I have the following datamatrix:
TranscriptID GeneID Biotype TranscriptName CommonNAme GeneName TSS-ID Locus-ID DNp63D-DMECs-1 DNp63D-DMECs-2 DNp63D-DMECs-3 DNp63WTMECs-1 DNp63WTMECs-2 Fold 2-tailedtest Test1 TestA protein_coding Fun1 Ex1 Ex1 ExA1 ExA1 1.15E-08 2.68E-12 0.005077929 4.99E-07 6.38E-08 6.02E+03 0.495089687 Test2 TestB protein_coding Fun2 Ex2 Ex2 ExA2 ExA2 3.69E-08 0.014129129 0.075213367 0.121370367 0.404553833 1.13E-01 0.123434776 Test3 TestC protein_coding Fun3 Ex3 Ex3 ExA3 ExA3 4.89E-05 0 0 6.58E-05 1.64E-34 4.96E-01 0.643007583 Test4 TestA protein_coding Fun4 Ex4 Ex4 ExA4 ExA4 0.058629449 0 0 0.056200966 0.253314667 1.26E-01 0.180082201 Test5 TestB protein_coding Fun5 Ex5 Ex5 ExA5 ExA5 7.80E-06 0 0 1.42E-11 4.20E-36 3.66E+05 0.495026427 Test6 TestC protein_coding Fun6 Ex6 Ex6 ExA6 ExA6 0 0 0 0 2.41E-101 0.00E+00 0.272228401 Test7 TestA protein_coding Fun7 Ex7 Ex7 ExA7 ExA7 3.77E-08 0.023945749 0.077103517 0.262936167 0.2940195 1.21E-01 0.004479038 Test8 TestB protein_coding Fun8 Ex8 Ex8 ExA8 ExA8 9.30E-09 4.82E-14 0.000827853 8.19E-07 7.47E-07 3.52E+02 0.496141526
I would like to generate a barplot for mean and standard error of the mean for each of the rows where columns 9 to 11 represent group A, and columns 12 to 13 represent group B. I wrote the following R script that works without a problem but I was wondering if :
there is any advice to optimize this script to make it run faster specially when i will have hundreds of rows sometimes and more columns.
- Is there a way to ensure that each 8 plots are output into a single file? Hence, my output would look like a matrix of 8 barplots
I tried multiplot function using:
multiplot(q, cols=4) #assuming this will draw 4 columns and each column will have 2 plots towards the end of my script below but that did not work. The current script below outputs each plot in a different file
- Is there a way to ensure that each 8 plots are output into a single file? Hence, my output would look like a matrix of 8 barplots
My R code:
input <- read.delim(file="MECs-DNp63IsoformLevels.txt", header=TRUE, sep="\t")
input<-as.matrix(input)
for (i in 1:nrow(input)) {
mean1 <- mean(as.numeric(input[i,12:13]))
mean2 <- mean(as.numeric(input[i,9:11]))
sd1 <- sd(as.numeric(input[i,12:13]))
sd2 <- sd(as.numeric(input[i,9:11]))
sem1 <- sd2/sqrt(length(input[i,12:13]))
sem2 <- sd1/sqrt(length(input[i,9:11]))
mean_sem <- data.frame(mean=c(mean1, mean2), sem=c(sem1, sem2), group=c("WT", "DNp63D-D"))
mean_sem$group<-factor(mean_sem$group, levels=mean_sem$group, ordered=TRUE) #this prevents ggplot from ordering the x-axis alphabaetically and keeps the order as the input dataframe
theme_set(theme_gray(base_size = 20))
print(i)
p<- ggplot(mean_sem, aes(x=group, y=mean)) +
geom_bar(stat='identity', width=.3, colour="black", fill=c("blue", "red")) +
geom_errorbar(aes(ymin=mean-sem, ymax=mean+sem),
width=.2) +
geom_line(aes(colour=group)) +
scale_colour_manual(values=c("blue", "red")) +
xlab('Genotype of MECs') +
ylab('Quantile Norm FPKM')
q = p +ggtitle(input[i,5])
ggsave(filename=paste(input[i,5],'.png', sep=""), plot=q)
}
As i indicated, the above script works. but can i optimize it to run faster on larger data sets? Also, how can I output 8 images into one file in a for loop.
My goal is to have an output similar to the below (it can be 2 columns and 4 rows, or any combination.. as long as within the for loop i could output multiple graphs to one plot).
reshape2::melt
), this answer usesapply
to work across sets of columns (like your data?), create plots, and combine them (using grobs).