limma (version 3.28.14)

lm.series: Fit Linear Model to Microrray Data by Ordinary Least Squares

Description

Fit a linear model genewise to expression data from a series of arrays. This function uses ordinary least squares and is a utility function for lmFit.

Usage

lm.series(M,design=NULL,ndups=1,spacing=1,weights=NULL)

Arguments

M
numeric matrix containing log-ratio or log-expression values for a series of microarrays, rows correspond to genes and columns to arrays
design
numeric design matrix defining the linear model. The number of rows should agree with the number of columns of M. The number of columns will determine the number of coefficients estimated for each gene.
ndups
number of duplicate spots. Each gene is printed ndups times in adjacent spots on each array.
spacing
the spacing between the rows of M corresponding to duplicate spots, spacing=1 for consecutive spots
weights
an optional numeric matrix of the same dimension as M containing weights for each spot. If it is of different dimension to M, it will be filled out to the same size.

Value

A list with components
coefficients
numeric matrix containing the estimated coefficients for each linear model. Same number of rows as M, same number of columns as design.
stdev.unscaled
numeric matrix conformal with coef containing the unscaled standard deviations for the coefficient estimators. The standard errors are given by stdev.unscaled * sigma.
sigma
numeric vector containing the residual standard deviation for each gene.
df.residual
numeric vector giving the degrees of freedom corresponding to sigma.
qr
QR-decomposition of design

Details

This is a utility function used by the higher level function lmFit. Most users should not use this function directly but should use lmFit instead.

The linear model is fit for each gene by calling the function lm.fit or lm.wfit from the base library.

See Also

lm.fit.

An overview of linear model functions in limma is given by 06.LinearModels.

Examples

Run this code
# See lmFit for examples

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