\name{replicateCorrelations} \alias{replicateCorrelations} \alias{intraclassCorrelations} \title{A generic function to compute intraclass correlations} \description{This generic function computes intraclass correlations for duplicate peak data.} \usage{ replicateCorrelations(Data, \dots) } \arguments{ \item{Data}{An object of \code{aclinicalProteomicsData} class. } \item{\dots}{Some methods for this generic function may take additional, optional arguments. At present none do.} } \value{ \item{consensus:}{consensus intraclass correlation.} \item{correlations:}{intraclass correlations for each peak.} } \references{ Nyangoma SO, Ferreira JA, Collins SI, Altman DG, Johnson PJ, and Billingham LJ: Sample size calculations for planning clinical proteomic profiling studies using mass spectrometry. Bioinformatics (Submitted) Smyth GK, et al.: Use of within-array replicate spots for assessing differential expression in microarray experiments. Bioinformatics 2005, 21, 2067 - 75 Smyth GK: Linear models and emperical Bayes methods for assessing differential expression in microarray experiments. Stat Appl Genet Mol Biol 2004, 3, 1, Article 3 } \author{Stephen Nyangoma} \examples{ data(liverdata) data(liver_pheno) OBJECT=new("aclinicalProteomicsData") OBJECT@rawSELDIdata=as.matrix(liverdata) OBJECT@covariates=c("tumor" , "sex") OBJECT@phenotypicData=as.matrix(liver_pheno) OBJECT@variableClass=c('numeric','factor','factor') OBJECT@no.peaks=53 replicateCorrelations(OBJECT) }