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Sorry if the title is not clear or I am not explaining this well.

I have a scoring matrix as a data frame that looks like:

    1          2          3          4         5 6          7        8         9        10
L 40.220674 17.3635308 17.3635308 17.3635308  9.867452 0  0.0000000 0.000000 0.0000000 0.0000000
M 29.589501 19.1056911 19.1056911 19.1056911 14.285714 0 10.0000000 6.842105 1.4736842 0.1052632
I 13.761672 10.1045296 10.1045296 10.1045296  0.000000 0  0.0000000 0.000000 0.0000000 0.0000000
Y 25.085714 21.4285714 21.4285714 21.4285714 12.223859 0  0.0000000 0.000000 0.0000000 0.0000000
W  3.555865  0.8130081  0.8130081  0.8130081  0.000000 0  0.0000000 0.000000 0.0000000 0.0000000
K  2.700859  0.2322880  0.2322880  0.2322880  1.325479 0  2.6315789 3.684211 2.6315789 2.1052632
S  8.739141  6.9105691  6.9105691  6.9105691  0.000000 0  0.0000000 0.000000 0.0000000 0.0000000
V  1.969431  0.2322880  0.2322880  0.2322880  0.000000 0  3.4736842 3.684211 2.5263158 0.1052632

Each row corresponds to a different amino acid and each column is the position of that amino acid in a peptide.

I also have a df of many peptides indicating the amino acid in each position of the peptide.

pep_1 pep_2 pep_3
1      M     A     C
2      A     C     L
3      C     L     W
4      L     W     S
5      W     S     F
6      S     F     S
7      F     S     W
8      S     W     P
9      W     P     S
10     P     S     C
11     S     C     F
12     C     F     L
13     F     L     S
14     L     S     L

I am trying to match each peptide to the score matrix and when an amino acid is in the same position as it is in the scoring matrix, I want to export and sum all those values for each peptide.

I have tried unsuccessfully using plyr::match_df.

Is there a higher order function or package that may be able to accomplish this? Any suggestions are welcome.

Thank you!

4
  • "when an amino acid is in the same position as it is in the scoring matrix" by that you mean that you want to associate the value (call it x) of the i row for each peptide in the second df, with the value on the i column and row that is named x in the first df? Then sum the column of each pep_i? Oct 17 '20 at 19:03
  • @RicardoSemiãoeCastro, yes that is exactly what I mean.
    – poconnel3
    Oct 17 '20 at 20:15
  • @poconel3 but then shouldn't the second data frame have the same number of columns as the first has of rows? Oct 17 '20 at 20:30
  • Plus, the amino acids on the second df can be "M" "A" "C" "L" "W" "S" "F" "P", while the first have other options (row names) "L" "M" "I" "Y" "W" "K" "S" "V". Shouldn't these two be the same? Oct 17 '20 at 20:56
0

We could reshape both the datasets into 'long' format with pivot_longer, then do a join with left_join on the matching columns, and reshape the output back to 'wide' format with pivot_wider

library(dplyr)
library(tidyr)
library(tibble)
df2 %>% 
    mutate(rn = row_number()) %>%
    pivot_longer(cols = -rn, values_to = 'pep') %>% 
    left_join(df1 %>% 
              rownames_to_column('pep') %>% 
              pivot_longer(cols = -pep, names_to = 'rn') %>% 
              mutate(rn = as.integer(rn))) %>% 
    select(-pep) %>% 
    pivot_wider(names_from = name, values_from = value)

data

df1 <- structure(list(`1` = c(40.220674, 29.589501, 13.761672, 25.085714, 
3.555865, 2.700859, 8.739141, 1.969431), `2` = c(17.3635308, 
19.1056911, 10.1045296, 21.4285714, 0.8130081, 0.232288, 6.9105691, 
0.232288), `3` = c(17.3635308, 19.1056911, 10.1045296, 21.4285714, 
0.8130081, 0.232288, 6.9105691, 0.232288), `4` = c(17.3635308, 
19.1056911, 10.1045296, 21.4285714, 0.8130081, 0.232288, 6.9105691, 
0.232288), `5` = c(9.867452, 14.285714, 0, 12.223859, 0, 1.325479, 
0, 0), `6` = c(0L, 0L, 0L, 0L, 0L, 0L, 0L, 0L), `7` = c(0, 10, 
0, 0, 0, 2.6315789, 0, 3.4736842), `8` = c(0, 6.842105, 0, 0, 
0, 3.684211, 0, 3.684211), `9` = c(0, 1.4736842, 0, 0, 0, 2.6315789, 
0, 2.5263158), `10` = c(0, 0.1052632, 0, 0, 0, 2.1052632, 0, 
0.1052632)), class = "data.frame", row.names = c("L", "M", "I", 
"Y", "W", "K", "S", "V"))

df2 <- structure(list(pep_1 = c("M", "A", "C", "L", "W", "S", "F", "S", 
"W", "P", "S", "C", "F", "L"), pep_2 = c("A", "C", "L", "W", 
"S", "F", "S", "W", "P", "S", "C", "F", "L", "S"), pep_3 = c("C", 
"L", "W", "S", "F", "S", "W", "P", "S", "C", "F", "L", "S", "L"
)), class = "data.frame", row.names = c("1", "2", "3", "4", "5", 
"6", "7", "8", "9", "10", "11", "12", "13", "14"))
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  • Trying this solution now. It looks like the first mutate call is throwing this error: Error: n() must only be used inside dplyr verbs.
    – poconnel3
    Oct 17 '20 at 20:14
  • I corrected this by using: rownames_to_column(., var = "rn") in place of your mutate call. However, now the Left_join call is having issues throwing the following error: Joining, by = c("rn", "pep") Error: Can't join on x$rn x y$rn because of incompatible types. ℹ x$rn is of type <character>>. ℹ y$rn is of type <integer>>.
    – poconnel3
    Oct 17 '20 at 20:21
  • @poconnel3 if you check my code, I did a correction with mutate(rn = as.integer(rn)) to match the type
    – akrun
    Oct 17 '20 at 20:22
  • @poconnel3 if you use rownames_to_column, it is a character class and with row_number, it is integer, that is the reason I changed to as.integer. With rownames_to-column, you may not need that conversion because both are character
    – akrun
    Oct 17 '20 at 20:23
  • OK, got it. something was just masking mutate from dplyr on my end. After correcting that it works perfect! Thank you for this tidy solution!
    – poconnel3
    Oct 17 '20 at 20:29

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