printtipWeights: Sub-array Quality Weights

Description Usage Arguments Details Value Author(s) References See Also Examples

View source: R/printtipWeights.R

Description

Estimates relative quality weights for each sub-array in a multi-array experiment.

Usage

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printtipWeights(object, design = NULL, weights = NULL, method = "genebygene", layout,
                maxiter = 50, tol = 1e-10, trace=FALSE)

Arguments

object

object of class numeric, matrix, MAList, marrayNorm, or ExpressionSet containing log-ratios or log-values of expression for a series of spotted microarrays.

design

the design matrix of the microarray experiment, with rows corresponding to arrays and columns to coefficients to be estimated. Defaults to the unit vector meaning that the arrays are treated as replicates.

weights

optional numeric matrix containing prior weights for each spot.

method

character string specifying the estimating algorithm to be used. Choices are "genebygene" and "reml".

layout

list specifying the dimensions of the spot matrix and the grid matrix. For details see PrintLayout-class.

maxiter

maximum number of iterations allowed.

tol

convergence tolerance.

trace

logical variable. If true then output diagnostic information at each iteration of "reml" algorithm.

Details

The relative reliability of each sub-array (print-tip group) is estimated by measuring how well the expression values for that sub-array follow the linear model.

The method described in Ritchie et al (2006) and implemented in the arrayWeights function is adapted for this purpose. A heteroscedastic model is fitted to the expression values for each gene by calling the function lm.wfit. The dispersion model is fitted to the squared residuals from the mean fit, and is set up to have sub-array specific coefficients, which are updated in either full REML scoring iterations, or using an efficient gene-by-gene update algorithm. The final estimates of the sub-array variances are converted to weights.

The data object object is interpreted as for lmFit. In particular, the arguments design, weights and layout will be extracted from the data object if available and do not normally need to be set explicitly in the call; if any of these are set in the call then they will over-ride the slots or components in the data object.

Value

A matrix of sub-array weights.

Author(s)

Matthew Ritchie and Gordon Smyth

References

Ritchie, M. E., Diyagama, D., Neilson, van Laar, R., J., Dobrovic, A., Holloway, A., and Smyth, G. K. (2006). Empirical array quality weights in the analysis of microarray data. BMC Bioinformatics 7, 261. http://www.biomedcentral.com/1471-2105/7/261/abstract

See Also

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

Examples

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## Not run: 
# This example is designed for work on a subset of the data
# from ApoAI case study in Limma User's Guide

RG <- backgroundCorrect(RG, method="normexp")
MA <- normalizeWithinArrays(RG)
targets <- data.frame(Cy3=I(rep("Pool",6)),Cy5=I(c("WT","WT","WT","KO","KO","KO")))
design <- modelMatrix(targets, ref="Pool")
subarrayw <- printtipWeights(MA, design, layout=mouse.setup)
fit <- lmFit(MA, design, weights=subarrayw)
fit2 <- contrasts.fit(fit, contrasts=c(-1,1))
fit2 <- eBayes(fit2)
# Use of sub-array weights increases the significance of the top genes
topTable(fit2)
# Create an image plot of sub-array weights from each array
zlim <- c(min(subarrayw), max(subarrayw))
par(mfrow=c(3,2), mai=c(0.1,0.1,0.3,0.1))
for(i in 1:6) 
	imageplot(subarrayw[,i], layout=mouse.setup, zlim=zlim, main=paste("Array", i))

## End(Not run)

limma documentation built on Nov. 8, 2020, 8:28 p.m.