\name{ssStatistic} \alias{ssStatistic} \title{Calculate single study estimates of effect size} \description{ Calculate single study estimates of effect size for lists of \code{ExpressionSets} } \usage{ ssStatistic(statistic = c("t", "sam", "z")[1], phenotypeLabel, esetList, ...) } \arguments{ \item{statistic}{Character string indicating Welch t-statistic (t), SAM (sam), or a z-statistic (z)} \item{phenotypeLabel}{Character string indicating the name of the binary covariate} \item{esetList}{An object of class \code{ExpressionSetList}} \item{\dots}{Not implemented. Potentially additional arguments to the above methods that are implemented in other packages} } \details{ This function is a wrapper that provides an estimate of effect size for each study (element) in an \code{ExpressionSetList} object. For Welch t-statistic, this function is a wrapper for mt.teststat in the multtest package. For SAM, this function is a wrapper for the sam function in the siggenes package. The "z" statistic is a standardized unbiased estimate of effect size (Hedges and Olkin, 1985) -- implementation is in the zScores function in the R package GeneMeta. See the complete references below. } \value{ A matrix: rows are genes and columns are studies } \references{ J.K. Choi, U. Yu, S. Kim, and O.J. Yoo (2003), Combining multiple microarray studies and modeling interstudy variation, Bioinformatics, 19(1) I84-I90. Y. Ge, S. Dudoit & T. P. Speed (2003), Resampling-based multiple testing for microarray data hypothesis Test 12(1) : 1-44 (with discussions on 44-77). L. Lusa R. Gentleman, and M. Ruschhaupt, GeneMeta: MetaAnalysis for High Throughput Experiments L.V. Hedges and I. Olkin, Statistical Methods for Meta-analysis (1985), Academic Press Tusher, Tibshirani and Chu (2001), Significance analysis of microarrays applied to the ionizing radiation response, PNAS 2001 98: 5116-5121, (Apr 24). } \author{R. Scharpf} \examples{ data(expressionSetList) if(require(siggenes)){ sam <- ssStatistic("sam", esetList=expressionSetList, phenotypeLabel="adenoVsquamous") } } \keyword{methods}