\name{heatplot} \alias{heatplot} \title{Draws heatmap with dendrograms.} \description{ \code{heatplot} calls \code{heatmap.2} using a red-green colour scheme by default. It also draws dendrograms of the cases and variables using correlation similarity metric and average linkage clustering as described by Eisen. \code{heatplot} is useful for a quick overview or exploratory analysis of data } \usage{heatplot(dataset, dend = c("both", "row", "column", "none"), cols.default = TRUE, lowcol = "green", highcol = "red", scale="row", classvec=NULL, classvec2=NULL, ...) } \arguments{ \item{dataset}{ a \code{\link{matrix}}, \code{\link{data.frame}}, \code{\link[Biobase:ExpressionSet-class]{ExpressionSet}} or \code{\link[marrayClasses:marrayRaw-class]{marrayRaw}}. If the input is gene expression data in a \code{\link{matrix}} or \code{\link{data.frame}}. The rows and columns are expected to contain the variables (genes) and cases (array samples) respectively.} \item{dend}{A character indicating whether dendrograms should be drawn for both rows and columms "both", just rows "row" or column "column" or no dendrogram "none". Default is both.} \item{cols.default}{Logical. Default is \code{TRUE}. Use blue-brown color scheme.} \item{lowcol, highcol}{Character indicating colours to be used for down and upregulated genes when drawing heatmap if the default colors are not used, that is cols.default = FALSE.} \item{scale}{Default is row. Scale and center either "none","row", or "column").} \item{classvec}{ A \code{factor} or \code{vector} which describes the classes in columns or rows of the \code{dataset}. Default is \code{NULL}. If included, a color bar including the class of each column (array sample) or row (gene) will be drawn. It will automatically add to either the columns or row, depending if the length(as.character(classvec)) ==nrow(dataset) or ncol(dataset).} \item{classvec2}{ A \code{factor} or \code{vector} which describes the classes in columns or rows of the \code{dataset}. Default is \code{NULL}. If included, a color bar including the class of each column (array sample) or row (gene) will be drawn. It will automatically add to either the columns or row, depending if the length(as.character(classvec)) ==nrow(dataset) or ncol(dataset).} \item{\dots}{further arguments passed to or from other methods.} } \details{ The hierarchical plot is produced using average linkage cluster analysis with a correlation metric distance. \code{heatplot} calls \code{\link[gplots:heatmap.2]{heatmap.2}} in the R package \code{gplots}. } \value{Plots a heatmap with dendrogram of hierarchical cluster analysis} \references{ Eisen MB, Spellman PT, Brown PO and Botstein D. (1998). Cluster Analysis and Display of Genome-Wide Expression Patterns. Proc Natl Acad Sci USA 95, 14863-8. } \author{Aedin Culhane} \note{ Because Eisen et al., 1998 use green-red colours for the heatmap \code{heatplot} uses these by default however a blue-red or yellow-blue are easily obtained by changing lowcol and highcol} \seealso{ See also as \code{\link[stats:hclust]{hclust}}, \code{\link[stats:heatmap]{heatmap}} and \code{\link[stats:dendrogram]{dendrogram}}} \examples{ data(khan) heatplot(khan$train[1:30,], cols.default=FALSE, lowcol="white", highcol="red") heatplot(khan$train[1:26,], labCol = c(64:1), labRow=LETTERS[1:26]) heatplot(khan$train[1:26,], classvec=khan$train.classes) if (require(ade4, quiet = TRUE)) { res<-ord(khan$train, ord.nf=5) # save 5 components from correspondence analysis khan.coa = res$ord } # Provides a view of the components of the Correspondence analysis (gene projection) in the lines (row) heatplot(khan.coa$li) # first 5 components heatplot(khan.coa$li, margins=c(4,20)) # Change the margin size. The default is c(5,5) # Sample projection (columns) # See that the difference between tissues and cell line samples are defined in the first axis. heatplot(khan.coa$co,classvec2=khan$train.classes, cols.default=FALSE, lowcol="blue", dend="row", scale="none") } \keyword{hplot} \keyword{manip}