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I got a following my_data:

        geneid chr     acc_no start   end size strand   S1   S2   A1   A2
1 gene_010010   1 AC12345.1  3662  4663 1002      -  328  336  757  874
2 gene_010020   1 AC12345.1  5750  7411 1662      -  480  589  793  765
3 gene_010030   2 AC12345.1  9003 11024 2022      -  653  673  875  920
4 gene_010040   2 AC12345.1 12006 12566  561      -  573  623  483  430
5 gene_010050   3 AC12345.1 15035 17032 1998      - 2256 2333 1866 1944
6 gene_010060   3 AC12345.1 18188 18937  750      -  526  642  650  586

I am able to calculate sums for a given column, i.e:

chr.sums <- data.frame(with (my_data, tapply(S1, INDEX=chr, FUN=sum)))

Problem is, I want to get chr.sums with four columns (S1, S2, A1 and A2) and 30 rows corresponding to unique chr numbers. I do not want to switch to Python back and forth, but looping through columns and assigning output to specific columns in data.frame baffles me.

EDIT Toy data set above.

share|improve this question
    
Please use dput(my_data) and paste the results into your question. This will mean we can post a solution using your actual data. –  Andrie Nov 18 '11 at 13:41
    
@Andrie: I got 8k rows in my_data which I guess is too much for a question. Flipping chr numbers for rows 4-6 to 2 will create a toy set. –  darked89 Nov 18 '11 at 13:53
    
In that case, construct a toy subset and post that. –  Andrie Nov 18 '11 at 13:54

2 Answers 2

up vote 4 down vote accepted

You can use ddply from plyr. Here is some code:

plyr::ddply(my_data, .(chr), summarize, S1 = sum(S1), S2 = sum(S2), 
  A1 = sum(A1), A2 = sum(A2))

EDIT. A more compact solution would be:

plyr::ddply(my_data, .(chr), colwise(sum, .(S1, S2, A1, A2)))

Here is how it works. The data is first split into pieces based on chr. Then, the columns S1, S2, A1, A2 are summed up for each piece. Finally, they are assembled back into a single data frame.

Any place you have this kind of a split-apply-combine problem, think plyr as a solution.

share|improve this answer
    
i was just typing the colwise solution. –  Ramnath Nov 18 '11 at 13:50
    
+1 Nice use of colwise. Even better would be ddply(my_data[, -(3:7)], .(chr), colwise, sum) –  Andrie Nov 18 '11 at 13:53
    
@Ramnath: Thanks a lot, it works as expected. Saved me a lot of time. I will look into plyr. –  darked89 Nov 18 '11 at 14:05
1  
@Andrie: thanks. For a R newbie Ramnath answer is bit more readable. –  darked89 Nov 18 '11 at 14:08

tapply won't handle multiple columns but the formula version of aggregate will.

chr.sums <- aggregate(cbind(S1,S2,A1,A2) ~ chr, data = my_data, FUN=sum)))
share|improve this answer
    
thank you. chr.sums <- aggregate(cbind(S1,S2,A1,A2) ~ chr, data = my_data, FUN=sum) works. –  darked89 Nov 18 '11 at 16:39

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