaults to the function dist
.
Any function returning non-negative values can be used. distOptions
character string specifying additional arguments to be passed to the function given
by distFnc
. For example, when the function dist
is used, the argument method
can be used to spec