0

I have seen similar questions to mine but could not find the way to solve it in this specific case.

I am trying to do the difference between values from two consecutive rows when the value in another column is negative. If not, I want to copy the value from another column.

    symbol      Strt        End         len    Overlap
121 TPTE2P4     26508213    26579690    1605    153795
46  CYCSP49     26549425    26549743    319     -30265
116 SLC25A15P1  26586642    26591601    342      36899
84  PARP4P1     26594851    26634652    2337      3250

So with the date from above, I am trying to do the difference between values from two consecutive rows (End of the current row -Start from the previous row) when the value in Overlap column is negative. If not, I want to copy the value from len. I should expect these results in the column len_no_overlap:

    symbol      Strt        End         len    Overlap  len_no_overlap
121 TPTE2P4     26508213    26579690    1605    153795       1605
46  CYCSP49     26549425    26549743     319    -30265    **41530**
116 SLC25A15P1  26586642    26591601     342     36899        342
84  PARP4P1     26594851    26634652    2337      3250       2337

So in this case, only in the second row the Overlap is negative, and the len_no_overlap value comes from 26549743-26508213.

I have written the code as follows but can not vectorise it to work

if (DPM_356_out_High_loss$Overlap < 0) {
   DPM_356_out_High_loss$len_no_overlap <- c(NA, tail(DPM_356_out_High_loss$End, -1)      head(DPM_356_out_High_loss$Strt, -1))
   } else {
       DPM_356_out_High_loss$len_no_overlap <- DPM_356_out_High_loss$len
   }

Any help with this would be much appreciated. Thanks!

0

Here is a tidyverse solution:

DPM_356_out_High_loss %>% mutate(no_overlap_len = if_else(Overlap<0, End-lag(Strt), len))
# A tibble: 4 x 6
  symbol         Strt      End   len Overlap no_overlap_len
  <chr>         <dbl>    <dbl> <dbl>   <dbl>          <dbl>
1 TPTE2P4    26508213 26579690  1605  153795           1605
2 CYCSP49    26549425 26549743   319  -30265          41530
3 SLC25A15P1 26586642 26591601   342   36899            342
4 PARP4P1    26594851 26634652  2337    3250           2337
0

This can be done without loops, just fully vectorized code.

  1. First, create the new column by assigning the entire old column to it, not caring to know if the values in Overlap are negative.
  2. Then get indices to the negative values in Overlap.
  3. Finally, compute the differences in one instruction.

The code becomes the following.

DPM_356_out_High_loss$len_no_overlap <- DPM_356_out_High_loss$Overlap
inx <- which(DPM_356_out_High_loss$Overlap < 0)

DPM_356_out_High_loss$len_no_overlap[inx] <- DPM_356_out_High_loss$End[inx] - DPM_356_out_High_loss$Strt[inx - 1]

DPM_356_out_High_loss
#        symbol     Strt      End  len Overlap len_no_overlap
#121    TPTE2P4 26508213 26579690 1605  153795         153795
#46     CYCSP49 26549425 26549743  319  -30265          41530
#116 SLC25A15P1 26586642 26591601  342   36899          36899
#84     PARP4P1 26594851 26634652 2337    3250           3250

Data.

DPM_356_out_High_loss <- read.table(text = "
    symbol  Strt    End len Overlap
121 TPTE2P4 26508213    26579690    1605    153795
46  CYCSP49 26549425    26549743    319 -30265
116 SLC25A15P1  26586642    26591601    342 36899
84  PARP4P1 26594851    26634652    2337    3250
", header = TRUE)

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.