Mercurial > repos > marie-tremblay-metatoul > asca
view ssq.R @ 0:93312041f1d5 draft default tip
planemo upload for repository https://github.com/workflow4metabolomics/ascaw4m commit 7ea9b0f8abc5a60c2c04fd2098788497f14766b6
author | marie-tremblay-metatoul |
---|---|
date | Fri, 21 Sep 2018 05:51:14 -0400 |
parents | |
children |
line wrap: on
line source
library(lmdme) library(MetStaT) ## Data : attention standardiser au prealable data <- read.table("E:/PROJETS/Asca_W4M/Test_Matlab_data.txt", sep="\t", dec=",", header=TRUE, row.names=1) design <- read.table("E:/PROJETS/Asca_W4M/Test_Matlab_design.txt", sep="\t", dec=",", header=TRUE) design[,1] <- as.factor(design[,1]) design[,2] <- as.factor(design[,2]) ## Verifier noms fit <- lmdme(model=~F1 + F2 + F1:F2, data=data, design=design) permuted <- permutation(model=~F1*F2, data=data, design=design, NPermutations=100, nCpus=3) decomposition(fit, decomposition = "pca", scale="none", type="coefficient") ssq <- function(fit) { Overall_means <- sum(sum(fitted.values(fit)$'(Intercept)'^2))/sum(sum(data^2)) Factors <- c(sum(sum(fitted.values(fit)$'F1'^2))/sum(sum(data^2)), sum(sum(fitted.values(fit)$'F2'^2))/sum(sum(data^2))) Interactions <- sum(sum(fitted.values(fit)$'F1:F2'^2))/sum(sum(data^2)) Residuals <- 1 - Overall_means - Factors[1] - Factors[2] - Interactions return(list(Overall_means, Factors, Interactions, Residuals)) } par(mfrow=c(2,2)) biplot(fit, xlabs="o", mfcol=NULL) ##Just the term of interest biplot(fit, xlabs="o", term="F1") ##In separate graphics biplot(fit, xlabs="o", term=c("F1", "F2"), mfcol=c(1,1)) ##All terms in the same graphic biplot(fit, xlabs="o", mfcol=c(1,3)) test <-lapply(permuted, FUN = ssq) test1 <- matrix(unlist(test), ncol=5, byrow=TRUE) test[2:101] apply(apply(test1, 2, FUN = function(x){x > x[1]})[-1,], 2 , sum) / (length(test)-1) score_moyen <- data.frame(fit@components$F1$rotation) score <- data.frame(cbind(design, t(fit@residuals$'F1:F2')%*%fit@components$F1$rotation)) pc <- fit@components$F1$sdev / sum(fit@components$F1$sdev) sp <- ggplot(score_moyen, aes(x=PC1, y=PC2)) sp + geom_point(size=2) + xlab(paste("PC1", round(pc[1]*100,1), "%")) + ylab(paste("PC2", round(pc[2]*100,1), "%")) + geom_text(data=score, aes(PC1, PC2, label=Ind, col=F1), size=4, hjust=0, nudge_x=0.05, vjust=0, nudge_y=0.5)