1

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 :

  1. 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.

    1. 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

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)

}

An example of the output is: enter image description here

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).

enter image description here

5
  • 1
    Perhaps this belongs on Code Review? Jan 29, 2016 at 19:53
  • 1
    Thank you, i didn't know there was something dedicated just to that. I will make sure exist time to post things in Code Review
    – BioProgram
    Jan 29, 2016 at 19:54
  • @JasonAizkalns I have expanded/edited the question to make it more relevant
    – BioProgram
    Jan 29, 2016 at 20:10
  • It sounds like your data are spread out across columns? While I'm a fan of melting data (reshape2::melt), this answer uses apply to work across sets of columns (like your data?), create plots, and combine them (using grobs).
    – oshun
    Feb 2, 2016 at 19:33
  • @oshun i never wrote a function in R. I did try it though and I posted my result here . I am not sure if that's what you meant. yet, i cant get 8 figures/file.
    – BioProgram
    Feb 3, 2016 at 4:29

0

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Browse other questions tagged or ask your own question.