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I have a R code like this:

compute_enrichment <- function(dz_vec) {
        dz_vec <- dz_vec[!is.na(dz_vec)]
        n_module_genes <- length(intersect(module_genes,names(dz_vec)))
        module_genes_pct <- n_module_genes/length(module_genes)
        result <- list(escore=NA,norm_escore=NA,pvalue=NA,pct_module_genes=module_genes_pct)
        if (module_genes_pct >= MIN_PCT_MODULE_GENES) {
            result$escore <- abs(sum(dz_vec[module_genes],na.rm=T))
            rand_escores <- sapply(1:N_PERMUTATIONS, function(i) {
                abs(sum(sample(dz_vec,n_module_genes),na.rm=T))
            })
            result$norm_escore <- (result$escore - mean(rand_escores))/sd(rand_escores)
            result$pvalue <- length(which(rand_escores > result$escore))/length(rand_escores)
        }
        result
    }

I want to convert this code into Python. Is there some sort of script available for this? Little heads up to get started would be great. Thanks

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closed as too localized by flodel, Dason, Inbar Rose, Р̀СТȢѸ́ФХѾЦЧШЩЪЫЬѢѤЮѦѪѨѬѠѺѮѰѲѴ, Blundell Mar 10 '13 at 10:45

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1  
what have you tried? You can always just call out to rpy.. –  Justin Mar 8 '13 at 21:40
    
where module_genes variable comes from? –  leodido Mar 8 '13 at 21:41
    
FIRST write some test scripts so you know what output to expect for a given input. Then you can check if your python conversion is doing the same thing as your R version. Of course, with some random sampling in there (the sample() function) you might have some fun doing that... –  Spacedman Mar 9 '13 at 0:25

3 Answers 3

up vote 4 down vote accepted

The general translation problem would be difficult (and I'm not aware of any automated translation mechanism), and the suggestion made by others to use rpy is an excellent one.

However, if you really need to convert this particular code to Python, the job is made easier for this code because it doesn't include many vectorised operations. A pattern to use would be:

  1. Code like dz_vec <- dz_vec[!is.na(dz_vec)] becomes a list comprehension (though you'd have to have a convention for what to use for NA, which doesn't exist in Python, and thus a way to test for that case).
  2. length() becomes len().
  3. sapply becomes a list comprehension.
  4. Functions like mean and sd are available in numpy (or are easy enough to write yourself).
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+1 for actually answering the question :) –  BenDundee Mar 8 '13 at 21:54

My answer to this question is always: scriptify it, then invoke the script with python using subprocess. I like this approach (rather than installing RPy) because RPy won't work with all versions of R (which means recreating your installation if you're not lucky enough to be using the right version), and you won't have to install anything if your R script already runs.

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2  
+1, calling R as a script is a nice simple interface. However, if you need to call this function often with data going back and forth between R and Python, say in an optimization routine, this can get very slow and cumbersome. –  Paul Hiemstra Mar 8 '13 at 21:51

You don't need to convert it, you can call it from python using rpy

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