\name{sumstats} \alias{sumstats} \title{Summary statistics on xy co-ordinates, returns the slopes and distance from origin of each co-ordinate.} \description{ Given a \code{\link{data.frame}} or \code{\link{matrix}} containing xy coordinates, it returns the slope and distance from origin of each coordinate. } \usage{ sumstats(array, xax = 1, yax = 2) } \arguments{ \item{array}{A \code{\link{data.frame}} or \code{\link{matrix}} containing xy coordinates, normally a \$co, \$li from \code{\link[ade4:dudi]{dudi}} such as PCA or COA, or \$ls from \code{\link[made4:bga]{bga}}} \item{xax}{Numeric, an integer indicating the column of the x axis coordinates. Default xax=1 } \item{yax}{ Numeric, an integer indicating the column of the x axis coordinates. Default xax=2 } } \details{ In PCA or COA, the variables (upregulated genes) that are most associated with a case (microarray sample), are those that are projected in the same direction from the origin. Variables or cases that have a greater contribution to the variance in the data are projected further from the origin in PCA. Equally variables and cases with the strong association have a high chi-square value, and are projected with greater distance from the origin in COA, See a description from Culhane et al., 2002 for more details. Although the projection of co-ordinates are best visualised on an xy plot, \code{sumstats} returns the slope and distance from origin of each x,y coordinate in a matrix. } \value{ A matrix (ncol=3) containing \preformatted{ slope angle (in degrees) distance from origin } of each x,y coordinates in a matrix. } \references{ } \author{ Aedin Culhane } \note{} \seealso{ } \examples{ data(khan) if (require(ade4, quiet = TRUE)) { khan.bga<-bga(khan$train, khan$train.classes)} plotarrays(khan.bga$bet$ls, classvec=khan$train.classes) st.out<-sumstats(khan.bga$bet$ls) # Get stats on classes EWS and BL EWS<-khan$train.classes==levels(khan$train.classes)[1] st.out[EWS,] BL<-khan$train.classes==levels(khan$train.classes)[2] st.out[BL,] # Add dashed line to plot to highlight min and max slopes of class BL slope.BL.min<-min(st.out[BL,1]) slope.BL.max<-max(st.out[BL,1]) abline(c(0,slope.BL.min), col="red", lty=5) abline(c(0,slope.BL.max), col="red", lty=5) } \keyword{manip}