I am working with biological datasets, straight from transcriptome (RNA) to finding certain protein sequences. I have a set of the protein names for each dataset, and want to find which are common to all datasets. Due to how the data is processed, I end up with a one variable that contains all the sub sets. Due to how the set.intersect() command works, it requires at least 2 sets as input:

IDs = set.intersection(transc1 & trans2)

However I only have one input, colA which contains 30 sets of 80 to 100 entries. Here is what I have so far:

from glob import glob
for file in glob('*_query.tsv'): #input all 30 datasets, first column with protein IDs
  sources = file
  colnames = ['a', 'b', 'c', 'd', 'e', 'f'] 
  df = pandas.read_csv(sources, sep='\t', names=colnames) #colnames headers for df contruction
  colA = df.a.tolist() #turn column a, protein IDs, into list
  IDs = set(colA) #turn lists into sets

If I print(colA), the output is something like this, with two unnamed elements as sets:

set(['ID2', 'ID8', 'ID35', 'ID77', 'ID78', 'ID199', 'ID211'])
set(['ID1', 'ID5', 'ID8', 'ID88', 'ID105', 'ID205'])

At this point I get stuck. I can't get set.intersection() working with the IDs set of sets. Also tried pandas.merge(*IDs) for which the syntax seemed to work, but the number of entries for comparison exceeded the maximum (12).

I wanted to use sets because unlike lists, it should be quick to find common IDs between all the datasets. If there is a better way, I am all for it.

Help is much appreciated.

  • transc1 & trans2 is the same as transc1.intersection(trans2). From your code, it's not so clear, what your data looks like. How do these 30 input sets look like (i see only 6 columns referenced by name)?
    – dhke
    Apr 16, 2017 at 11:11
  • Hi dhke, columns b though to f become important much later on - for this part, only a is called. column a, on each line, has an ID. That column is then turned into an individual set of IDs. This is done for each dataset (transcriptome), so there are 30 sets of IDs each from their own column a within colA. This is done at the same time, as the glob('*_query.tsv') part does this simultaneously for all 30 source files. So as it's written here, you'd end up with column a of 30 source files, as sets, within a set under the variable colA. Apr 16, 2017 at 11:25
  • Ah! Can you fix your indentation, please? The for loop is easy to overlook and currently it's unclear where it terminates.
    – dhke
    Apr 16, 2017 at 11:26
  • sure can dhke. Thanks for pointing that out. Apr 16, 2017 at 11:28
  • set.intersection(*IDs), but I'm not sure if you are using the same name IDs for two different objects. In your code, it's the set of IDs from one dataset but your description seems to mention that it is a list of all the IDs from all datasets.
    – dhke
    Apr 16, 2017 at 12:04


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