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I have a my data in a dataframe as follows:

someName    someID  1                  2                  3
A           1       T7(P),M6(O),S6(P)  T7(P),M6(O),S6(P)  T7(P),M6(O),S6(P),S7(P)
B           2       S4(P)              S4(P)              NA
C           3       S1(P),Q9(D)        S1(P),Q9(D)        S16(P),Q9(D)
D           4       S5(P),C7(C),S4(P)  S4(P),C7(C),S4(P)  S5(P),C7(C),S14(P)
E           5       S18(P)             S18(P)             S18(P)
F           6       S1(P)              NA                 S1(P)
L           8       Z1(P)              NA                 NA
Z           9       NA                 NA                 Q100(P)

I would like to read across each row in my df1 and find exact matches for split elements and count them. Then display the total in a new column cbind to my df1.

For example in row someName=A, I would want to split the string in column 1,2,3 on commas and look for T7(P) which is found in all 3 so the sum would be 3. So is S6(P). So the total would be 3+3=6 for row A. (S7(P) is ignored since it is not found in any other column).

I want to ignore any other item that does not have a (P), so M6(O) is ignored.

Row L would have a total of 0, since it does not intersect any other columns.

So I could use the apply function to go row by row then split the columns by ,

Then how can i do an intersect or match across the split values?

My dput(df1) is:

structure(list(someName = structure(1:8, .Label = c("A", "B", 
"C", "D", "E", "F", "L", "Z"), class = "factor"), someID = c(1L, 
2L, 3L, 4L, 5L, 6L, 8L, 9L), `1` = c("T7(P),M6(O),S6(P)", "S4(P)", 
"S1(P),Q9(D)", "S5(P),C7(C),S4(P)", "S18(P)", "S1(P)", "Z1(P)", 
NA), `2` = c("T7(P),M6(O),S6(P)", "S4(P)", "S1(P),Q9(D)", "S4(P),C7(C),S4(P)", 
"S18(P)", NA, NA, NA), `3` = c("T7(P),M6(O),S6(P),S7(P)", NA, 
"S16(P),Q9(D)", "S5(P),C7(C),S14(P)", "S18(P)", "S1(P)", NA, 
"Q100(P)")), .Names = c("someName", "someID", "1", "2", "3"), row.names = c(NA, 
-8L), class = "data.frame")
share|improve this question
up vote 3 down vote accepted

Here another approach using regular expression and table. The idea is to extract , from each row, elements having a certain pattern [A-Z][0-9]+(P) and count them if they are present more than once.

apply(dat,1,function(xx){
    tab <- table(unlist(regmatches(xx,gregexpr('[A-Z][0-9]+\\(P\\)',xx))))
    sum(tab[tab>1])
})
[ 1] 6 2 2 5 3 2 0 0
share|improve this answer
    
perfect! Thank you both for your code.i used cbind to add a column to my main data frame. – RnD Jun 24 '13 at 5:48

An attempt, assuming your data.frame is called test:

# collapse and split them up
splts <- strsplit(apply(test[3:5],1,function(x) paste(x,collapse=",")),",")
# remove all the non (P) cases
splts <- mapply(function(x,y) x[y], splts, lapply(splts, function(x) grep("(P)",x,fixed=TRUE)))
# sum up those that appear more than once
test$sumtext <- sapply(splts,function(x) sum(table(x)[table(x)>1]))

Result:

> test[,c(1,2,6)]
  someName someID sumtext
1        A      1       6
2        B      2       2
3        C      3       2
4        D      4       5
5        E      5       3
6        F      6       2
7        L      8       0
8        Z      9       0
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