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I have the following function:

library (reshape)
phenotype <- rnorm (100)
data <- matrix(rnorm(1000), nrow = 10, ncol=100)

spearman.p <-
             reshape(
                     melt(
                          apply(data, 1, function(y){
                                        cor.test(y,phenotype,method="spearman")
                                                    }[c("p.value", "estimate")]
                               )
                          ), timevar="L2", idvar="L1", direction="wide"
                       )

that I would like to know if there is a more efficent way of getting out the p.value and estimate from a "apply"ed cor.test

Can anyone provide some suggestions?

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2  
Suggestion #1: please provide some sample data. –  Joshua Ulrich Dec 20 '10 at 23:07
    
+1, gulity! - example data added... –  please delete me Dec 20 '10 at 23:14

2 Answers 2

up vote 1 down vote accepted

This would be more compact and delivers the p.values from the duplicated data. Is that what you wanted?:

 dtt <- do.call(rbind, apply(data, 1, function(y){
                            cor.test(y,phenotype,method="spearman")
                                  }[c("p.value", "estimate")]
                                 ) )
  dtt
 ###      p.value   estimate 
     [1,] 0.2305644 0.1208641
     [2,] 0.2305644 0.1208641
     [3,] 0.2305644 0.1208641
     [4,] 0.2305644 0.1208641
     [5,] 0.2305644 0.1208641
     [6,] 0.2305644 0.1208641
     [7,] 0.2305644 0.1208641
     [8,] 0.2305644 0.1208641
     [9,] 0.2305644 0.1208641
    [10,] 0.2305644 0.1208641

Edit: If you are looking for speed and/or the possibility of easily transporting to parallel-oriented platforms then add this to the list of candidates:

 pmtx <- matrix(NA, nrow=nrow(data), ncol=2)
 for( i in 1:nrow(data) ) {
  pmtx[i, 1:2 ] <- unlist(cor.test(data[i, ], 
                                   phenotype, 
                                   method="spearman")[c("p.value", "estimate")] ) }
 pmtx
share|improve this answer
    
I think this is close to what I want and the pvalues are the same due to the structure of the example data. My real data is well, real and not so structured and different p.values are obtained for each row but your results are correct (edited example data above as well). Speed is crucial, as I need to run several hundred thousand of these in parallel via SGE submission. I think this is cleaner than my reshape/melt mess. Will test speed and let you know how it fares. Thanks for suggestion! –  please delete me Dec 21 '10 at 0:05
    
For loops are often faster than the *apply methods. Lower overhead. –  BondedDust Dec 21 '10 at 1:36
    
Your solution was 3X faster than what I had! Thanks! (30 seconds verses 90 seconds) –  please delete me Dec 21 '10 at 15:59

This is the best I can come up with at the moment.

FUN <- function(y) {
  test <- cor.test(y,phenotype,method="spearman")
  out <- unlist(test[c("p.value", "estimate")])
}
t(apply(data, 1, FUN))
share|improve this answer
    
Will test speed on some real data and let you know how it fares. Thanks for suggestion! –  please delete me Dec 21 '10 at 0:06
    
My only regret is that I have only one green check to give. Your solution was also 3X faster than what I had! Thanks! (30 seconds verses 90 seconds) –  please delete me Dec 21 '10 at 16:00
    
@newuser No worries. –  Joshua Ulrich Dec 21 '10 at 16:08

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