\name{kmeansMde} \alias{kmeansMde} \title{ Function to do k-means cluster analysis } \description{ This is a function to do k-means clustering analysis for objects of class \code{\link{maigesDEcluster}}. } \usage{ kmeansMde(data, group=c("C", "R")[1], distance="correlation", method="complete", sampleT=NULL, doHier=FALSE, sLabelID="SAMPLE", gLabelID="GeneName", idxTest=1, adjP="none", nDEgenes=0.05, \dots) } \arguments{ \item{data}{object of class \code{\link{maigesDEcluster}}.} \item{group}{character string giving the type of grouping: by rows 'R' or columns 'C' (default).} \item{distance}{char string giving the type of distance to use. Here we use the function \code{\link[amap:dist]{Dist}} and the possible values are 'euclidean', 'maximum', 'manhattan', 'canberra', 'binary', 'pearson', 'correlation' (default) and 'spearman'.} \item{method}{char string specifying the linkage method for the hierarchical cluster. Possible values are 'ward', 'single', 'complete' (default), 'average', 'mcquitty', 'median' or 'centroid'} \item{sampleT}{list with 2 vectors. The first one specify the first letter of different sample types to be coloured by distinct colours, that are given in the second vector. If NULL (default) no colour is used.} \item{doHier}{logical indicating if you want to do the hierarchical branch in the opposite dimension of clustering. Defaults to FALSE.} \item{sLabelID}{character string specifying the sample label ID to be used to label the samples.} \item{gLabelID}{character string specifying the gene label ID to be used to label the genes.} \item{idxTest}{numerical index of the test to be used to sort the genes when clustering objects of class \code{\link{maigesDEcluster}}.} \item{adjP}{string specifying the method of p-value adjustment. May be 'none', 'Bonferroni', 'Holm', 'Hochberg', 'SidakSS', 'SidakSD', 'BH', 'BY'.} \item{nDEgenes}{number of DE genes to be selected. If a real number in (0,1) all genes with p.value <= \code{nDEgenes} will be used. If an integer, the \code{nDEgenes} genes with smaller p-values will be used.} \item{\dots}{additional parameters for \code{\link[amap]{Kmeans}} function.} } \details{ This function implements the k-means clustering method for objects resulted from differential analysis. The method uses the function \code{\link[amap]{Kmeans}} from package \emph{amap}. For the adjustment of p-values in the selection of genes differentially expressed, we use the function \code{\link[multtest]{mt.rawp2adjp}} from package \emph{multtest}. } \value{ This function display the heatmaps and return invisibly a list resulted from the function \code{\link[amap]{Kmeans}}. } \seealso{ \code{\link[amap]{Kmeans}} from package \emph{amap}. \code{\link[multtest]{mt.rawp2adjp}} from package \emph{multtest}. \code{\link{somM}} and \code{\link{hierM}} for displaying SOM and hierarchical clusters, respectively. } \examples{ ## Loading the dataset data(gastro) ## Doing bootstrap from t statistic test fot 'Type' sample label, k=1000 ## specifies one thousand bootstraps gastro.ttest = deGenes2by2Ttest(gastro.summ, sLabelID="Type") ## K-means cluster with 2 groups adjusting p-values by FDR, and showing all genes ## with p-value < 0.05 kmeansMde(gastro.ttest, sLabelID="Type", adjP="BH", nDEgenes=0.05, centers=2) ## K-means cluster with 3 groups adjusting p-values by FDR, and showing all genes ## with p-value < 0.05 kmeansMde(gastro.ttest, sLabelID="Type", adjP="BH", nDEgenes=0.05, centers=3) dev.off() } \author{ Gustavo H. Esteves <\email{gesteves@vision.ime.usp.br}> } \keyword{hplot}