1

I am performing a paired t test on data of multiple groups and would like to "export" this into a .csv file

Here's the data:

 table <- read.table(text=' group    M1      M2
 Group 1 0.5592884 0.5592884
 Group 1 0.3481799 0.3481799
 Group 1 0.2113786 0.2113786
 Group 1 0.2817871 0.2817871
 Group 2 0.2543952 0.2543952
 Group 2 0.2016288 0.2016288
 Group 2 0.2098503 0.2098503
 Group 2 0.1060097 0.1060097
 Group 3 0.2405704 0.2405704
 Group 3 0.3200119 0.3200119
 Group 3 0.2453895 0.2453895
 Group 3 1.3107510 1.3107510
 Group 4 0.8600338 0.8600338
 Group 4 0.5381423 0.5381423
 Group 4 0.7348685 0.7348685
 Group 4 0.2969512 0.2969512', header=TRUE)

as I don't want to compare M1 to M2 but the groups to each other, I perform the paired t.test as follows:

sig<-lapply(table[2:3], function(x) 
  pairwise.t.test(x, table$group,
                  p.adjust.method = "BH"))

However, as the result is a list, I cannot write is in a .csv file with this:

sink('test.csv')
cat('paired t results')
write.csv(sig)
sink()

I tried to work around by using capture.output, but this looses the separation

sig_output<-capture.output(print(sig))

is there a way to directly write sig into a csv file or a workouround?

Thank you!

2

Just use print after sink:

print(sig)

But note that the result is not a CSV file, contrary to what your code says. If you just want to save the p-value table, you could do something like the following:

save_p_values = function (test_data, filename) {
    write.csv(test_data$p.value, filename)
}

Map(save_p_values, sig, paste0(names(sig), '.csv'))

To get both tables in the same file, you need to add a column that distinguishes them; using ‹dplyr›:

sig_combined = sig %>%
    # Extract p-value tables
    map(`[[`, 'p.value') %>%
    # Convert matrix to data.frame so we can work with dplyr
    map(as.data.frame) %>%
    # Preserve rownames by saving them into column:
    map(tibble::rownames_to_column, 'Contrast') %>%
    # Add name of column that t-test was performed on
    map2(names(.), ~ mutate(.x, Col = .y)) %>%
    # Merge into one table
    bind_rows()

write.csv(sig_combined, 'results.csv')
  • Thanks, the second option works well for me! Any chance I can write the results for M1 and M2 in one file rather than two? Cheers :) – Kevin Roth Nov 24 '17 at 13:56
  • @KevinRoth Yes, you can set the append = TRUE argument in write.csv, and then just use the same filename. But in that case I’d probably just concatenate the tables first and write them afterwards, once. – Konrad Rudolph Nov 24 '17 at 14:02
  • 1
    @KevinRoth See updated answer. It’s a bit more effort. If you’re unfamiliar with the packages I’ve used, the commends should help. Briefly, purrr::map is like lapply on steroids, and dplyr is the future of structured table manipulation in R. – Konrad Rudolph Nov 24 '17 at 14:14
  • wow. thank you. This is far beyond my R capabilities, so for now, I'll just copy paste it and try to make it work for my actual dataset. Again, thank you very much! – Kevin Roth Nov 24 '17 at 14:21
  • works perfectly. Can I apply this solution to a table with more columns, as the input table could be anything from 1 to +10 columns (sorry for the inconvenience) – Kevin Roth Nov 24 '17 at 14:33

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